(19)
(11)EP 2 990 778 B1

(12)EUROPEAN PATENT SPECIFICATION

(45)Mention of the grant of the patent:
18.03.2020 Bulletin 2020/12

(21)Application number: 15180737.7

(22)Date of filing:  12.08.2015
(51)International Patent Classification (IPC): 
G01N 15/00(2006.01)
G01N 15/14(2006.01)

(54)

SAMPLE ANALYZER AND SAMPLE ANALYZING METHOD

PROBENANALYSATOR UND PROBENANALYSEVERFAHREN

ANALYSEUR D'ÉCHANTILLON ET PROCÉDÉ D'ANALYSE D'ÉCHANTILLON


(84)Designated Contracting States:
AL AT BE BG CH CY CZ DE DK EE ES FI FR GB GR HR HU IE IS IT LI LT LU LV MC MK MT NL NO PL PT RO RS SE SI SK SM TR

(30)Priority: 27.08.2014 JP 2014173341

(43)Date of publication of application:
02.03.2016 Bulletin 2016/09

(73)Proprietor: SYSMEX CORPORATION
Kobe-shi, Hyogo 651-0073 (JP)

(72)Inventors:
  • Tateyama, Shota
    Hyogo 651-0073 (JP)
  • Kaneko, Tetsuya
    Hyogo 651-0073 (JP)

(74)Representative: Hoffmann Eitle 
Patent- und Rechtsanwälte PartmbB Arabellastraße 30
81925 München
81925 München (DE)


(56)References cited: : 
EP-A1- 0 585 754
JP-A- H09 329 596
US-A1- 2009 323 062
JP-A- H1 123 446
US-A1- 2006 073 601
US-A1- 2014 154 677
  
      
    Note: Within nine months from the publication of the mention of the grant of the European patent, any person may give notice to the European Patent Office of opposition to the European patent granted. Notice of opposition shall be filed in a written reasoned statement. It shall not be deemed to have been filed until the opposition fee has been paid. (Art. 99(1) European Patent Convention).


    Description

    TECHNICAL FIELD



    [0001] The present invention relates to a sample analyzer and a sample analyzing method.

    BACKGROUND



    [0002] US2010/0021878A1 discloses a method for counting white blood cells, erythroblasts, and bacteria in a body fluid using an automatic blood analyzer.

    [0003] The technique described in US2010/0021878A1 is only directed at counting white blood cells, erythroblasts, and bacteria in a body fluid. For appropriate diagnosis and treatment, it is desirable to obtain more useful information through body fluid analysis.

    [0004] JP H09 329596 A relates to a method in which a result of measuring a sample liquid, which is prepared by adding a cell membrane damaging agent for hemolyzing the erythrocytes to a specimen containing erythrocytes and yeast-like fungi, with a flow cytometer, and a result of measuring a sample liquid prepared without adding the cell membrane damaging agent with a flow cytometer are obtained and compared so as to distinguish the erythrocytes from the yeast-like fungi and to count the number of the erythrocytes.

    [0005] US 2009/323062 A1 relates to a sample analyzer analyzing a sample containing particles. The process identifies the types of particles contained in the sample by characteristic parameter information of forward scattered light data, side scattered light data, and side fluorescent light data included in measurement data.

    SUMMARY OF THE INVENTION



    [0006] The above object is accomplished by the subject-matter of the independent claims. The dependent claims concern particular embodiments.

    BRIEF DESCRIPTION OF THE DRAWINGS



    [0007] 

    Fig. 1 is a block diagram illustrating a configuration of a sample analyzer.

    Fig. 2 is a view illustrating a configuration of a preparing unit and an optical detector.

    Fig. 3 is a view illustrating the configuration of the optical detector.

    Fig. 4A is a view for explaining the intensity of an optical signal.

    Fig. 4B is a view for explaining the pulse width of the optical signal.

    Fig. 4C is a view for explaining the pulse area of the optical signal.

    Fig. 5 is a block diagram illustrating a configuration of a processing unit.

    Fig. 6 is a flow chart illustrating a procedure of a sample measuring process in a body fluid analysis mode.

    Fig. 7 shows an information input screen for input of different types of body fluid samples.

    Fig. 8 is a flow chart illustrating a procedure of a body fluid measurement specimen preparing process.

    Fig 9A is a schematic view of a sheath flow.

    Fig. 9B is a schematic view of a sheath flow.

    Fig. 10 is a flow chart illustrating a procedure of a measurement data analysis process.

    Fig. 11 is a distribution chart of red blood cells and crystals in a region of fluorescence light intensity-forward scattered light intensity.

    Fig. 12A is a distribution chart of white blood cells, atypical cells, and epithelial cells in a region of fluorescence pulse area-forward scattered light pulse width.

    Fig. 12B is a scattergram illustrating an example of a detection result on white blood cells.

    Fig. 13 is a distribution chart of mononuclear leukocytes and polymorphonuclear leukocytes in a region of side scattered light intensity-forward scattered light intensity.

    Fig. 14A is a scattergram illustrating an example of a detection result on mononuclear leukocytes and polymorphonuclear leukocytes.

    Fig. 14B is a scattergram illustrating an example of the detection result on mononuclear leukocytes and polymorphonuclear leukocytes.

    Fig. 14C is a scattergram illustrating an example of the detection result on mononuclear leukocytes and polymorphonuclear leukocytes.

    Fig. 15A is a distribution chart of fungi in the region of fluorescence light intensity-forward scattered light intensity.

    Fig. 15B is a scattergram illustrating an example of the detection result on fungi.

    Fig. 16 is a distribution chart of bacteria in the region of fluorescence light intensity-forward scattered light intensity.

    Fig. 17 is a view for explaining a relationship between a DNA amount and a particle size in each particle.

    Fig. 18A is a view for explaining the pulse area of a fluorescence signal obtained from a large formed element.

    Fig. 18B is a view for explaining the pulse area of a fluorescence signal obtained from a small formed element.

    Fig. 19 is a flow chart illustrating a procedure of analyzing and displaying process for classification and counting results.

    Fig. 20 shows a determination result display screen including a suspect message.

    Fig. 21 shows a determination result display screen including a red blood cell correction message.

    Figs. 22 are scattergrams for use in counting red blood cells and crystals.


    DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS



    [0008] Hereinafter, preferred embodiments of the present invention will be described with reference to the drawings.

    [1. Configuration of Sample Analyzer]



    [0009] A sample analyzer 100 illustrated in Fig. 1 analyzes formed elements included in a sample 11. The sample analyzer 100 includes, as main components, a preparing unit 30, a detecting unit 50, and a processing unit 13. The preparing unit 30 mixes the sample 11 with a reagent to prepare a measurement specimen. The detecting unit 50 detects information of the formed elements in the measurement specimen. The processing unit 13 performs a process based on a detection result obtained by the detecting unit 50.

    [0010] The sample analyzer 100 is operable in either one of a urine analysis mode and a body fluid analysis mode. In the urine analysis mode, the sample analyzer 100 takes a urine sample therein and analyzes urinary formed elements. Examples of the urinary formed elements are red blood cells, white blood cells, epithelial cells, casts, bacteria, fungi (non-sprouted), sperms, and Trichomonas.

    [0011] In the body fluid analysis mode, the sample analyzer 100 takes a body fluid sample therein and analyzes formed elements in the body fluid. Examples of the formed elements in the body fluid are red blood cells, crystals, white blood cells, large cells, fungi, and bacteria. The large cell is a nucleated cell larger than a white blood cell. The large cells are present in the body fluid by, for example, being exfoliated from the inner membrane of coelomic cavity or the peritoneum of an organ. The large cells include epithelial cells, macrophages, and tumor cells.

    [0012] The body fluid refers to a cell-containing fluid collected from an organism. The body fluid includes spinal fluid, cerebrospinal fluid (CSF), coelomic fluid (pleural fluid, abdominal fluid, pericardial fluid), synovial fluid (synovial fluid: fluid present in synovial bursa and peritenon), eye chamber fluid, and aqueous humor. The body fluid further includes dialysate for peritoneal dialysis (CAPD) and intraperitoneal wash. According to the general definition, the body fluid includes blood and urine. To distinguish blood and urine from body fluid to be analyzed in the body fluid analysis mode such as cerebrospinal fluid (CSF) and synovial fluid, the term "body fluid" or "body fluid sample" in this example does not include blood and urine. In the claims, the "body fluid" includes blood and urine unless stated otherwise. The "sample" includes blood, urine, and body fluid.

    [0013] A measuring unit 12 of the sample analyzer 100 includes a sample distributing unit 20, a preparing unit 30, a detecting unit 50, a microcomputer 21a, a storage unit 21b, and a LAN adapter 21c. The measuring unit 12 is connected to a processing unit 13 by way of the LAN adapter 21 c.

    [0014] The detecting unit 50 includes an optical detector 22a, an amplification circuit 22b, a filter circuit 23, an A/D converter 24, a digital signal processing circuit 25, and a memory 26.

    [0015] As illustrated in Fig. 2, the preparing unit 30 is connected to the sample distributing unit 20. The preparing unit 30 mixes a reagent with the sample dispensed by the sample distributing unit 20 to prepare a measurement specimen. The sample distributing unit 20 has a suction tube 19 and syringe pumps. The sample distributing unit 20 suctions the sample 11 from a test tube 10 through the suction tube 19 and dispenses the suctioned sample in the preparing unit 30. The preparing unit 30 has a first reaction tank 30u and a second reaction tank 30b. The sample distributing unit 20 distributes a certain quantity of aliquot in each of the first reaction tank 30u and the second reaction tank 30b.

    [0016] The aliquot in the reaction tank 30u is mixed with a first reagent 31u as a diluent and a third reagent 32u containing dye. The formed elements in the sample are stained with the dye contained in the third reagent 32u. In the urine analysis mode, the specimen prepared in the reaction tank 30u is used as a first measurement specimen for analyzing relatively large urinary formed elements such as red blood cells, white blood cells, epithelial cells, and casts. In the body fluid analysis mode, the specimen prepared in the reaction tank 30u is used as a third measurement specimen for analyzing red blood cells and crystals. Hereinafter, particles lacking nucleic acids in their basic structures, such as red blood cells, casts, and crystals, are referred to as anucleate elements.

    [0017] The aliquot in the reaction tank 30b is mixed with a second reagent 31b as a diluent, and a fourth reagent 32b containing dye. The second reagent 31b has hemolytic activity. The formed elements in the sample are stained with the dye contained in the fourth reagent 32b. In the urine analysis mode, the specimen prepared in the reaction tank 30b is used as a second measurement specimen to analyze urinary bacteria and the like. In the body fluid analysis mode, the specimen prepared in the reaction tank 30b is used as a fourth measurement specimen to analyze white blood cells, large cells, fungi, and bacteria in a body fluid. Hereinafter, particles with nucleic acids in their basic structures, such as white blood cells, large cells, fungi, and bacteria, are referred to as nucleated elements.

