BACKGROUND OF THE INVENTION
[0001] Despite significant advances in hemodialysis (HD) technology, the mortality risk
of chronic HD patients remains well above that seen in the general population. The
average remaining life expectancy in the general population is about 4 times higher
than in dialysis patients, and the adjusted rates of all-cause mortality are 6.7 to
8.5 times higher for dialysis patients than in the general population. Cardiovascular
disease and infectious disease are among the leading causes of mortality, and the
overall annual mortality rate in dialysis patients is about 20% in the United States.
See United States Renal Data System, USRDS 2009 Annual Data Report, National Institutes
of Health.
[0002] Current epidemiologic studies seeking to investigate the determinants of mortality
risk in dialysis patients usually consider either cross-sectional baseline characteristics
(
e.g., mean systolic blood pressure in the first 3 months after start of dialysis, serum
albumin levels after 6 months) or time-dependent analyses, most commonly time-dependent
Cox regression models. Patients are frequently stratified into groups based on descriptive
characteristics such as tertiles. In many of these studies, the first date of dialysis
is taken as the reference point.
[0003] Despite such improvements in hemodialysis technology and patient tracking, chronic
hemodialysis patients continue to experience an inordinately high mortality rate.
Therefore, there is a need for an improved method of identifying hemodialysis patients
at increased risk of death, in order to trigger earlier diagnostic and therapeutic
interventions and consequently reduce patient mortality.
SUMMARY OF THE INVENTION
[0004] The present invention is directed to a method of identifying a patient undergoing
periodic hemodialysis treatments at increased risk for death. The method includes
determining serum potassium concentration level, periodically while the patient is
undergoing hemodialysis treatments, and identifying a patient as having an increased
risk for death if the patient has a significant change in the rate of change of at
least one of these clinical or biochemical parameters. A significant change can be
determined by using a statistical method, or defined as a change from a steady level
to an increase or decrease, or a change in character of the rate of change of the
parameter. Identifying the patient as having an increased risk of death is accomplished
within a sufficient lead time to allow for a therapeutic intervention to decrease
the patient's risk of death, followed by a suitable therapeutic intervention.
[0005] The present invention is also directed to a method of identifying an increased mortality
risk factor for a patient undergoing periodic hemodialysis treatment. The method includes
analyzing data of deceased patients that were previously undergoing periodic hemodialysis
treatments by performing a longitudinal analysis backwards in time of changes in a
clinical or biochemical parameter of the patients, and identifying a significant change
in the rate of decline or the rate of increase of one or more clinical or biochemical
parameters before death of the patients.
[0006] The methods of this invention enable physicians and/or other health-care professionals
to initiate timely diagnostic and therapeutic interventions to hemodialysis patients
at increased risk of death and thereby reduce mortality of such patients.
BRIEF DESCRIPTION OF THE DRAWINGS
[0007] The foregoing will be apparent from the following more particular description of
example embodiments of the invention, as illustrated in the accompanying drawings.
The drawings are not necessarily to scale, emphasis instead being placed upon illustrating
embodiments of the present invention.
FIG. 1 is a graph of linear splines of post-dialysis body weight of hemodialysis patients
as a function of time before death; knot point at 12 weeks before death.
FIG. 2 is a graph of linear splines of serum albumin concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 3 is a graph of linear splines of systolic blood pressure of hemodialysis patients
as a function of time before death; knot point at 12 weeks before death.
FIG. 4 is a graph of linear splines of body temperature of hemodialysis patients (age>60
years old at death) as a function of time before death; knot point at 12 weeks before
death.
FIG. 5 is a graph of linear splines of serum bicarbonate concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 6 is a graph of linear splines of serum potassium concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 7 is a graph of linear splines of serum calcium concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 8 is a graph of linear splines of hemoglobin (Hgb) concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 9 is a graph of linear splines of serum phosphorus concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 10 is a graph of linear splines of neutrophil to lymphocyte ratio of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 11 is a graph of linear splines of enPCR of hemodialysis patients as a function
of time before death; knot point at 3 months before death.
FIG. 12 is a graph of linear splines of eKdrt/V of hemodialysis patients as a function
of time before death; knot point at 3 months before death.
