Introduction
Cancer incidence and mortality increase dramatically
with increasing age. In addition, cancer incidence and mortality rates
in the elderly have increased considerably over the past four decades.
Interest has developed in the evaluation of the economic outcomes of cancer
care in addition to traditional clinical outcomes. Both intermediate and
ultimate outcome measures of clinical and economic interest are available.
Survival and life expectancy, along with quality-adjusted life years, represent
useful measures of clinical outcome. Health care costs should consider
direct, indirect, and intangible costs. Direct medical expenditures include
both institutional and professional costs as well as the costs of drugs
and home care. Decision analytic models represent one of the most valuable
types of economic analyses permitting simultaneous assessment of both clinical
and economic outcomes with or without quality-of-life adjustment. Cost-effectiveness
analysis utilizes both survival and cost measures, while cost-utility analysis
considers quality-adjusted survival and cost. Such models permit evaluation
of the tradeoffs between clinical benefit and harm or cost among elderly
patients with cancer. Further studies of the cost-effectiveness of cancer
care in the elderly should lead to an increase in our understanding of
the effectiveness as well as the costs associated with the management of
cancer in the elderly. An examination of the scope of clinical and economic
outcome measures pertinent to patients with cancer is worthwhile for a
number of reasons. First, physicians may not appreciate some outcomes that
are relevant to both patient care and health policy. Second, there is increasing
emphasis on more objective measures related to clinical and economic outcomes.
Finally, these outcome measures illustrate techniques in economic assessment
including the powerful method of decision analysis that may assist both
physicians and admin-istrators in providing optimal patient care.
Cancer in the Elderly
Cancer Rates
More than 550,000 Americans will die of invasive
cancer in 1998, of which approximately two thirds will be individuals 65
years of age and over.1 Cancer incidence and mortality rates
increase dramatically with age and increase more rapidly in men than in
women.2 Over the past four decades, age-adjusted cancer mortality
rates have increased by 10% in the United States from 158 per 100,000/
year in 1950 to 174 per 100,000/ year in 1990.2 During this
time period, cancer incidence increased by 26% and cancer mortality by
15% in those age 65 years and over compared with a 10% increase in cancer
incidence and a 5% decrease in mortality among those less than 65 years
of age.2 The cumulative probability of developing cancer from
birth to death based on current cancer incidence rates is 46.6% in men
and 38.0% in women.1 Most of the cumulative risk occurs between
60 and 80 years of age where the probability of developing cancer is 36.4%
in men and 22.5% in women.
Cancer Types
The leading types of cancer associated with mortality
in the elderly are those of the lung, colon, prostate, and breast.3
The greatest increase in mortality rates over the past four decades among
those age 65 years and older has been observed for lung cancer in women
(200%), central nervous system malignancies (67%), malignant mel-anoma
(65%), and non-Hodgkins lymphoma (49%). Lesser increases in mortality
in this age group have been observed for multiple myeloma (37%), lung cancer
in men (34%), esophageal cancer (25%), renal cell carcinoma (25%), and
prostate cancer (21%).2 Age-specific cancer mortality rates
for men age 65 and above are approximately double the corresponding rates
for women.
The Cost of Cancer Care
Total Health Care Expenditures
Data available from the US Health Care Financing
Administration show that total health care expenditures in the United States
now exceed $1 trillion annually, representing a tenfold increase since
the 1970s.4 Current expenditures are equivalent to 14% of the
gross domestic product, and one half of these health care expenditures
are for individuals age 65 and over.
Cancer Care Expenditures
Approximately 10% of health care expenditures in
the United States -- approximately $100 billion annually -- is spent on
cancer care. More than 90% of direct medical costs for cancer care is associated
with the following cancer types: breast (24%), colorectal (24%), lung (18%),
prostate (17%), and bladder (8%).4 Table 1 compares US direct
health care expenditures for cancer care to that for all health care. Nearly
two thirds of direct health care expenditures for cancer care is for hospital
care, while one fourth of expenditures is for physician services. The remaining
10% includes the cost of drugs and home health care.
Table 1. -- US Direct Health Care Expenditures |
| |
Cancer |
All Health Care |
Hospital care |
65.2% |
49.0% |
Physician services |
24.1% |
24.5% |
Drugs |
3.9% |
10.5% |
Nursing home care |
4.9% |
10.1% |
Other professional services |
1.9% |
5.8% |
| |
| Source: National Center for Health Statistics,
1990. |
Distribution of Cancer Costs
The distribution of health care costs for cancer
care is not uniform over the natural history of the disease.5,6
Cancer care costs are greatest during the first six months following diagnosis
at the time of disease staging, primary treatment, and adjunctive therapy.
The next greatest period of cost is during the six months prior to death
in those who develop recurrent disease. Paradoxically, the greatest total
cost is associated with the diagnosis of early-stage disease due to the
long survival and lengthy course of follow-up. Alternatively, the greatest
average annual cost is seen in patients diagnosed with advanced disease
who often receive continuous and varied palliative treatments.