    [0018] A tube extends from the reaction tank 30u to a flow cell 51 in the optical detector 22a of the detecting unit 50, and the measurement specimen prepared in the reaction tank 30u can be introduced into the flow cell 51. An electromagnetic valve 33u is provided at the outlet of the reaction tank 30u. Another tube extends from the reaction tank 30b, and is coupled to the tube extending from the reaction tank 30u at an intermediate position thereof. The measurement specimen prepared in the reaction tank 30b can be introduced into the flow cell 51. An electromagnetic valve 33b is provided at the outlet of the reaction tank 30b.

    [0019] The tube extending from the reaction tank 30u, 30b to the flow cell 51 diverges at a point before it reaches the flow cell 51. The diverging end of the tube is connected to a syringe pump 34a. An electromagnetic valve 33c is provided between the syringe pump 34a and the diverging point.

    [0020] The tube diverges at an intermediate point between the diverging point and a point of connection of the tubes extending from the reaction tanks 30u and 30b. The diverging end of the tube is connected to a syringe pump 34b. An electromagnetic valve 33d is provided between the connecting point and the diverging point of the tube extending to the syringe pump 34b.

    [0021] The preparing unit 30 has a sheath fluid container 35 to contain a sheath fluid. The sheath fluid container 35 is connected to the flow cell 51 with a tube. A compressor 35a is connected to the sheath fluid container 35. When the compressor 35a is driven, compressed air is introduced into the sheath fluid container 35 to feed the sheath fluid in the sheath fluid container 35 into the flow cell 51.

    [0022] The measurement specimen is transferred from the reaction tank 30u to the flow cell 51 as described below. A microcomputer 21a opens the electromagnetic valves 33u, 33d, and 33c. In this state, the microcomputer 21a drives the syringe pump 34a to fill a flow path between the electromagnetic valves 33d and 33c with the measurement specimen from the reaction tank 30u. The microcomputer 21a closes the electromagnetic valves 33d and 33c and then drives the syringe pump 34b to force out the measurement specimen filling the flow path toward the flow cell 51. Thus, a flow of the measurement specimen enclosed by the sheath fluid is formed within the flow cell 51. When the measurement specimen is transferred from the reaction tank 30b, the electromagnetic valve 33u is closed and the electromagnetic valve 33b is opened, so that the flow path is filled with the measurement specimen from the reaction tank 30b. Then, similar processing steps follow. The microcomputer 21a controls a force-out rate of the syringe pump 34b to adjust a quantity per unit time of the measurement specimen flowing in the flow cell 51.

    [0023] As illustrated in Fig. 3, the optical detector 22a has a condenser lens 52 and light collecting lenses 54 and 56. A semiconductor laser light source 53 emits linearly polarized beam in parallel with the specimen flow in the flow cell. The condenser lens 52 condenses the laser beam emitted from the semiconductor laser light source 53 on the flow cell 51. The light collecting lens 54 collects forward scattered light, which is emitted from particles as formed elements in the measurement specimen, on a forward scattered light receiver 55. The forward scattered light receiver 55 detects the forward scattered light. The light collecting lens 56 collects side scattered light and fluorescence light, which are emitted from the formed elements in the measurement specimen, on a dichroic mirror 57a. The dichroic mirror 57a reflects the side scattered light toward a half mirror 57b, while transmitting therethrough the fluorescence light toward a fluorescence light receiver 59. The fluorescence light receiver 59 detects the fluorescence light.

    [0024] The half mirror 57b is a non-polarizing mirror. The half mirror 57b splits the side scattered light in halves. The side scattered light transmitting through the half mirror 57b is detected by a side scattered light receiver 58a. The side scattered light reflected by the half mirror 57b enters a polarized light filter 57c.

    [0025] The polarized light filter 57c blocks polarized light (light polarized similarly to the light emitted from the semiconductor laser light source 53) in parallel with a flow direction of the measurement specimen flowing in the flow cell 51. The polarized light filter 57c transmits therethrough polarized light vertical to the direction. The side scattered light transmitting through the polarized light filter 57c is hereinafter referred to as "depolarized side scattered light". A depolarized side scattered light receiver 58b detects the depolarized side scattered light.

    [0026] The forward scattered light receiver 55, side scattered light receiver 58a, depolarized side scattered light receiver 58b, and fluorescence light receiver 59 respectively convert the received optical signals into electrical signals, and output a forward scattered light signal (FSC), a side scattered light signal (SSC), a depolarized side scattered light signal (PSSC), and a fluorescence signal (FL).

    [0027] These outputted signals are amplified by a preamplifier, which is not illustrated in the drawings, and then subjected to subsequent processes. By changing drive voltages of the forward scattered light receiver 55, side scattered light receiver 58a, depolarized side scattered light receiver 58b, and fluorescence light receiver 59, outputs of these receivers may be changed to and from low-sensitivity and high-sensitivity outputs. This sensitivity change is controlled by the microcomputer 21a described later.

    [0028] The forward scattered light receiver 55 is a photo diode, and the side scattered light receiver 58a, depolarized side scattered light receiver 58b, and fluorescence light receiver 59 are photo photomultiplier tubes. Instead, the forward scattered light receiver 55 may be a photomultiplier tube, and the side scattered light receiver 58a, depolarized side scattered light receiver 58b, and fluorescence light receiver 59 may be photo diodes. The fluorescence signal (FL) outputted from the fluorescence light receiver 59 is amplified by a preamplifier not illustrated in the drawings and then inputted to two diverging signal channels.

    [0029] The two signal channels for the fluorescence signal (FL) are connected to the amplification circuit 22b (see Fig. 1) described later. The fluorescence signal inputted to one of the signal channels is amplified in high sensitivity by the amplification circuit 22b. The fluorescence signal inputted to this channel is referred to as a first fluorescence signal (FLH). The fluorescence signal inputted to the other signal channel is amplified in low sensitivity by the amplification circuit 22b. The fluorescence signal inputted to this channel is referred to as a second fluorescence signal (FLL).

    [0030] Referring to Fig. 1 again, the amplification circuit 22b amplifies the five different signals; FSC, SSC, PSSC, FLH, and FLL, outputted from the optical detector 22a.

    [0031] The filter circuit 23 applies a filtering process to the signals amplified by the amplification circuit 22b. The A/D converter 24 converts the signals processed by the filter circuit into digital signals. The digital signal processing circuit 25 extracts analysis-use parameters from the respective optical signals. The extracted characteristic parameters are stored as measurement data in the memory 26.

    [0032] The analysis-use parameters extracted by the digital signal processing circuit 25 are described referring to Fig. 4A.

    [0033] There are three kinds of analysis-use parameters; "intensity", "pulse width", and "pulse area", for the respective optical signals FSC, SSC, PSSC, FLH, and FLL. The intensity is represented by P, the pulse width is represented by W, and the pulse area is represented by A. As described earlier, every time when a particle is passing through the flow cell 51, the electrical signal outputted from each receiver changes in form of a pulse depending on properties of the particle.

    [0034] The intensity of an optical signal is obtained as a pulse peak height P as illustrated in Fig. 4A. As illustrated in Fig. 4B, the pulse width of an optical signal is obtained as an interval W between time T1 when a pulse exceeds a predetermined threshold value and time T2 when the pulse falls below the threshold value. As illustrated in Fig. 4C, the pulse area of an optical signal is obtained as the area of a region PA (shaded region in the drawing) defined by lines described below; a pulse waveform line L1 of the optical signal, straight lines L2 and L3 indicating at points in time when the optical signal intensity has a predetermined threshold value on both sides of the pulse, and a straight line L4 on which the optical signal intensity has the value of 0. In other words, the pulse area of the optical signal is obtained as a time integral value of the signal intensity.

    [0035] The analysis-use parameter extraction method described herein is a non-limiting example. The pulse area is not necessarily the time integral value, and may be an approximate value as far as it reflects an area beneath the time curve of a pulse. For example, the pulse area may be the product of the pulse width and the peak height or may be the area of a triangle obtained from the pulse width and the peak height. To extract the time integral value, the bottom line is not necessarily the straight line indicating the zero intensity and may be appropriately decided. The bottom line may be represented by the predetermined threshold value illustrated in Fig. 4C. Alternatively, a pulse value when the sheath fluid alone is let flown in the flow cell 51 may set as a reference value and used as the bottom line.

    [0036] Referring to Fig. 2 again, the first to fourth reagents are described in detail. The first reagent 31u is a reagent primarily consisting of a buffer. The first reagent 31u contains an osmotic pressure compensating agent to obtain a stable fluorescence signal without hemolyzing red blood cells. The osmotic pressure of the first reagent 31u is regulated to stay in a range of pressures suitable for classifying and measuring the sample; 100 to 600 mOsm/kg. The first reagent 31u does not have hemolytic activity for urinary red blood cells.

    [0037] Unlike the first reagent 31u, the second reagent 31b has hemolytic activity. One motive for using such a reagent is to facilitate passage of the fourth reagent 32b through cell membranes of fungi and bacteria, thereby accelerating dye-staining. Another motive is to promote contraction of impurities including mucosae and red blood cell fragments. The second reagent 31b contains a surfactant to acquire hemolytic activity. The surfactant may be selected from anionic, nonionic, and/or cationic surfactants. A particularly suitable example is a cationic surfactant. Because of the surfactant's ability to damage the cell membranes of fungi and bacteria, nucleic acids of nucleated elements, such as fungi and bacteria, may be more efficiently stained with the dye contained in the fourth reagent 32b. This quickened staining treatment facilitates the measurements of fungi and bacteria.

    [0038] Instead of using the surfactant, the second reagent 31b may be adjusted to be acidic or to low pH to acquire hemolytic activity. The low pH is more specifically pH lower than that of the first reagent 31u. In contrast to the first reagent 31u with neutrality or weak acidity to weak alkaline, the second reagent 31b has acidity or strong acidity. In contrast to the first reagent 31u with pH of 6.0 to 8.0, the second reagent 31b has lower pH, preferably 2.0 to 6.0. Optionally, the surfactant-containing second reagent 31b may be further subjected to adjustment to low pH. The second reagent 31b may acquire hemolytic activity by having its osmotic pressure reduced to be lower than that of the first reagent 31u.

    [0039] The first reagent 31u contains no surfactant. The first reagent 31u may optionally contain a surfactant, in which case a surfactant to be added and its concentration need to well-managed to avoid hemolysis of red blood cells. Preferably, the first reagent 31u does not contain the same surfactant as the second reagent 31b, or may contain the same surfactant at a lower concentration than the second reagent 31b.

    [0040] The second reagent 32u is a staining reagent for staining anucleate elements. The third reagent 32u contains a fluorescent dye more likely to bond to lipid and protein of cell membranes than nucleic acids. Such a dye is preferably any one of cyanine-based, styryl-based, and acridine-based dyes not affecting red blood cells in shape. The dye for staining anucleate formed elements is preferably selected from fat-soluble carbocyanine dyes. Particularly preferable examples are indocarbocyanine dyes and oxacarbocyanine dyes.