FIG. 13 is a graph of linear splines of EPO resistance index of hemodialysis patients
as a function of time before death; knot point at 3 months before death.
FIG. 14 is a graph of linear splines of transferrin saturation index of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 15 is a graph of linear splines of serum ferritin concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 16 is a graph of linear splines of serum creatinine concentration levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
FIG. 17 is a graph of linear splines of platelet counts of hemodialysis patients as
a function of time before death; knot point at 3 months before death.
FIG. 18 is a graph of linear splines of Aspartat-Aminotransferase (AST) levels of
hemodialysis patients as a function of time before death; knot point at 3 months before
death.
FIG. 19 is a graph of linear splines of Alanin-Aminotransferase (ALT) levels of hemodialysis
patients as a function of time before death; knot point at 3 months before death.
DETAILED DESCRIPTION OF THE INVENTION
[0008] The present invention is directed to a method of identifying a patient at increased
risk for death when the patient is undergoing periodic hemodialysis treatments. The
method includes determining at least one of the patient's clinical or biochemical
parameters associated with an increased risk of death, consisting of serum potassium
concentration at periodic hemodialysis treatments. The patient is identified as having
an increased risk for death if the patient has a significant change in the rate of
change of at least one of these clinical or biochemical parameters. A significant
change can be determined by using a statistical method, such as using Student's
t as the test statistic (
e.g., p<0.05), or defined as a change from a steady level (
e.g., no significant deviation form an average of the measured levels) to an increase
or decrease, or a change in character (
e.g., a change from increase to decrease or
vice versa, or a change from a steady level to increase or decrease) in the rate of change of
the at least one clinical or biochemical parameter. The measurement of at least one
of these clinical or biochemical parameters includes the measurement of any combination
of them. In a preferred embodiment, a determination that the rate of change of a clinical
or biochemical parameter of the patient has changed character is employed to identify
a patient at increased risk of death.
[0009] The method is applied to a patient that is undergoing periodic hemodialysis treatments.
Typically, periodic hemodialysis treatments are performed several days apart, for
example, three times per week. The time period between treatments is not necessarily
constant, however, because, for example, the patient can receive treatment after a
shorter time period since the last treatment if the patient needs to shed excess fluid.
The time period between treatments can be longer because of, for example, missed treatments
or an illness acquired since the last treatment.
[0010] The methods of this invention apply to human patients that are undergoing hemodialysis
treatment. The hemodialysis treatment of the patient is a treatment that replaces
or supplements the normal function of the kidneys of a patient, due to the patient
having a disease or condition that affects kidney function such as, for example, renal
insufficiency, renal failure, or kidney disease.
[0011] The measurements of the patient's systolic blood pressure, serum albumin concentration
level, body weight, body temperature, serum bicarbonate concentration level, serum
potassium concentration level, serum calcium concentration level, hemoglobin concentration
level, serum phosphorus concentration level, neutrophil to lymphocyte ratio, equilibrated
normalized protein catabolic rate (enPCR), equilibrated fractional clearance of total
body water by dialysis and residual kidney function (eKdrt/V), Erythropoietin (EPO)
resistance index, transferrin saturation index (TSAT), serum ferritin concentration
level, serum creatinine concentration level, platelet count, Aspartat-Aminotransferase
level, and Alanin-Aminotransferase level are obtained using methods well known in
the art. The measurements of the aforementioned clinical or biochemical parameters
can be performed either before or after each hemodialysis treatment, or both, or only
performed after a certain time period, or at every certain number of treatments, or
at irregular intervals. For example, the measurement of systolic blood pressure is
usually taken before each treatment, but can also be taken after each treatment, or
both before and after each treatment. The measurement of serum albumin concentration
level is usually taken once a month, but can also be taken more often. The measurement
of body weight is usually taken before each treatment, but can also be taken after
each treatment. The measurement of body temperature is preferentially taken before
each treatment, but can also be taken after each treatment. Of course, the measurements
of the patient's clinical and biochemical parameters could also be taken between hemodialysis
treatments.