Health Care Outcome Measures
Clinical Outcomes
Health care outcomes of importance include both clinical
and economic measures. Effectiveness is the measurement of the outcome
of cancer treatment in the population. This must be distinguished from
efficacy, which represents the outcome apparent in a sample of the
population in the framework of a clinical trial. As shown in Table 2, health
care outcomes may be assessed utilizing both intermediate or ultimate outcomes
as well as those that combine clinical and economic measures. Intermediate
outcome measures are of value because of their rapid measurement and ready
availability as well as their general association with the ultimate outcome
of interest. Unfortunately, such intermediate measures do not always predict
ultimate outcome, therefore limiting their value. Clinical outcomes may
be expressed in terms of either quantity or quality.
Table 2. --
Cancer Outcome Measures |
| Outcomes |
Clinical Measures: |
Economic Measures |
| Quantity |
Quality |
Intermediate |
Response |
Toxicity |
Charges |
Ultimate |
Survival |
Quality of life |
Direct costs |
Life expectancy |
QALY* |
Indirect costs |
Combined |
Cost-effectiveness |
Cost-utility |
Cost-benefit |
| |
| *Quality-adjusted life years. |
| From Lyman and Kuderer.21
Reproduced with permission. |
Quantitative Outcomes: Quantitative
clinical outcome measures include intermediate measures such as objective
tumor response, duration of response, or the time to progression of disease.
The most commonly utilized meas-ure of ultimate clinical outcome is survival.
Survival may be measured as overall survival, relative survival
(where other causes of death are ignored), or disease-free survival
(where both death and recurrence are considered adverse events). An alternative
ultimate measure of clinical outcome is life expectancy or the average
number of years of life remaining at a given age. The life expectancy from
birth for both men and women in the US population is shown in Fig 1. Currently,
a 65-year-old individual has an average of between 15 and 19 years of life
remaining (Table 3). As can be seen, life expectancy from birth has increased
progressively since the turn of the century.
Table 3. --
Average Additional Life-Years From Age 65 |
| Year of Birth |
Men |
Women |
1900 |
11 |
12 |
1920 |
12 |
13 |
1940 |
12 |
14 |
1970 |
13 |
17 |
1990 |
15 |
19 |
Under conditions associated with a constant mortality
rate over time, survival can be approximated by an exponential survival
function. The requirement for a relatively constant mortality rate is often
satisfied in patients with serious chronic diseases such as advanced cancer.
When satisfied, the exponential survival function offers several attractive
features for outcome measurement. The overall mortality rate is the sum
of the age-specific mortality rate and the disease-specific mortality rates.
The latter can be considered as the sum of the mortality rates associated
with a specific type and stage of cancer and the rates associated with
any comorbid diseases (heart disease, diabetes, etc). The life expectancy
of a population whose survival is described by a declining exponential
function is the reciprocal of the mortality rate.7 Such a process
is therefore referred to as the declining exponential approximation of
life expectancy (DEALE).
Qualitative Outcomes: There is increasing
interest in assessing the quality of clinical outcomes and adjusting the
duration of estimated survival for the perceived quality of that time.
Quality of life is a subjective concept, however, and its measurement is
associated with both technical and conceptual difficulties. The factors
that contribute to quality of life obviously constitute multiple dimensions
or aspects of human existence. Crude measures of disease symptoms and treatment-related
toxicity have been utilized by clinicians in assessing outcome from clinical
trials. More sophisticated and valid measures of quality of life have been
developed based on both psychosocial theory and decision theory. Multidimensional
measures in the form of general as well as cancer-specific scales have
been developed in an effort to assess the dimensions of quality of life.
Table 4 provides a listing of the major quality-of-life dimensions described
by Cella and his colleagues.8
Table 4. -- Major
Quality of Life Dimensions* |
Physical concerns (symptoms) |
Functional ability |
Family well-being |
Emotional well-being |
Treatment satisfaction |
Sexuality/intimacy |
Social functioning |
| |
*A global evaluation of QOL or total
score is also given. From Cella.8 |
Due to the difficulty in achieving agreement concerning
the components of quality-of-life measures and their respective importance,
more global measures of patient preference for a given clinical outcome
may be sought.9,10 Patient preferences are commonly measured
as utilities along a scale from 0 (death) to 1 (full health). Such utilities
permit an adjustment of the time spent in a given health outcome state.
One tool used to measure patient preferences is willingness to pay
to avoid or achieve a certain outcome. Willingness to pay has serious limitations
as an outcome measure in that it not only requires the translation of clinical
outcomes into monetary units, but also depends on an individuals ability
to pay. Various time trade-off methods have also been studied. The
time in years of full health that is considered by the patient to be equivalent
to the actual time in the diseased state is referred to as quality-adjusted
life years (QALY). Quality of life may change over time depending on
the basis of the disease state and accompanying treatment. Gelber et al11
have utilized a measure termed quality-adjusted time without symptoms
of disease or toxicity of treatment (Q-TWIST). Q-TWIST sums the product
of the utility of a given state and the time spent in it over all health
states (Fig 2).