    [0041] Specific examples of the indocarbocyanine dyes are:

    DiI(1,1'-dioctadecyl-3,3,3',3'-tetramethylindocarbocyanine perchlorate);

    DiD(1,1'-dioctadecyl-3,3,3',3'- tetramethylindodicarbocyanine); and

    DiR(1,1'-dioctadecyltetramethyl indotricarbocyanine Iodide). Specific examples of the oxacarbocyanine dyes are: DiOC2(3)(3,3'-diethyloxacarbocyanine iodide);

    DiOC3(3)(3,3-Dipropyloxacarbocyanine iodide); DiOC4(3) (3,3'-Dibutyloxacarbocyanine iodide); and DiOC5(3)(3,3-Dipentyloxacarbocyanine iodide). A particularly preferable dye for staining the anucleate elements is DiOC3 (3)3,3-Dipropyloxacarbocyanine iodide.



    [0042] The fourth reagent 32b is a staining reagent for staining nucleated elements. The fourth reagent 32b contains a fluorescent dye more likely to bond to nucleic acids than lipid or protein. The fourth reagent 32b more particularly contains an intercalating dye for specifically staining nucleic acids or a dye that bonds to minor grooves.

    [0043] Examples of the intercalating dye are known dyes such as cyanine-based, acridine-based, and phenanthridium-based dyes. Examples of the cyanine-based intercalating dye are SYBR Green I, and Thiazole orange. An example of the acridine-based intercalating dyes is Acridinorange. Examples of the phenanthridium-based intercalating dye are propidium Iodide, and Ethidium bromide. Examples of the minor groove-bonding dye are DAPI, and Hoechst. Examples of the minor groove-bonding Hoechet are Hoechst 33342, and Hoechst 33258. The cyanine-based intercalating dyes are preferably used, among which SYBR GreenI, and Thiazole orange are particularly preferable.

    [0044] In the urine analysis mode, a first measurement specimen containing red blood cells retaining their shapes and stained cell membranes, and a second measurement specimen containing stained nucleic acids of nucleated elements and hemolyzed red blood cells are prepared from one urine sample. The first measurement specimen is used to measure urinary red blood cells, casts, and crystals. The second measurement specimen is used to measure urinary white blood cells, epithelial cells, atypical cells, fungi, sperms, Trichomonas, and bacteria. Conventionally, high-accuracy classification is a long-awaited technique to allow for distinction between blood cells and fungi that are alike in size. According to this invention wherein fungi is measured by using the second measurement specimen containing hemolyzed red blood cells, fungi may be very accurately measured and counted without being affected by red blood cells.

    [0045] In the body fluid analysis mode, a third measurement specimen for measuring red blood cells and crystals in body fluid, and a fourth measurement specimen for measuring white blood cells, large cells, fungi, and bacteria in body fluid are prepared from one body fluid sample. The third measurement specimen is used to measure red blood cells and crystals in body fluid. The fourth measurement specimen is used to measure white blood cells, large cells, fungi, and bacteria in body fluid. By preparing the fourth measurement specimen containing hemolyzed red blood cells, as with the urine analysis mode, fungi may be accurately measured without being affected by red blood cells.

    [0046] The first reagent 31u and the third reagent 32u are both used to measure urinary formed elements in the urine analysis mode and to measure red blood cells in body fluid in the body fluid analysis mode. The second reagent 31b and the fourth reagent 32b are both used to measure bacteria in the urine analysis mode and to measure white blood cells, large cells, fungi, and bacteria in body fluid in the body fluid analysis mode. Using these reagents for the urine analysis mode and the body fluid analysis mode makes it unnecessary to prepare different reagents for dedicated purposes.

    [0047]  Fig. 5 is a block diagram illustrating structural characteristics of the processing unit 13. The processing unit 13 includes a personal computer. The processing unit 13 has a body 400, an input unit 408, and a display unit 409. The body 400 has a CPU 401, a ROM 402, a RAM 403, a hard disc 404, a readout unit 405, an input/output interface 406, an image output interface 407, and a communication interface 410.

    [0048] The CPU 401 runs computer programs stored in the ROM 402 and loaded in the RAM 403. The RAM 403 is used to read out the computer programs stored in the ROM 402 and the hard disc 404. The RAM 403 may also be used as a workspace for the CPU 401 when these computer programs are run.

    [0049] In the hard disc 404 are installed and stored different computer programs and data used to run these computer programs. The programs installed therein include an operating system and application programs. The application programs include a computer program for analyzing measurement data provided by the measuring unit 12 and output an analysis result.

    [0050] The readout unit 405 includes a CD drive or a DVD drive. The readout unit 405 is operable to read out the computer programs and data recorded on recording media. The input unit 408 including a mouse and a keyboard is connected to the input/output interface 406. A user, by manipulating the input unit 408, may input data to the processing unit 13. The image output interface 407 is connected to the display unit 409 including a liquid crystal panel. The image output interface 407 outputs image signals in accordance with image data to the display unit 409. The display unit 409 displays images based on the inputted image signals. The processing unit 13 is connected to the measuring unit 12 by way of the communication interface 410. The data is transmitted to and received from the measuring unit 12 through the communication interface 410.

    [2. Operation of Sample Analyzer]


    [Analysis Mode Setting]



    [0051] When the sample analyzer 100 is activated, the CPU 401 of the processing unit 13 is programmed to be in the urine analysis mode by default. When a measurement carry-out instruction (S501 in Fig. 6 described later) is received by the CPU 401 in the urine analysis mode, the CPU 401 prompts the microcomputer 21a of the measuring unit 12 to perform a sample measuring operation to analyze urine. Then, measurement data obtained by the urine-analysis sample measuring is analyzed by the CPU 401 of the processing unit 13, so that particles are classified and counted based on counting target items for the urine analysis mode.

    [0052] The CPU 401 of the processing unit 13 may receive a mode change instruction to change the operation mode to and from the urine analysis mode and the body fluid analysis mode. The CPU 401 that received the mode change instruction is programmed to be in the body fluid analysis mode. The CPU 401 prompts the microcomputer 21 a of the measuring unit 12 to carry out pre-sequence. The pre-sequence refers to background check performed by measuring a sheath fluid as a blank specimen containing no cell. In the absence of any problem with the background confirmed by the pre-sequence, the CPU 401 is ready to receive the measurement carry-out instruction. When the CPU 401 in the body fluid analysis mode receives the measurement carry-out instruction (S501 in Fig. 6 described later), the CPU 401 prompts the microcomputer 21a of the measuring unit 12 to carry out a measurement sequence to analyze body fluid. Then, measurement data obtained by the body fluid-analysis sample measuring is analyzed by the CPU 401 of the processing unit 13, so that particles are classified and counted based on counting target items for the body fluid analysis mode.

    [Sample Measuring Operation]



    [0053] Referring to Fig. 6, the sample measuring operation is described. The sample measuring operation in the urine analysis mode and the sample measuring operation in the body fluid analysis mode basically follows the same sequence. Hereinafter, the sample measuring operations in the two modes are described referring to the same flow chart.

    [0054] In step S501 of Fig. 6, the measurement carry-out instruction is inputted to the input unit 408 of the processing unit 13. In the body fluid analysis mode, an information input screen 450 illustrated in Fig. 7 is displayed on the display unit 409 of the processing unit 13. A user may input a sample ID and the type of a target body fluid sample on the information input screen. In the body fluid analysis mode, body fluid sample options displayed on the screen are "cerebrospinal fluid", "coelomic fluid", "synovial fluid and others", and "not specified". By pressing one of radio buttons displayed next to the respective options, the user may input the type of a body fluid sample to be measured. There may be emergency cases that urgently request the measurement results of body fluid samples. To avoid any incorrect inputs in such time-sensitive cases, "not specified" may be selected as a default option, so that the measuring operation may start without specifying the type of a body fluid sample. When the user selects one of the body fluid sample options and presses the OK button, the CPU 401 receives the measurement carry-out instruction.

    [0055] In step S502, the CPU 401, in response to the instruction, transmits instruction data to the measuring unit 12, instructing the measuring operation to start. In step S503, when the measuring unit 12 receives the instruction data, the microcomputer 21a carries out S504; a measurement specimen preparing step, and S506; a nucleated element measuring step.

    [0056] As illustrated in Fig. 8, in sub-steps S601 and S602 of the measurement specimen preparing step S504, the microcomputer 21a controls the preparing unit 30 to have a predetermined quantity of the sample 11 in the test tube 10 be suctioned by the suction tube 19. The microcomputer 21a further prompts the suction tube 19 to dispense the sample in a predetermined quantity in each of the reaction tanks 30u and 30b.

    [0057] In sub-steps S603 and S604, a certain quantity of the sample 11 and predetermined quantities of the first reagent (diluent) 31u and third reagent (staining solution) 32u are dispensed in the reaction tank 30u. Similarly, in sub-step S605 and S606, a certain quantity of the sample 11 and predetermined quantities of the second reagent (diluent) 31b and fourth reagent (staining solution) 32b are dispensed in the reaction tank 30b.

    [0058] The reaction tank 30u and 30b are heated by heaters not illustrated in the drawings to stay at predetermined temperatures. In step S607, the specimens are heated and agitated in the tanks respectively by propeller-like agitators (not illustrated in the drawings), and the respective specimens are accordingly prepared. In the urine analysis mode, the first measurement specimen for measuring anucleate elements is prepared in the reaction tank 30u, and the second measurement specimen for measuring nucleated elements is prepared in the reaction tank 30b. In the body fluid analysis mode, the third measurement specimen for measuring anucleate elements is prepared in the reaction tank 30u, and the fourth measurement specimen for measuring nucleated elements is prepared in the reaction tank 30b. When sub-step S607 is over, the microcomputer 21a returns to the main routine.

    [0059] Referring to Fig. 6 again, in the anucleate element measuring step S505, the microcomputer 21a feeds compressed air from the compressor 35a into the sheath fluid container 35, thereby forcing the sheath fluid out into the flow cell 51. Along with the ongoing feed of the sheath fluid to the flow cell 51, the microcomputer 21a drives the syringe pump 34b to feed the third measurement specimen from the reaction tank 30u into the flow cell 51.

    [0060] According to an example, a force-out quantity per unit time of the syringe pump 34b may differ between the urine analysis mode and the body fluid analysis mode. Preferably, the force-out quantity per unit time during the body fluid analysis mode may be 1/8 of the force-out quantity during the urine analysis mode.

    [0061] Often, body fluid samples may contain red blood cells at higher concentrations than urine samples. As illustrated in Fig. 9A, if the measurement specimen prepared from body fluid is overly forced out per unit time, multiple red blood cells may pass through the laser beam at once. As illustrated in Fig. 9B, reduction of the force-out quantity per unit time results in a diametrically smaller specimen flow. This may allow each one of red blood cells to pass through the laser beam separately, leading to a higher counting accuracy.