[0012] The importance of determining a significant change in the rate of change of the patient's
systolic blood pressure, serum albumin concentration level, body weight, body temperature,
serum bicarbonate concentration level, serum potassium concentration level, serum
calcium concentration level, hemoglobin concentration level, serum phosphorus concentration
level, neutrophil to lymphocyte ratio, equilibrated normalized protein catabolic rate
(enPCR), equilibrated fractional clearance of total body water by dialysis and residual
kidney function (eKdrt/V), Erythropoietin (EPO) resistance index, transferrin saturation
index (TSAT), ferritin, serum creatinine concentration level, platelet count, Aspartat-Aminotransferase
level, and Alanin-Aminotransferase level was uncovered by focusing specifically on
the time-course of these clinical or biochemical parameters before death in a large
sample of hemodialysis patients. In this analysis, the reference point for the analysis
was the patient's date of death, and the analysis looked back in time from that point,
in order to uncover what changes in clinical or biochemical parameters preceded demise.
This retrospective record review included a data set of 2,462 in-center maintenance
HD patients who expired between July 1, 2005 and April 30, 2008. Patients' monthly
serum albumin concentration levels were compiled for the 24 months preceding the date
of death. Similarly, the median weekly post-dialysis weight was compiled for the 104
weeks prior to death. Causes of death (COD), recorded using ICD-9 codes, were retrieved
from patient record sheets.
See The International Classification of Diseases, 9th Revision, Clinical Modification,
(ICD-9-CM), National Center for Health Statistics and Centers for Medicare & Medicaid
Services (2007). Three broad COD categories (cardiovascular, cerebrovascular, and infectious) were
included in the analyses. Going back in time allowed an analysis of events occurring
in the days, weeks, and months prior to demise. This is, in principle, a longitudinal
data analysis backwards in time with death as the common end point. The defining feature
of such a longitudinal analysis is that measurements of the same individual are taken
repeatedly over time, thereby allowing the direct study of change over time. Measurement
variability stems from three sources: between-subject heterogeneity, within-subject
variability, and (random) measurement errors. With repeated measurements available,
the individual patients' changes in responses over time can be studied. In addition,
the mean response of a group of parameters (for example, gender, race, co-morbidities)
can be modeled.
[0013] The longitudinal analysis of patient clinical or biochemical parameters was conducted
using linear mixed effects models (LMMs). LMMs form a broad class of models which
handle longitudinal data in a very general setting (
e.g., the data can be unbalanced and mis-timed).
See G. M. Fitzmaurice, N. M. Laird, and J. H. Ware, Applied Longitudinal Analysis, (2004). In the LMMs employed, individual patient effects can be separated from population
effects by treating the individual effects as random, while the population effects
are regarded as fixed; the full model combines the random and the fixed effects. A
powerful result is that subject response trajectories can be estimated in addition
to the population response trajectory. In this application, a random intercept model
was used. In this model, each subject has a distinct level of response which persists
over time. The patient serves as his or her own control insofar as the dynamics between
observed time periods are compared. To determine which random effects should be included
in the models, the Bayesian information criterion (BIC) was used; this measure rewards
a model with higher explanatory power, while penalizing for the inclusion of additional
parameters. In this data analysis, the data were fit by linear spline functions, because
these simple parametric curves can provide a parsimonious description of longitudinal
trends.
See D. Ruppert, M. P. Wand, and R. J. Carroll, Semiparametric Regression, (2003). Linear spline functions with a knot point at 12 weeks before death were employed
for systolic blood pressure, body weight, and body temperature. A knot point is the
point in time where two spline functions intersect. The choice of the location for
the knot point is important with this kind of analysis. The knot point (12 weeks before
death) was chosen by separating the data into two sets for processing, one data set
including all the data up to 12 weeks before death, and the other data set including
the data from 12 weeks before death to the patient's demise. The knot point (12 weeks
before death) was chosen for the following reasons: (a) based on pilot descriptive
data analysis which revealed an accelerated deterioration of body weight in the 12
weeks preceding death, and (b) because it was deemed that a lead time of 12 weeks
was probably sufficient to intervene in many patients.
[0014] The time point chosen as the knot point generally depends on the clinical or biochemical
parameter being analyzed, to provide sufficient time for an effective diagnostic or
therapeutic patient intervention. The knot point was chosen at 3 months for the other
clinical or biochemical parameters discussed below, because the measurements of those
parameters are typically obtained at one month intervals.