    [0062] The microcomputer 21a prompts the laser light source 53 to emit laser beam. Then, forward scattered light, fluorescence light, side scattered light, and depolarized side scattered light are accordingly emitted from particles in the third measurement specimen. The forward scattered light, fluorescence light, side scattered light, and depolarized side scattered light are respectively received by the forward scattered light receiver 55, fluorescence light receiver 59, side scattered light receiver 58a, and depolarized side scattered light receiver 58b. These lights are then converted into five different optical signals; FSC, FLH, FLL, SSC, and PSSC.

    [0063] The optical signals outputted from the optical detector 22a are amplified by the amplification circuit 22b. The amplified optical signals are then subjected to the filtering process by the filter circuit 23, and converted into digital signals by the A/D converter 24. The digital signal processing circuit 25 extracts analysis-use parameters from the optical signals. The extracted characteristic parameters are stored as measurement data in the memory 26.

    [0064] In the nucleated element measuring step S506, as with the anucleate element measuring step, the microcomputer 21a drives the compressor 35a and the syringe pump 34b to introduce the fourth measurement specimen from the reaction tank 30b into the flow cell 51 containing the sheath fluid. When the laser beam is emitted from the laser light source 53 by the microcomputer 21a, five different optical signals emitted from particles in the fourth measurement specimen are detected. Then, analysis-use parameters of the optical signals are extracted and stored in the memory 26.

    [0065] In a given period of time after the fourth measurement specimen starts to be supplied, the microcomputer 21a sets the light sensitivities of the forward scattered light receiver 55, side scattered light receiver 58a, and fluorescence light receiver 59 to the high sensitivity level, specifically, their gains are set to values five times larger. This is because bacteria are smaller than the other nucleated cells, and their fluorescence amount is less than the other nucleated cells. The high sensitivity enables high-accuracy detection of trace amounts of light emitted from bacteria.

    [0066] For a predetermined period of time subsequent to the light sensitivity change, the sheath fluid and the fourth measurement specimen continue to be introduced into the flow cell 51, and the laser beam irradiation continues as well. Then, five different optical signals emitted from the particles of the fourth measurement specimen are detected. Then, analysis-use parameters of the optical signals are extracted and stored in the memory 26.

    [0067] In step S507, the microcomputer 21a transmits the measurement data obtained in the anucleate element measuring step and the nucleated element measuring step to the data processing unit 13. Then, the microcomputer 21a ends the operation.

    [0068] In step S509, the CPU 401 analyzes the measurement data. Then, the CPU 401 generates a sample analysis result and stores the analysis result in the hard disc 404. In step S510, the CPU 401 displays the analysis result.

    [0069]  Fig. 10 is a flow chart of the subroutine of the analyzing step S509. The CPU 401 carries out step S801 for classifying anucleate elements, step S802 for classifying white blood cells and large cells, step S803 for detecting fungi, and step S804 for detecting bacteria.

    [0070] In the anucleate element classifying step S801 during the urine analysis mode, the CPU 401 distinguishes between red blood cells and crystals by using FSC and FLH obtained from the first measurement specimen. The CPU 401 further counts them. Fig. 11 is a distribution chart of red blood cells and crystals. In Fig. 11, the lateral axis represents the intensity of FLH (FLHP), and the vertical axis represents the intensity of FSC (FSCP). As illustrated in Fig. 11, distinction in FLHP is observed between a red blood cell distributed region R11 and a crystal distributed region R12. This distinction results from the fact that red blood cells and crystals differ in stainability. Therefore, red blood cells and crystals may be classified based on FLHP.

    [0071] In the anucleate element classifying step S801 during the body fluid analysis mode, as with the urine analysis mode, red blood cells and crystals are classified and counted by using FSC and FLH obtained from the third measurement specimen.

    [0072] In the anucleate element classifying step S801, particles present in the region R11 of Fig. 11 are detected and counted as red blood cells, and particles present in the region R12 of Fig. 11 are detected and counted as crystals.

    [0073] In the anucleate element classifying step S801 during the urine analysis mode, casts are then counted by using FLLW and FLLA obtained from the first measurement specimen. During the body fluid analysis mode, casts, which are not found in body fluid, are not counted.

    [0074] In the white blood cell and large cell classifying step S802 during the urine analysis mode, white blood cells, epithelial cells, and atypical cells are detected and counted by using FSC and FLL obtained from the second measurement specimen before the sensitivity change. The scattered light signal reflects a particle size. The fluorescence signal reflects the nucleic acid amount of a particle. The white blood cell, epithelial cell, and atypical cell contain has larger nucleic acid amounts than the fungus and bacterium, and their fluorescence amounts are accordingly relatively large. To detect these cells, therefore, the second fluorescence signal (FLL) obtained in low sensitivity is used as the fluorescence signal (FL).

    [0075] As illustrated in Fig. 12A, white blood cells, epithelial cells, and atypical cells are distributed in FLLA-FSC space. The lateral axis of Fig. 12A represents the pulse area of FLL (FLLA). The vertical axis of Fig. 12A represents the pulse area of FSC (FSCW). As illustrated in Fig. 12A, distinction in FLLA is observed between atypical cells, and white blood cells and epithelial cells. The distinction results from hardly different nucleic acid amounts of the white blood cell and epithelial cell, whereas the atypical cell has a larger nucleic acid amount than the white blood cell and epithelial cell.

    [0076] In FSCW, distinction is observed between white blood cells and epithelial cells because epithelial cells categorized as large cells are larger in size than white blood cells. Therefore, white blood cells, large cells (epithelial cells), and atypical cells are classified based on FLLA and FSCW. In the white blood cell and large cell classifying step S802, particles present in the region R21 of Fig. 12A are detected and counted as atypical cells. Fig. 12B illustrates an exemplified detection result of white blood cells. In Fig. 12A, particles present in the region R22 are detected and counted as white blood cells, and particles present in the region R23 are detected and counted as epithelial cells.

    [0077] In the white blood cell and large cell classifying step S802 during the body fluid analysis mode, as with the urine analysis mode, white blood cells, epithelial cells, and atypical cells are detected and counted by using the FSC and FLH obtained from the fourth measurement specimen. To count these cells, epithelial cells and atypical cells are collectively counted as large cells (LC). In addition to epithelial cells, large cells to be counted may include other nucleated cells such as tumor cells.

    [0078] The body fluid sample contains, in addition to white blood cells, other relatively large cells. Specifically, the body fluid sample contains nucleated cells larger than white blood cells, for example, epithelial cells or tumor cells. To combine the scattered light signal pulse width (FSCW) and the fluorescence signal pulse area (FLLA) is suitable for detection of large nucleated cells. In this manner, white blood cells and large cells in body fluid may be both very accurately counted.

    [0079] In the white blood cell and large cell classifying step S802 during the body fluid analysis mode, white blood cells and epithelial cells are counted. In addition to that, nucleated cells in total including white blood cells, epithelial cells (large cells), and atypical cells are further counted and obtained as a total nucleated cell count (TNC).

    [0080] The particles counted in the body fluid analysis mode include the same ones as in the urine analysis mode, such as red blood cells and white blood cells, but may further include elements not counted in the urine analysis mode such as large cells and nucleated cells in total. On the other hand, casts, for example, not counted in the body fluid analysis mode are counted in the urine analysis mode. Thus, the sample analyzer 100 classifies and counts the elements based on counting target items respectively specified for the urine analysis mode and the body fluid analysis mode.

    [0081] Supposing that the fourth measurement specimen contains bacteria or fungi, the regions R22 and R23 illustrated in Fig. 12A are useful for distinguishing white blood cells and epithelial cells from bacteria and fungi much smaller than white blood cells. Thus, the total nucleated cell count (TNC) may be obtained as the total count of white blood cells and nucleated cells larger than white blood cells that are distinguished from fungi or bacteria.

    [0082] In the white blood cell and large cell classifying step S802 during the body fluid analysis mode, white blood cells detected as being present in the region R22 (see Fig. 12B) are further classified. More specifically, white blood cells are classified in two categories; mononuclear white blood cells (WBC (MN)), and polymorphonuclear white blood cells (WBC (PMN)). It is not particularly limited what and how many categories should be used to classify white blood cells. For example, white blood cells may be classified in five different categories; lymphocyte, monocyte, neutrophile, acidocyte, and basocyte. Because of a small count of white blood cells in body fluid, more classification categories may result in a fewer-than-expected count of white blood cells in each category. This possibly leads to poor accuracy in classifying these cells. Therefore, white blood cells may be preferably classified in two categories.

    [0083] The classification of white blood cells makes use of the forward scattered light signal (FSC) and the side scattered light signal (SSC) obtained from the fourth measurement specimen before the sensitivity change. As the result of classifying white blood cells, mononuclear white blood cells and polymorphonuclear white blood cells are detected to obtain a mononuclear WBC count (MN#) and a polymorphonuclear WBC count (PMN#). Based on the proportion of these counts, a mononuclear WBC ratio (MN%) and a polymorphonuclear WBC ratio (PMN%) are calculated.

    [0084] As illustrated in Fig. 13, mononuclear white blood cells and polymorphonuclear white blood cells are distributed in SSCP - FSCP space. In Fig. 13, the lateral axis represents the intensity of the side scattered light signal (SSCP), and the vertical axis represents the intensity of the forward scattered light signal (FSCP). In place of these signals, intensities of the fluorescence signal and the side scattered light signal may be employed to classify white blood cells.

    [0085] Figs. 14A to 14C illustrate detection results for classification of white blood cells. Fig. 14A is a scattergram of the detection result of a body fluid sample containing a large amount of mononuclear white blood cells. Fig. 14B is a scattergram of the detection result of a body fluid sample containing a large amount of polymorphonuclear white blood cells. Fig. 14C is a scattergram of the detection result of a body fluid sample containing mononuclear and polymorphonuclear white blood cells both in large quantities.

    [0086] The white blood cell and large cell classifying step S802 during the urine analysis mode does not classify white blood cells, because urinary white blood cells are less stable in shape than white blood cells of body fluid and may be difficult to classify with high reliability. This is, however, only a non-limiting example. The urine analysis mode, as well as the body fluid analysis mode, may include the white blood cell classification.

    [0087] In the fungi detecting step S803 during the urine analysis mode, fungi are detected and counted by using FSC and FLH obtained from the second measurement specimen before the sensitivity change. As compared to the white blood cell and large cell, the fungus has a smaller nucleic acid amount, and its fluorescence amount is accordingly relatively small. To detect fungi, therefore, FLH obtained in higher sensitivity than FLL is used as the fluorescence signal (FL). In order for distinction between this FLH and FLH obtained after the sensitivity change (FLH2 described later), FLH before the sensitivity change is referred to as FLH1. The fungus and white blood cell, etc. differ in their nucleic acid amounts. Hence, fungi may be efficiently counted in distinction from white blood cells, etc by selectively using appropriate one of the fluorescence signals FLL and FLH1 that differ in detection sensitivity.

    [0088] As illustrated in Fig. 15A, fungi are distributed in FLHP1 - FSCP space. In Fig. 15A, the lateral axis represents the intensity of FLH1 (FLHP1), and the vertical axis represents the intensity of the forward scattered light signal (FSCP). The particles present in the region R42 of Fig. 15A are detected and counted as fungi. Fig. 15B illustrates an exemplified detection result on fungi.

    [0089] In the anucleate element classifying step S801 during the urine analysis mode, particles present in regions R41 and R42 are detected and counted as sperms and Trichomonas by using FSC and FLH obtained from the fourth measurement specimen before the sensitivity change.

    [0090] In the fungi detecting step S802 during the body fluid analysis mode, as with the urine analysis mode, fungi are detected and counted by using FSC and FLH obtained from the fourth measurement specimen before the sensitivity change. Neither of sperms nor Trichomonas is included in body fluid. These elements, therefore, are not counted in the body fluid analysis mode.

    [0091] In the bacteria detecting step S804 during the urine analysis mode, bacteria are detected and counted by using FSC and FLH2 obtained from the fourth measurement specimen after the sensitivity change. The FLH2 is FLH obtained after the sensitivity change. The bacterium is even smaller than the fungus and has a smaller nucleic acid amount than the fungus, and its fluorescence amount is less than the fungus. Therefore, bacteria are detected by using FLH2 obtained in the highest sensitivity. The forward scattered light signal (FSC) used for this purpose is better in sensitivity than the forward scattered light signal (FSC) used to detect fungi and white blood cells, etc.

    [0092] As illustrated in Fig. 16, bacteria are distributed in FLHP2 - FSCP space. In Fig. 16, the lateral axis represents the intensity of the high-sensitivity fluorescence light FLH2 (FLHP2) after the sensitivity change, and the vertical axis represents the intensity of the high-sensitivity forward scattered light (FSCP). Particles present in the region R5 of Fig. 16 are detected and counted as bacteria.

    [0093] In the bacteria detecting step S804 during the body fluid analysis mode, as with the urine analysis mode, bacteria are detected and counted by using FSC and FLH2 obtained from the fourth measurement specimen after the sensitivity change.

    [0094] In Fig. 17 are illustrated nucleic acid amounts (DNA amounts) and particle sizes of the bacterium, fungus, white blood cell, epithelial cell, and atypical cell. As described earlier, the sample analyzer 100 may analyze, by using one measurement specimen, formed elements in urine and body fluid that largely differ in particle sizes, ranging from bacteria with very small particle sizes and less nucleic acids to epithelial cells (large cells) with large particle sizes and more nucleic acids.

    [0095] To allow one optical detector 22a to accurately detect particles distributed in a broad range, the sample analyzer 100 may obtain the detection signals from the detecting unit 50 in different detection sensitivities; first detection sensitivity, second detection sensitivity, and third detection sensitivity. The first detection sensitivity is the lowest detection sensitivity, the second detection sensitivity is higher than the first detection sensitivity, and the third detection sensitivity is higher than the second detection sensitivity.

    [0096] According to this embodiment, the detection signal of the first detection sensitivity is the low-sensitivity fluorescence signal (FLL) obtained before the sensitivity change. Further, the detection signal of the second detection sensitivity is the high-sensitivity fluorescence signal (FLH1) obtained before the sensitivity change, and the detection signal of the third detection sensitivity is the high-sensitivity fluorescence signal (FLH2) obtained after the sensitivity change.

    [0097] The first characteristic parameter FLLA based on the low-sensitivity fluorescence signal (FLL) obtained in the first detection sensitivity is used in the white blood cell and large cell classifying step S802 as illustrated in Fig. 12A. The second characteristic parameter FLHP1 based on the high-sensitivity fluorescence signal (FLH1) obtained in the second detection sensitivity is used in the fungi detecting step S803 as illustrated in Fig. 15A. The third characteristic parameter FLHP2 based on the high-sensitivity fluorescence signal (FLH2) obtained in the third detection sensitivity is used in the bacteria detecting step S804 as illustrated in Fig. 16.

    [0098] In the white blood cell and large cell classifying step S802, the fluorescence pulse area (FLLA) is used as the characteristic parameter. In the fungi detecting step S803 and the bacteria detecting step S804, the fluorescence intensities (FLHP1, FLHP2) are used as the characteristic parameter. The reason for selective uses of the fluorescence pulse area and fluorescence intensities is described below.

    [0099] According to this embodiment, a beam spot formed by the light source 53 has a diameter W ranging from approximately 4 to 7 µm in a specimen flow direction. The nucleic diameters of the epithelial cell, atypical cell, and white blood cell are larger than the diameter W of the beam spot, whereas the nucleic diameters of the fungus and bacterium are smaller than the diameter W of the beam spot.

    [0100] As illustrated in Fig. 18A, a large cell LC has a nucleus N1 larger than the diameter W of the beam spot. Hence, the nucleus N1 fails to fall within the beam spot. The intensity of the fluorescence signal can only reflect the nucleic acid amount of a part of the light-irradiated nucleus. On the other hand, a fluorescence pulse area value LA1, which is the fluorescence signal intensity integrated by time, may be considered to be a value reflecting the nucleic acid amount of the whole nucleus. For the large cell LC, therefore, a suitable parameter reflecting the nucleic acid amount of the whole nucleus is the fluorescence pulse area value LA1 obtained by integrating the fluorescence signal intensity by time.

    [0101] As illustrated in Fig. 18B, a small cell SC, such as a fungus, has a nucleus N2 smaller than the diameter W of the beam spot. Hence, the whole nucleus N2 of the cell SC falls within the beam spot. The whole particle of a small cell, such as fungus or bacterium, falls within the beam spot. When the cell SC moves in its moving direction, light is emitted on the whole nucleus N2 during the time when the nucleus N2 enters the beam spot and moves out of there. Therefore, if the area value LA2 obtained by integration of the fluorescence signal intensity by time, is used as the parameter reflecting the nucleic acid amount of the small cell SC, its apparent value results in a larger value than the actual nucleic acid amount. On the other hand, the fluorescence signal intensity may be considered to be a value reflecting the actual nucleic acid amount of the nucleus. For the small cell SC, therefore, a suitable parameter reflecting the actual nucleic acid amount is the fluorescence light intensity.

    [0102] The white blood cell is approximately 10 to 15 µm in diameter, and the fungus (non-sprouted) is approximately 3 to 8 µm in diameter. The white blood cell and fungus having similar sizes may be not very easy to distinguish from each other. According to this embodiment, however, white blood cells and fungi may be counted in distinction from each other. This embodiment selectively uses appropriate one of the fluorescence signals FLL and FLH1 that differ in detection sensitivity for the white blood cells and fungi. This embodiment further uses the fluorescence light pulse area for white blood cells, while using the fluorescence light intensity for small cells, fungi, to facilitate distinction between white blood cells and fungi based on their different nucleic acid amounts.

    [0103] The classification and counting result analyzing and displaying step S510 during the urine analysis mode is described referring to Fig. 6 again. In this step, the CPU 401 displays on the display unit 409 classification and counting result screens including classification and counting results and scattergram of urinary formed elements. The counting result displayed on the counting result screen include the counts of red blood cells, white blood cells, casts, epithelial cells, bacteria, fungi, sperms, Trichomonas, and atypical cells.

    [0104] In the classification and counting result analyzing and displaying step S510 during the body fluid analysis mode, the CPU 401 carries out the processing steps illustrated in Fig. 19. These steps may determine any inflammations suspected from the analysis results (counting results) of different types of particles included in the body fluid, specifically, based on a combination of particles exhibiting abnormal values among the different types of particles.

    [0105] In step S851, the CPU 401 determines the type of a received body fluid. When the body fluid is cerebrospinal fluid, the CPU 401 determines in S852 on any inflammations in accordance with criteria defined for cerebrospinal fluid. When the body fluid is synovial fluid, the CPU 401 determines in S853 on any inflammations in accordance with criteria defined for synovial fluid. When the body fluid is coelomic fluid, the CPU 401 determines in S854 on any inflammations in accordance with one or more criteria defined for coelomic fluid. For the non-specified body fluid, the CPU 401 determines in S855 whether any of the criteria used in S852 to S854 is applicable to the body fluid. The criteria used in S852 to S854 are preset in the hard disc 404.

    [0106] The plural criteria used to determine on inflammations associated with cerebrospinal fluid in S 852 are the following criteria A1 to A4. These criteria are illustrated herein as a non-limiting example, and threshold values included in the criteria may be suitably decided by users.

    First criterion A1 for determining bacterial meningitis suspected: "1,000 or more white blood cells per µL", "predominant polymorphonuclear leukocytes", and "1,000 or more bacteria per µL".

    Second criterion A2 for determining fungal meningitis suspected: "100 or more white blood cells per µL", "predominant mononuclear leukocytes", and "100 or more fungi per µL".

    Third criterion A3 for determining viral meningitis suspected: "10 or more white blood cells per µL", "predominant mononuclear leukocytes", and "neither of the first criterion A1 nor the second criterion A2 is fulfilled".

    Fourth criterion A4 for determining neoplastic meningitis suspected: "10 or more atypical cells per µL"



    [0107] The term, "predominant", refers to either one of mononuclear leukocytes and polymorphonuclear leukocytes that account for a larger proportion than the other in the total count of white blood cells. Comparing the percentage of mononuclear leukocytes (MN%) and the percentage of polymorphonuclear leukocytes (PMN%), mononuclear leukocytes are predominant with MN%>PMN%, while polymorphonuclear leukocytes are predominant with MN%≦PMN%. In normal spinal fluid, the vast majority (approximately 98%) of white blood cells are mononuclear leukocytes, however, polymorphonuclear leukocytes become predominant in cases with bacterial meningitis.

    [0108] In S853, plural criteria for determining inflammations associated with synovial fluid are, for example, the following criteria B1 and B2.

    [0109] Second criterion B1 for determining suppurative arthritis suspected: "1,000 or more white blood cells per µL", "1,000 or more bacteria per µL", and "1,000 or more fungi per µL".

    [0110] First criterion B2 for determining crystal induced arthritis suspected: "100 or more white blood cells per µL", and "10,000 or more crystals per µL".

    [0111] In S854, plural criteria for determining inflammations associated with coelomic fluid in step S854 are, for example, the following criteria C1 to C3.

    [0112]  First criterion C1 for determining bacterial inflammation suspected: "1,000 or more white blood cells per µL", "predominant polymorphonuclear leukocytes", and "1,000 or more bacteria per µL".

    [0113] Second criterion C2 for determining fungal inflammation suspected: "100 or more white blood cells per µL", "predominant mononuclear leukocytes", and "100 or more fungus per µL".