[0015] Turning now to FIG. 1, the results for post-dialysis body weight, typically measured
in kg, are shown for the data set. Four groups of dialysis patients, black and white
males and females, all showed an increase in the rate of decrease of post-dialysis
body weight in the final 12 weeks of life, from about 0.03 kg/week to over about 0.1
kg/week. Therefore, in this study, for post-dialysis body weight, the rate of decrease
increased by a factor of about 3 in the final 12 weeks of life.
[0016] Turning now to FIG. 2, the results for serum albumin concentration levels, typically
measured in g/dL, are shown for the data set. The four groups of dialysis patients
showed an increase in the rate of decline of serum albumin levels in the final 3 months
of life, from about 0.008 g/dL/month to over about 0.08 g/dL/month. Therefore, in
this study, for serum albumin levels, the rate of decrease increased by a factor of
about 10 in the final 3 months of life.
[0017] Turning now to FIG. 3, in a separate study of 1,799 hemodialysis patients, it was
found that the average pre-dialysis systolic blood pressure of patients, typically
measured in mmHg, showed an increase in the rate of decrease in the final 12 weeks
of life, from about 0.16 mmHg/week to about 0.56 mmHg/week. Therefore, in this study,
for pre-dialysis systolic blood pressure, the rate of decrease increased by a factor
of about 3 in the final 12 weeks of life.
[0018] Turning now to FIG. 4, in another study of hemodialysis patients over 60 years old
at death, it was found that the pre-dialysis body temperature of patients, typically
measured in °C, showed an increase in the rate of decline in the final 12 weeks of
life, from about 0.00017 °C/week to about 0.0012 °C/week. Therefore, in this study,
for body temperature, the rate of decrease increased by a factor of about 7 in the
final 12 weeks of life.
[0019] Turning now to FIG. 5, in another study of hemodialysis patients, it was found that
the serum bicarbonate concentration levels of patients, typically measured in mmol/L,
showed an increase in the rate of increase in the final 3 months of life, from about
0.040 mmol/L/month to about 0.101 mmol/L/month. Therefore, in this study, for serum
bicarbonate level, the rate of increase increased by a factor of over 2 in the final
3 months of life. Bicarbonate is a crucial component of the body's acid-base metabolism.
Higher bicarbonate concentration levels may point toward a metabolic alkalosis, which
could be caused by reduced ingestion of protein.
[0020] Turning now to FIG. 6, it was found that the serum potassium concentration levels
of patients, typically measured in mmol/L, showed a change in the rate of change in
the final 3 months of life, from an increase of about 0.003 mmol/L/month to a
decrease of about 0.033 mmol/L/month. Therefore, in this study, for serum potassium concentration
level, the rate of change altered character (from increase to decrease) in the final
3 months of life. Potassium is crucial for the electrical potential of cells. A decrease
in potassium concentration is seen with poor nutrition and with metabolic alkalosis.
[0021] Turning now to FIG. 7, it was found that the serum calcium concentration levels of
patients, typically measured in g/dL, showed a change in the rate of change in the
final 3 months of life, from a steady level to a significant decrease of about 0.049
g/dL/month. Therefore, in this study, for serum calcium concentration level, the rate
of change significantly increased in the final 3 months of life. Calcium is an essential
component for muscle contraction. A decrease in total calcium concentration is seen
with a decrease in serum albumin concentration levels.
[0022] Turning now to FIG. 8, it was found that the hemoglobin (Hgb) concentration levels
of patients, typically measured in g/dL, showed a change in the rate of decrease in
the final 3 months of life, from a decrease of about 0.014 g/dL/month to a decrease
of about 0.123 g/dL/month. Therefore, in this study, for hemoglobin concentration
level, the rate of decrease increased by a factor of about 8 in the final 3 months
of life. Hemoglobin concentration levels describe the degree of anemia. A decrease
in hemoglobin concentration level is associated with inflammation, bleeding, or iron
deficiency.