    [0114] Third criterion C3 for determining neoplastic inflammation suspected: "10 or more atypical cells per µL".

    [0115] In step S856, the CPU 401 determines whether any inflammation should be suspected. Confirming that the inflammation should be suspected, the CPU 401, in S857, appends a suspect message to the determination result. In the event that the body fluid sample is "non-specified" and fulfills any of the criteria, information on the fulfilled criterion (criteria) is appended to the result in place of the suspect message.

    [0116] In S858, the CPU 401 determines whether hemorrhage should be suspected based on the followFing criterion D1.
    Criterion Dl for determining hemorrhage suspected: "1,000 or more red blood cells per µL"·

    [0117] Confirming that the hemorrhage should be suspected, the CPU 401, in S859, appends a red blood cell correction message to the determination result to suggest that red blood cells should be corrected.

    [0118] In S860, the CPU 401 displays, on the display unit 409, a counting result screen including the counting result and a determination result screen including the determination result. As with the urine analysis mode, the counting result screen includes the counting result and scattergram. The counting result displayed on the counting result screen in the body fluid analysis mode includes the counts of red blood cells, white blood cells, mononuclear leukocytes (MN), polymorphonuclear leukocytes (PMN), nucleated cells (TNC), large cells (LC), bacteria, fungi, and atypical cells. The screen further includes the percentage of mononuclear leukocytes (MN%) and the percentage of polymorphonuclear leukocytes (PMN%).

    [0119] In S857, the CPU 401, in response to the determination result with the suspect message appended thereto, further displays a determination result screen including the suspect message. Fig. 20 illustrates an exemplified determination result display screen.

    [0120] As illustrated in Fig. 20, the determination result screen includes the sample ID, type of a target body fluid, suspect message obtained as the determination results of S852 to S854, and classification and counting results supporting the determination result. The suspect message of the illustrated example is "bacterial meningitis ?" indicating that bacterial meningitis is suspected. In this example are further displayed the count of white blood cells, percentage of white blood cells, and count of bacteria supporting the determination result. These pieces of information assist a user who operates the analyzer when determining whether the inflammation should be suspected based on the classification and counting results.

    [0121] In S859, the CPU 401, in response to the determination result with the red blood cell correction message appended thereto, further displays a determination result screen including the red blood cell correction message. Fig. 21 illustrates an exemplified determination result display screen.

    [0122] As illustrated in Fig. 21, the determination result screen includes the sample ID, type of a target body fluid, red blood cell count, white blood cell count, and correction-suggesting message. The determination result screen further includes a YES button to approve the correction, and a NO button to reject the correction.

    [0123] The spinal fluid and synovial fluid collected by puncturing a needle into a body may entrap through the punctured needle blood (peripheral blood) containing white blood cells. In such a case, accurate counting of white blood cells in the body fluid may fail unless white blood cells included in the entrapped blood are subtracted. To this end, the count of white blood cells may be corrected based on the count of red blood cells, if they are included in a large amount beyond a threshold value, to obtain an accurate count of white blood cells.

    [0124] When YES illustrated in Fig. 21 is selected in S861, the CPU 401, in S862, corrects the count of white blood cells based on the count of red blood cells in accordance with the formula below.



    [0125] In the formula, WBC* is the corrected count of white blood cells, and F is a value optionally set by a user, indicating the count of red blood cells per one white blood cell included in peripheral blood. Suitably F = 480 to 1,100.

    [0126] When the count of red blood cells (RBCB1) and the count of white blood cells (WBCB1) in a subject's peripheral blood are known, these count values may be inputted to correct red blood cells in accordance with the formula below.



    [0127] In S863, the CPU 401 additionally displays, on the counting result screen, the count of white blood cells resulting from the correction of red blood cells. Then, the CPU 401 ends the operation.

    [0128] After the determination result is displayed, the CPU 401 may still receive from a user an instruction to change the selected body fluid sample. For example, if the user incorrectly selects coelomic fluid as the body fluid sample to be measured and notices his/her error on the displayed determination result, the user may correct the selected body fluid sample. This can only be accepted before the counting result is validated. When the body fluid sample is corrected by the user, step S851 is carried out again to determine on inflammations suspected in the newly selected body fluid.

    [0129] None of the conventional sample analyzers available so far is equipped to count white blood cells and fungi in body fluid. According to this embodiment, one sample analyzer 100 may count white blood cells and fungi both in body fluid. In the case of abnormally high values exhibited for white blood cells and fungi in spinal fluid, a user may suspect fungal meningitis (cryptococcal meningitis).

    [0130] The sample analyzer 100 according to this embodiment counts white blood cells and fungi by using the measurement specimen containing hemolyzed red blood cells of body fluid. The fungi and red blood cells are alike in size, and the body fluid may contain more red blood cells than urine. According to this embodiment wherein red blood cells are hemolyzed, fungi may be very accurately counted without being affected by red blood cells.

    [0131] The sample analyzer 100 according to this embodiment, by this device alone, may count white blood cells, fungi, and bacteria in body fluid. In the case of an abnormally high value exhibited for white blood cells when, for example, spinal fluid is analyzed, the counts of bacteria and fungi may be further checked to assist a user in diagnosing whether a subject has bacterial meningitis or fungal meningitis.

    [0132] The sample analyzer 100 according to this embodiment may classify white blood cells in body fluid into mononuclear leukocytes and polymorphonuclear leukocytes. It is clinically important in body fluid tests, as well as the count of white blood cells, to determine which of mononuclear leukocytes and polymorphonuclear leukocytes is predominant. According to this embodiment, useful information for body fluid tests may be provided by such classification of white blood cells.

    [0133] The sample analyzer 100 according to this embodiment may classify white blood cells and further count bacteria and fungi. Typical meningitides that may be identified by spinal fluid tests are bacterial meningitis, fungal meningitis, and viral meningitis. Of these examples, bacterial meningitis may be distinguished from the other meningitides based on criteria; significantly increased white blood cells and decreased mononuclear cells. On the other hand, fungal meningitis and viral meningitis both exhibiting increased white blood cells may be difficult to discern by their percentages of white blood cells alone. According to this embodiment, however, fungi, as well as white blood cells, may be counted, and the count of fungi may be taken into account when determining whether or not the inflammation is fungal meningitis. With fewer fungi, viral meningitis may be suspected. Further advantageously, viral meningitis may be more accurately diagnosed by using the count of bacteria in addition to the count and percentage of white blood cells. According to this embodiment, therefore, pieces of information useful for diagnoses of meningitides may be presented at once with one sample analyzer.

    [Another Example of Red Blood Cell and Crystal Counting Method]



    [0134] Another method for counting red blood cells and crystals in body fluid is hereinafter described referring to Figs. 22. According to the embodiment described so far, FLH and FSC are used for distinction between red blood cells and crystals as illustrated in Fig. 19. Instead, depolarized side scattered light PSS may be used for distinction between red blood cells and crystals.

    [0135] As illustrated in Fig. 22A, the CPU 401 of the processing unit 13 plots particles on a first scattergram with its two axes respectively representing the pulse width of the forward scattered light signal (FSCW) and the intensity of the forward scattered light signal (FSCP) based on the characteristic parameters obtained in the anucleate element measuring step S505. Then, a fixed region A11 is defined on the first scattergram.

    [0136]  Referring to Fig. 22A, the region All is a region with red blood cells and crystals included in the first or third measurement specimen, and any region but the region All is a region with dust and bacteria, etc. included in the measurement specimen. The CPU 401 extracts particles present in the region A11 on the first scattergram.

    [0137] As illustrated in Fig. 22B, the CPU 401 plots the particles extracted from the region All on a second scattergram with its two axes respectively representing the intensity of the depolarized side scattered light signal (PSSCP) and the intensity of the forward scattered light signal (FSCP). Then, fixed regions A21 and A22 are defined on the second scattergram.

    [0138] Referring to Fig. 22B, PSSCP on the lateral axis indicates, of the side scattered light emitted from the particles, an amount of polarized light perpendicular to irradiated light that is a depolarization degree. As compared to red blood cells, crystals are more likely to depolarize light and accordingly distributed in a region with large PSSCP values. The regions A21 and A22 illustrated in Fig. 22B are respectively regions with red blood cells and crystals. The CPU 401 counts the particles present in the region A21 as red blood cells, while counting the particles present in the region A22 as crystals.

    [0139] A red blood cell and crystal are both anucleate elements and alike in size. In any sample containing a large amount of crystals, therefore, the crystals possibly adversely affect the accuracy of classifying red blood cells. The depolarized side scattered light may allow for accurate distinction between red blood cells and crystals because red blood cells hardly depolarize light, whereas anisotropic crystals are apt to depolarize light. This may lead to higher accuracy in counting red blood cells even in urine samples heavily containing crystals. Further, synovial fluid may contain crystals and entrap blood when collected from a body. Therefore, more accurate distinction between red blood cells and crystals is helpful in making accurate diagnoses associated with synovial fluid.

    [Other Embodiment]



    [0140] The particle counting function in the body fluid analysis mode, inflammation determining function based on the elements in body fluid, and white blood cell correcting function based on red blood cell count according to the embodiment described so far are applicable to body fluid analyses using a blood cell counter.

    [0141] The measuring unit 12 and the processing unit 13 may be integrally formed. For example, the processing unit 13 may be incorporated in the measuring unit 12.


    Claims

    1. A sample analyzer (100) for analyzing a sample, comprising:

    a preparing unit (30) adapted to mix a sample, a surfactant-containing diluent, and a nucleic acid staining reagent to prepare a measurement specimen in which nucleic acids of nucleated cells are stained and red blood cells are hemolyzed;

    a detecting unit (50) adapted to irradiate particles included in the measurement specimen with light to receive scattered light and fluorescence light emitted from the particles and output a detection signal; and

    a processing unit (13) adapted to count white blood cells and fungi in the sample based on the detection signal, wherein

    the detection signal includes a fluorescence signal obtained from the fluorescence light emitted from the particles, and

    the processing unit (13) is adapted to count the white blood cells using a first characteristic parameter being obtained from the fluorescence light and based on the nucleic acid amount, and count the fungi using a second characteristic parameter different from the first characteristic parameter, the second characteristic parameter being obtained from the fluorescence signal and based on the nucleic acid amount.


     
    2. The sample analyzer (100) according to claim 1, wherein
    the processing unit (13) is adapted to count nucleated cells larger than the white blood cells in the sample based on the detection signal.
     
    3. The sample analyzer (100) according to claim 1 or 2, wherein
    the processing unit (13) is adapted to distinguish the white blood cells and the nucleated cells larger than the white blood cells in the sample at least from the fungi and bacteria in the sample based on the detection signal to obtain a total count of the white blood cells and the nucleated cells larger than the white blood cells.
     
    4. The sample analyzer (100) according to claim 1, wherein
    the first characteristic parameter is a fluorescence light pulse area obtained from the fluorescence signal, and
    the second characteristic parameter is a fluorescence light intensity obtained from the fluorescence signal.
     