[0023] Turning now to FIG. 9, it was found that the phosphorus concentration levels of patients,
typically measured in mg/dL, showed a change in the rate of decrease in the final
3 months of life, from a decrease of about 0.012 mg/dL/month to a decrease of about
0.072 mg/dL/month. Therefore, in this study, for phosphorus concentration level, the
rate of decrease increased by a factor of about 6 in the final 3 months of life. Phosphorus
is a surrogate for nutritional intake of protein and an important component of bone
and mineral metabolism.
[0024] Turning now to FIG. 10, it was found that the neutrophil to lymphocyte ratio of patients,
a dimensionless number, showed a change in the rate of increase in the final 3 months
of life, from a increase of about 0.042 per month to a increase of about 0.381 per
month. Therefore, in this study, for neutrophil to lymphocyte ratio, the rate of increase
increased by a factor of about 9 in the final 3 months of life. The neutrophil to
lymphocyte ratio increases with inflammation.
[0025] Turning now to FIG. 11, it was found that the enPCR of patients, typically measured
in g/kg body weight/day, showed a change in the rate of decrease in the final 3 months
of life, from a decrease of about 0.003 per month to a decrease of about 0.023 per
month. Therefore, in this study, for enPCR, the rate of decrease increased by a factor
of about 7 in the final 3 months of life. The enPCR is an estimate of daily protein
intake.
[0026] Turning now to FIG. 12, it was found that the eKdrt/V of patients, a dimensionless
number, showed a change in the rate of decrease in the final 3 months of life, from
a steady level to a decrease of about 0.017 per month. Therefore, in this study, for
eKdrt/V, the rate of decrease significantly increased in the final 3 months of life.
The eKdrt/V is a measure of the clearance of urea and other low-molecular weight unbound
solutes, taking the dialytic and renal component into account.
[0027] Turning now to FIG. 13, it was found that the EPO resistance index of patients, typically
measured in U/kg body weight per week, showed a change in the rate of increase in
the final 3 months of life, from an increase of about 0.145 per month to an increase
of about 1.169 per month. Therefore, in this study, for EPO resistance index, the
rate of increase increased by a factor of about 8 in the final 3 months of life. A
high EPO resistance index is an indication of inflammation.
[0028] Turning now to FIG. 14, it was found that the transferrin saturation index (TSAT)
of patients, typically measured in %, showed a change in the rate of decrease in the
final 3 months of life, from a decrease of about 0.059% per month to a decrease of
about 0.419% per month. Therefore, in this study, for transferrin saturation index,
the rate of decrease increased by a factor of about 7 in the final 3 months of life.
A low TSAT is seen with iron deficiency or inflammation.
[0029] Turning now to FIG. 15, it was found that the serum ferritin concentration levels
of patients, typically measured in ng/mL, showed a change in the rate of increase
in the final 3 months of life, from an increase of about 7.018 ng/mL/month to an increase
of about 77.162 ng/mL/month. Therefore, in this study, for ferritin concentration
level, the rate of increase increased by a factor of about 11 in the final 3 months
of life. A high serum ferritin concentration level is indicative of inflammation.
[0030] Turning now to FIG. 16, it was found that the serum creatinine concentration levels
of patients, typically measured in mg/dL, showed a change in the rate of decrease
in the final 3 months of life, from a decrease of about 0.010 mg/dL/month to a decrease
of about 0.215 mg/dL/month. Therefore, in this study, for serum creatinine concentration
level, the rate of decrease increased by a factor of about 21 in the final 3 months
of life. A decrease in serum creatinine concentration level is indicative of a loss
of muscle mass.
[0031] Turning now to FIG. 17, it was found that the platelet count of patients, typically
measured in 1000 per µL of blood, showed a change in the rate of increase in the final
3 months of life, from an increase of about 0.030 per month to an increase of about
4.361 per month. Therefore, in this study, for platelet count, the rate of increase
increased by a factor of about 145 in the final 3 months of life. An increase in platelet
count is seen in inflammation.
[0032] Turning now to FIG. 18, it was found that the Aspartat-Aminotransferase (AST) level
of patients, typically measured in U/L, showed a change in the rate of increase in
the final 3 months of life, from an increase of about 0.007 per month to an increase
of about 1.585 per month. Therefore, in this study, for Aspartat-Aminotransferase
level, the rate of increase increased by a factor of about 226 in the final 3 months
of life. An increase in Aspartat-Aminotransferase level is seen in liver and muscle
disorders.