    5. The sample analyzer (100) according to claim 1 or 4, wherein
    the detecting unit (50) comprises an amplification circuit (22b) adapted to amplify signals from an optical detector (22a) in different detection sensitivities,
    the detecting unit (50) is adapted to output the fluorescence signal in a first detection sensitivity and a second detection sensitivity higher than the first detection sensitivity, and
    the processing unit (13) is adapted to obtain the first characteristic parameter from the fluorescence signal outputted in the first detection sensitivity, and obtain the second characteristic parameter from the fluorescence signal outputted in the second detection sensitivity.
     
    6. The sample analyzer (100) according to any one of claims 1 to 5, wherein
    the processing unit (13) is adapted to classify the white blood cells into mononuclear leukocytes and polymorphonuclear leukocytes based on the detection signal.
     
    7. The sample analyzer (100) according to any one of claims 1 to 6, wherein
    the processing unit (13) is adapted to count the bacteria in the sample based on the detection signal.
     
    8. The sample analyzer (100) according to claim 7, wherein
    the detecting unit (50) is adapted to output the detection signal by detecting the fluorescence light in the first detection sensitivity, the second detection sensitivity higher than the first detection sensitivity, and a third detection sensitivity higher than the second detection sensitivity, and
    the processing unit (13) is adapted to count the white blood cells using a characteristic parameter of the detection signal outputted in the first detection sensitivity, count the fungi using a characteristic parameter of the detection signal outputted in the second detection sensitivity, count the bacteria using a characteristic parameter of the detection signal outputted in the third detection sensitivity.
     
    9. The sample analyzer (100) according to any one of claims 1 to 8, wherein
    the preparing unit (30) is adapted to prepare, from a portion of the sample, the measurement specimen in which the red blood cells are hemolyzed, and mixe a remaining portion of the sample with a reagent to prepare a non-hemolyzed measurement specimen in which red blood cells are not hemolyzed,
    the detecting unit (50) is adapted to irradiate particles included in the non-hemolyzed measurement specimen with light to receive scattered light and fluorescence light emitted from the particles and output a detection signal, and
    the processing unit (13) is adapted to count red blood cells in the sample based on the detection signal obtained from the non-hemolyzed measurement specimen.
     
    10. The sample analyzer (100) according to claim 9, wherein
    the processing unit is adapted to count crystals in the sample based on the detection signal obtained from the non-hemolyzed measurement specimen.
     
    11. The sample analyzer (100) according to any one of claims 1 to 10, wherein
    the sample analyzer is operable in a urine analysis mode for analyzing a urine sample and in a body fluid analysis mode for analyzing a body fluid sample other than blood and urine, and
    the processing unit (13) is adapted to classify and count particles in a measurement specimen in the body fluid analysis mode for a counting target item different from a counting target item in the urine analysis mode.
     
    12. The sample analyzer (100) according to any one of claims 1 to 11, wherein
    the sample is a body fluid sample other than blood and urine, and
    the processing unit (13) is adapted to determine a meningitis, an arthritis, or an inflammation of coelomic membrane based on a counting result of the particles included in the body fluid sample.
     
    13. The sample analyzer (100) according to any one of claims 1 to 12, wherein
    the processing unit (13) is adapted to receive an designation of a type of the sample from a plurality of types and determines the inflammation based on a criterion according to the designated type of the sample.
     
    14. A sample analyzing method, comprising:

    mixing (S504) a sample, a surfactant-containing diluent, and a nucleic acid staining reagent to prepare a measurement specimen in which nucleic acids of nucleic cells are stained and red blood cells are hemolyzed;

    irradiating particles included in the measurement specimen to receive scattered light and fluorescence light emitted from the particles and output a detection signal; and

    counting (S802, S803) white blood cells and fungi in the sample based on the detection signal, wherein

    the detection signal includes a fluorescence signal obtained from the fluorescence light emitted from the particles, and

    the white blood cells are counted using a first characteristic parameter being obtained from the fluorescence light and based on the nucleic acid amount, and the fungi are counted using a second characteristic parameter different from the first characteristic parameter, the second characteristic parameter being obtained from the fluorescence signal and based on the nucleic acid amount.


     


    Ansprüche

    1. Probenanalysator (100) zum Analysieren einer Probe, umfassend:

    eine Vorbereitungseinheit (30), die angepasst ist, um eine Probe, ein Tensid enthaltendes Verdünnungsmittel und ein Nukleinsäure-Färbereagenz zu mischen, um eine Messprobe vorzubereiten, in der Nukleinsäuren von kernhaltigen Zellen gefärbt und rote Blutkörperchen hämolysiert werden;

    eine Erfassungseinheit (50), die angepasst ist, um in der Messprobe enthaltene Teilchen mit Licht zu bestrahlen, um von den Teilchen emittiertes Streulicht und Fluoreszenzlicht zu empfangen und ein Erfassungssignal auszugeben; und

    eine Verarbeitungseinheit (13), die angepasst ist, um basierend auf dem Erfassungssignal weiße Blutkörperchen und Pilze in der Probe zu zählen, wobei

    das Erfassungssignal ein Fluoreszenzsignal aufweist, das aus dem von den Teilchen emittierten Fluoreszenzlicht erhalten wird, und

    die Verarbeitungseinheit (13) angepasst ist, um die weißen Blutkörperchen unter Verwendung eines ersten charakteristischen Parameters, der aus dem Fluoreszenzlicht und basierend auf der reflektierenden Nukleinsäuremenge erhalten wird, zu zählen, und die Pilze unter Verwendung eines zweiten charakteristischen Parameters, der sich von dem ersten charakteristischen Parameter unterscheidet, zu zählen, wobei der zweite charakteristische Parameter aus dem Fluoreszenzsignal und basierend auf der reflektierenden Nukleinsäuremenge erhalten wird.


     
    2. Probenanalysator (100) nach Anspruch 1, wobei
    die Verarbeitungseinheit (13) angepasst ist, um basierend auf dem Erfassungssignal kernhaltigen Zellen zu zählen, die größer als die weißen Blutkörperchen in der Probe sind.
     
    3. Probenanalysator (100) nach Anspruch 1 oder 2, wobei
    die Verarbeitungseinheit (13) angepasst ist, um basierend auf dem Erfassungssignal die weißen Blutkörperchen und die kernhaltigen Zellen, die größer als die weißen Blutkörperchen in der Probe sind, zumindest von den Pilzen und Bakterien in der Probe zu unterscheiden, um eine Gesamtzahl der weißen Blutkörperchen und der kernhaltigen Zellen, die größer als die weißen Blutkörperchen sind, zu erhalten.
     
    4. Probenanalysator (100) nach Anspruch 1, wobei
    der erste charakteristische Parameter eine aus dem Fluoreszenzsignal erhaltene Fluoreszenzlichtimpulsfläche ist, und
    der zweite charakteristische Parameter eine aus dem Fluoreszenzsignal erhaltene Fluoreszenzlichtintensität ist.
     
    5. Probenanalysator (100) nach Anspruch 1 oder 4, wobei
    die Erfassungseinheit (50) eine Verstärkungsschaltung (22b) umfasst, die angepasst ist, um Signale von einem optischen Detektor (22a) mit verschiedenen Erfassungsempfindlichkeiten zu verstärken,
    die Erfassungseinheit (50) angepasst ist, um das Fluoreszenzsignal mit einer ersten Erfassungsempfindlichkeit und einer zweiten Erfassungsempfindlichkeit, die höher als die erste Erfassungsempfindlichkeit ist, auszugeben, und
    die Verarbeitungseinheit (13) angepasst ist, um den ersten charakteristischen Parameter aus dem Fluoreszenzsignal zu erhalten, das mit der ersten Erfassungsempfindlichkeit ausgegeben wird, und den zweiten charakteristischen Parameter aus dem Fluoreszenzsignal zu erhalten, das mit der zweiten Erfassungsempfindlichkeit ausgegeben wird.
     
    6. Probenanalysator (100) nach einem der Ansprüche 1 bis 5, wobei
    die Verarbeitungseinheit (13) angepasst ist, um basierend auf dem Erfassungssignal die weißen Blutkörperchen in einkernige Leukozyten und polymorphkernige Leukozyten zu klassifizieren.
     
    7. Probenanalysator (100) nach einem der Ansprüche 1 bis 6, wobei
    die Verarbeitungseinheit (13) angepasst ist, um basierend auf dem Erfassungssignal die Bakterien in der Probe zu zählen.
     
    8. Probenanalysator (100) nach Anspruch 7, wobei
    die Erfassungseinheit (50) angepasst ist, um das Fluoreszenzsignal durch Erfassen des Fluoreszenzlichts mit der ersten Erfassungsempfindlichkeit, der zweiten Erfassungsempfindlichkeit, die höher als die erste Erfassungs-empfindlichkeit ist, und einer dritten Erfassungsempfindlichkeit, die höher als die zweite Erfassungsempfindlichkeit ist, auszugeben, und
    die Verarbeitungseinheit (13) angepasst ist, um die weißen Blutkörperchen unter Verwendung eines charakteristischen Parameters des mit der ersten Erfassungsempfindlichkeit ausgegebenen Erfassungssignals zu zählen, die Pilze unter Verwendung eines charakteristischen Parameters des mit der zweiten Erfassungsempfindlichkeit ausgegebenen Erfassungssignals zu zählen, die Bakterien unter Verwendung eines charakteristischen Parameters des mit der dritten Erfassungsempfindlichkeit ausgegebenen Erfassungssignals zu zählen.
     
    9. Probenanalysator (100) nach einem der Ansprüche 1 bis 8, wobei
    die Vorbereitungseinheit (30) angepasst ist, um aus einem Teil der Probe das Messmustervorzubereiten, in dem die roten Blutkörperchen hämolysiert sind, und den verbleibenden Teil der Probe mit einem Reagenz zu mischen, um ein nicht hämolysiertes Messmuster vorzubereiten, in dem die roten Blutkörperchen nicht hämolysiert sind,
    die Erfassungseinheit (50) angepasst ist, um Teilchen, die in dem nicht hämolysierten Messmuster enthalten sind, mit Licht zu bestrahlen, um von den Teilchen emittiertes Streulicht und Fluoreszenzlicht zu empfangen und ein Erfassungssignal auszugeben, und
    die Verarbeitungseinheit (13) angepasst ist, um basierend auf dem Erfassungssignal, das von dem nicht hämolysierten Messmuster enthalten wird, die roten Blutkörperchen in der Probe zu zählen.
     
    10. Probenanalysator (100) nach Anspruch 9, wobei
    die Verarbeitungseinheit angepasst ist, um basierend auf dem Erfassungssignal, das von dem nicht hämolysierten Messmuster enthalten wird, die Kristalle in der Probe zu zählen.
     
    11. Probenanalysator (100) nach einem der Ansprüche 1 bis 10, wobei
    der Probenanalysator in einem Urinanalysemodus zum Analysieren einer Urinprobe und in einem Körperflüssigkeitsanalysemodus zum Analysieren einer anderen Körperflüssigkeitsprobe als Blut und Urin betreibbar ist, und
    die Verarbeitungseinheit (13) angepasst ist, um Teilchen in einem Messmuster in dem Körperflüssigkeitsanalysemodus zu klassifizieren und zu zählen, für ein Zählzielelement, das sich von einem Zählzielelement in dem Urinanalysemodus unterscheidet.
     
    12. Probenanalysator (100) nach einem der Ansprüche 1 bis 11, wobei die Probe eine andere Körperflüssigkeitsprobe als Blut und Urin ist, und
    die Verarbeitungseinheit (13) angepasst ist, um basierend auf einem Zählergebnis der in der Körperflüssigkeitsprobe enthaltenen Teilchen eine Meningitis, eine Arthritis oder eine Entzündung der Coelommembran zu bestimmen.
     
    13. Probenanalysator (100) nach einem der Ansprüche 1 bis 12, wobei
    die Verarbeitungseinheit (13) angepasst ist, um eine Bezeichnung einer Art der Probe von einer Mehrzahl von Arten zu empfangen, und die Entzündung basierend auf einem Kriterium gemäß der bezeichneten Art der Probe bestimmt.
     
    14. Probenanalyseverfahren, umfassend:

    Mischen (S504) einer Probe, eines Tensid enthaltenden Verdünnungsmittels und eines Nukleinsäure-Färbereagenzes, um eine Messprobe vorzubereiten, in der Nukleinsäuren von kernhaltigen Zellen gefärbt und rote Blutkörperchen hämolysiert werden;

    Bestrahlen von in der Messprobe enthaltenen Teilchen, um von den Teilchen emittiertes Streulicht und Fluoreszenzlicht zu empfangen und ein Erfassungssignal auszugeben; und

    Zählen (S802, S803) von weißen Blutkörperchen und Pilzen in der Probe basierend auf dem Erfassungssignal, wobei

    das Erfassungssignal ein Fluoreszenzsignal aufweist, das aus dem von den Teilchen emittierten Fluoreszenzlicht erhalten wird, und

    die weißen Blutkörperchen unter Verwendung eines ersten charakteristischen Parameters, der aus dem Fluoreszenzlicht und basierend auf der reflektierenden Nukleinsäuremenge erhalten wird, gezählt werden, und die Pilze unter Verwendung eines zweiten charakteristischen Parameters, der sich von dem ersten charakteristischen Parameter unterscheidet, gezählt werden, wobei der zweite charakteristische Parameter aus dem Fluoreszenzsignal und basierend auf der reflektierenden Nukleinsäuremenge erhalten wird.


     


    Revendications

    1. Analyseur d'échantillon (100) pour analyser un échantillon, comprenant :

    une unité de préparation (30) adaptée pour mélanger un échantillon, un diluant contenant un tensioactif, et un réactif de coloration d'acide nucléique pour préparer un spécimen de mesure dans lequel des acides nucléiques de cellules nucléées sont colorés et des globules rouges sont hémolysés ;

    une unité de détection (50) adaptée pour irradier des particules incluses dans le spécimen de mesure avec une lumière pour recevoir une lumière diffusée et une lumière de fluorescence émises par les particules et délivrer en sortie un signal de détection ; et

    une unité de traitement (13) adaptée pour compter des globules blancs et des champignons dans l'échantillon sur la base du signal de détection, dans lequel

    le signal de détection inclut un signal de fluorescence obtenu à partir de la lumière de fluorescence émise par les particules, et

    l'unité de traitement (13) est adaptée pour compter les globules blancs en utilisant un premier paramètre caractéristique obtenu à partir de la lumière de fluorescence et sur la base de la quantité d'acide nucléique, et compter les champignons en utilisant un second paramètre caractéristique différent du premier paramètre caractéristique, le second paramètre caractéristique étant obtenu à partir du signal de fluorescence et sur la base de la quantité d'acide nucléique.


     
    2. Analyseur d'échantillon (100) selon la revendication 1, dans lequel
    l'unité de traitement (13) est adaptée pour compter des cellules nucléées plus grandes que les globules blancs dans l'échantillon sur la base du signal de détection.
     
    3. Analyseur d'échantillon (100) selon la revendication 1 ou 2, dans lequel
    l'unité de traitement (13) est adaptée pour distinguer les globules blancs et les cellules nucléées plus grandes que les globules blancs dans l'échantillon au moins des champignons et des bactéries dans l'échantillon sur la base du signal de détection pour obtenir une nombre total des globules blancs et des cellules nucléées plus grandes que les globules blancs.
     
    4. Analyseur d'échantillon (100) selon la revendication 1, dans lequel
    le premier paramètre caractéristique est une zone d'impulsion de lumière de fluorescence obtenue à partir du signal de fluorescence, et
    le second paramètre caractéristique est une intensité de lumière de fluorescence obtenue à partir du signal de fluorescence.
     
    5. Analyseur d'échantillon (100) selon la revendication 1 ou 4, dans lequel
    l'unité de détection (50) comprend un circuit d'amplification (22b) adapté pour amplifier des signaux provenant d'un détecteur optique (22a) dans différentes sensibilités de détection,
    l'unité de détection (50) est adaptée pour délivrer en sortie le signal de fluorescence dans une première sensibilité de détection et une deuxième sensibilité de détection supérieure à la première sensibilité de détection, et
    l'unité de traitement (13) est adaptée pour obtenir le premier paramètre caractéristique à partir du signal de fluorescence délivré en sorti dans la première sensibilité de détection, et obtenir le second paramètre caractéristique à partir du signal de fluorescence délivré en sortie dans la deuxième sensibilité de détection.
     
    6. Analyseur d'échantillon (100) selon l'une quelconque des revendications 1 à 5, dans lequel
    l'unité de traitement (13) est adaptée pour classer les globules blancs en leucocytes mononucléaires et leucocytes polynucléaires sur la base du signal de détection.
     
    7. Analyseur d'échantillon (100) selon l'une quelconque des revendications 1 à 6, dans lequel
    l'unité de traitement (13) est adaptée pour compter les bactéries dans l'échantillon sur la base du signal de détection.
     
    8. Analyseur d'échantillon (100) selon la revendication 7, dans lequel
    l'unité de détection (50) est adaptée pour délivrer en sortie le signal de détection en détectant la lumière de fluorescence dans la première sensibilité de détection, la deuxième sensibilité de détection supérieure à la première sensibilité de détection, et une troisième sensibilité de détection supérieure à la deuxième sensibilité de détection, et
    l'unité de traitement (13) est adaptée pour compter les globules blancs en utilisant un paramètre caractéristique du signal de détection délivré en sortie dans la première sensibilité de détection, compter les champignons en utilisant un paramètre caractéristique du signal de détection délivré en sortie dans la deuxième sensibilité de détection, compter les bactéries en utilisant un paramètre caractéristique du signal de détection délivré en sortie dans la troisième sensibilité de détection.
     
    9. Analyseur d'échantillon (100) selon l'une quelconque des revendications 1 à 8, dans lequel
    l'unité de préparation (30) est adaptée pour préparer, à partir d'une partie de l'échantillon, le spécimen de mesure dans lequel les globules rouges sont hémolysés, et mélanger une partie restante de l'échantillon avec un réactif pour préparer un spécimen de mesure non hémolysé dans lequel des globules rouges ne sont pas hémolysés,
    l'unité de détection (50) est adaptée pour irradier des particules incluses dans le spécimen de mesure non hémolysé avec une lumière pour recevoir une lumière diffusée et une lumière de fluorescence émises par les particules et délivrer en sortie un signal de détection, et
    l'unité de traitement (13) est adaptée pour compter des globules rouges dans l'échantillon sur la base du signal de détection obtenu à partir du spécimen de mesure non hémolysé.
     
    10. Analyseur d'échantillon (100) selon la revendication 9, dans lequel
    l'unité de traitement est adaptée pour compter des cristaux dans l'échantillon sur la base du signal de détection obtenu à partir du spécimen de mesure non hémolysé.
     
    11. Analyseur d'échantillon (100) selon l'une quelconque des revendications 1 à 10, dans lequel
    l'analyseur d'échantillon peut fonctionner dans un mode d'analyse d'urine pour analyser un échantillon d'urine et dans un mode d'analyse de fluide corporel pour analyser un échantillon de fluide corporel autre que du sang et de l'urine, et
    l'unité de traitement (13) est adaptée pour classer et compter des particules dans un spécimen de mesure dans le mode d'analyse de fluide corporel pour un élément cible de comptage différent d'un élément cible de comptage dans le mode d'analyse d'urine.
     
    12. Analyseur d'échantillon (100) selon l'une quelconque des revendications 1 à 11, dans lequel
    l'échantillon est un échantillon de fluide corporel autre que du sang et de l'urine, et
    l'unité de traitement (13) est adaptée pour déterminer une méningite, une arthrite, ou une inflammation de la membrane cœlomique sur la base d'un résultat de comptage des particules incluses dans l'échantillon de fluide corporel.
     
    13. Analyseur d'échantillon (100) selon l'une quelconque des revendications 1 à 12, dans lequel
    l'unité de traitement (13) est adaptée pour recevoir une désignation d'un type de l'échantillon à partir d'une pluralité de types et détermine l'inflammation sur la base d'un critère selon le type désigné de l'échantillon.
     
    14. Procédé d'analyse d'échantillon, comprenant :

    un mélange (S504) d'un échantillon, d'un diluant contenant un tensioactif, et d'un réactif de coloration d'acide nucléique pour préparer un spécimen de mesure dans lequel des acides nucléiques de cellules nucléiques sont colorés et des globules rouges sont hémolysés ;

    une irradiation de particules incluses dans le spécimen de mesure pour recevoir une lumière diffusée et une lumière de fluorescence émises par les particules et délivrer en sortie un signal de détection ; et

    un comptage (S802, S803) de globules blancs et de champignons dans l'échantillon sur la base du signal de détection, dans lequel

    le signal de détection inclut un signal de fluorescence obtenu à partir de la lumière de fluorescence émise par les particules, et

    les globules blancs sont comptés en utilisant un premier paramètre caractéristique obtenu à partir de la lumière de fluorescence et sur la base de la quantité d'acide nucléique, et les champignons sont comptés en utilisant un second paramètre caractéristique différent du premier paramètre caractéristique, le second paramètre caractéristique étant obtenu à partir du signal de fluorescence et sur la base de la quantité d'acide nucléique.


     




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    Cited references

    REFERENCES CITED IN THE DESCRIPTION



    This list of references cited by the applicant is for the reader's convenience only. It does not form part of the European patent document. Even though great care has been taken in compiling the references, errors or omissions cannot be excluded and the EPO disclaims all liability in this regard.

    Patent documents cited in the description