[0033] Turning now to FIG. 19, it was found that the Alanin-Aminotransferase (ALT) level
of patients, typically measured in U/L, showed a change in the rate of change in the
final 3 months of life, from a decrease of about 0.088 per month to an
increase of about 1.270 per month. Therefore, in this study, for Alanin-Aminotransferase level,
the rate of change showed a change in character (from decrease to increase) in the
rate of change in the final 3 months of life. An increase in Alanin-Aminotransferase
level is seen in liver and muscle disorders.
[0034] There are a number of other clinical or biochemical parameters that can be used to
identify a hemodialysis patient at increased risk of death. Generally, these parameters
can be grouped into four domains, the cardiovascular, nutrition, inflammatory, and
anthropometric domains. Examples in the cardiovascular domain include the diastolic
and mean blood pressure, and the pulse pressure (systolic blood pressure minus diastolic
blood pressure) and heart rate. Examples in the inflammatory domain include the IL-6
level, and the C-reactive protein level. Examples in the anthropometric domain include
body mass index and body composition indices.
[0035] An "alert" level, notifying a physician that a patient is at increased risk of death,
can be established by detecting a substantial change in the rate of decline or the
rate of increase of at least one of the clinical and biochemical parameters discussed
above, or any combinations of them. The substantial change that triggers a physician
notification can a substantial change in the same direction, that is, a substantial
increase in the rate of increase or a substantial decline in the rate of decline,
or, alternatively, a substantial change in the opposite direction (e.g., a decrease
in the serum potassium concentration level, or an increase in the Alanin-Aminotransferase
level).
[0036] When a patient is "alert" flagged, certain diagnostic procedures can be triggered.
These includes, but are not limited to: 1) the taking of a thorough history and physical
examination with the specific aim to search for cardiovascular, inflammatory, and
infectious conditions, 2) blood tests, including C-reactive protein (CRP), albumin,
red and white cell blood counts, troponin, blood cultures, 3) echocardiogram, electrocardiogram,
4) chest x-ray, 5) imaging, in particular ultrasound, computer tomography and /or
magnetic resonance imaging, 6) endoscopy, and 7) bacterial cultures and swabs.
[0037] Three broad categories of diagnoses can account for > 80% of all diagnoses: cardiovascular
disease (especially congestive heart failure (CHF) and coronary artery disease (CAD)),
inflammation, and infection.
[0038] In cases of CHF and/or CAD, therapeutic interventions include but are not limited
to: strict volume control, which includes avoidance of intradialytic administration
of sodium and sodium loading via the dialysate, dietary salt intake below 6 g/day,
increased dialysis frequency, drug therapy (angiotensin converting enzyme inhibitors
(ACEI), angiotensin receptor blockers (ARB), beta blockers (BB)), lipid lowering drugs,
replacement of deficient hormones, valve repair, and percutaneous transluminal coronary
angioplasty.
[0039] In cases of inflammation without evidence of infection, therapeutic interventions
include but are not limited to: removal of in-dwelling lines and catheters, therapy
with anti-inflammatory drugs, broad spectrum antibiotic therapy, treatment of periodontal
disease, and removal of rejected transplants and non-functioning vascular access.
[0040] In cases of infection, therapeutic interventions include but are not limited to:
antibiotic therapy, mechanical and chemical debridement, and removal of in-dwelling
lines and catheters.
[0041] In all "alert" flagged patients a comprehensive nutritional assessment is usually
warranted. In cases of poor nutritional status, therapeutic interventions can include
but are not limited to intradialytic parenteral nutrition and oral supplements.
[0042] All of the previously described diagnostic and therapeutic interventions on patients
are more effective with earlier identification that the hemodialysis patient is at
an increased risk of death, with 12 weeks or 3 months of lead time being sufficiently
early for an effective intervention.
[0043] While this invention has been particularly shown and described with references to
preferred embodiments thereof, it will be understood by those skilled in the art that
various changes in form and details may be made therein without departing from the
scope of the invention encompassed by the appended claims.