Economic Outcomes
Economic outcomes can also be expressed as intermediate
outcomes such as charges or generated revenues. The ultimate economic outcome
of interest is generally that of cost. As important as costs are to evaluating
health care outcome, they are multifactorial and often difficult to measure.12,13
Appropriate cost analysis depends on the perspective of the evaluation
that can vary greatly from the viewpoint of the patient and family, the
hospital, the physician, the third-party payor, or society as a whole.
Cost-to-charge ratios based on reference data and measured charges
are often used to estimate cost. Although such ratios may be relatively
constant in certain settings, charges often have an inconsistent relationship
to the costs of care. Therefore, the measurement of actual costs remains
the goal of most economic analyses.
Health Care Costs: Health care costs
can be divided into direct, indirect, and intangible costs. Direct health
care costs include both medical and nonmedical expenditures. Direct
medical costs represent the costs of providing medical services for
the prevention, diagnosis, treatment, follow-up, rehabilitation, and palliation
of disease. Direct nonmedical costs represent additional expenditures
incurred while receiving medical care such as transportation costs, daycare,
etc. Indirect health care costs include those associated with the
morbidity of illness and treatment and the economic impact of death from
disease or treatment. Morbidity costs include the economic value
of days of work lost due to illness. Mortality costs include the
value of the economic output lost because of premature death. Such indirect
costs are difficult to measure and require various assumptions about future
economic productivity. Even more difficult to measure are the intangible
costs associated with pain and suffering and loss of companionship.
Meas-uring such costs again represents efforts to assess the impact of
the disease or its treatment on the patients quality of life. It is often
difficult to express such concerns in monetary terms. Due to the difficulty
in assessing indirect and intangible costs, most economic analyses focus
on the measurement of direct medical expenditures.
Direct Medical Costs: Direct medical
costs represent the most accessible of economic measures and are generally
divided into institutional, professional, drug, and home health care costs.14
In an effort to measure the total operational costs of an institution,
both direct and indirect institutional expenses may be considered.
Direct institutional expenses are those related to the direct care
of a patient and for which a charge may be generated, such as the nursing
care unit, pharmacy, blood bank, radiology, or laboratory.15
Indirect institutional expenses are those costs that only indirectly
impact on patient care and for which a charge is not generated, such as
administration, engineering, and housekeeping. A major challenge in estimating
operational costs of illness involves the process of allocation of the
indirect expenses of the nonrevenue-generating support services to the
revenue-generating service units in proportion to the expenditure of time
and the utilization of resources. An accurate estimation of institutional
operating expenses devoted to cancer care requires allocation of such indirect
costs to revenue-generating services and ultimately to the level of specific
diagnoses and procedures.
Health Care Outcomes in the Elderly: Some
specific issues must be considered when measuring health care outcomes
in the elderly. Management decisions in the elderly must consider the greater
age-specific mortality rates resulting in more limited life expectancy
with increasing age. The limited treatment responsiveness of many malignancies
affecting the elderly must also be considered. In assessing quality-of-life
considerations, differences in drug metabolism and organ tolerance may
increase treatment-related toxicity. Elderly patients are also more likely
to have comorbid conditions that can decrease quality of life, increase
toxicity, and further reduce life expectancy. While economic measures are
fundamentally the same in older and younger patients, the greater potential
for comorbidity as well as the limited resources and dependence on fixed
incomes among the elderly should always be kept in mind.
Economic Analysis
Economic analyses must consider both the clinical outcome
and the economic outcome of interest.
16 Economic analyses are
useful when a management strategy is associated with the same or better
outcome but at a higher cost or when it is associated with a lower cost
but a worse outcome. In the first situation, the most efficient strategy
will be the one with the lowest cost per unit of benefit, while in the
latter approach, the most efficient strategy will be the one with the greatest
benefit per unit cost. Types of economic analyses include administrative
data sets based on the type of health care payor and retrospective studies
of specific populations. There is also increasing interest in retrospective
or prospective economic analyses in association with controlled clinical
trials. Finally, economic analyses may involve the incorporation of available
data into decision analytic models.
Clinical Decision Models
Decision analytic models are valuable methods of economic
analyses.17 Clinical decision models require explicit specification
of the clinical problem or question in the form of a decision tree where
each branching point represents a decision or chance event and the leaves
represent endpoints or outcomes. Decision models must also specify the
outcome probabilities and the values of those outcomes.18 Decision
models can be analyzed in a variety of ways. Perhaps the most straightforward
approach is the estimation of the expected value of each decision
choice by the process of folding back. This involves multiplying the assigned
outcome values of each branch by the probability of that outcome and then
summation over all branches of the immediately preceding chance event.
The sum represents the expected value of that branch, which now represents
the outcome value, and the process continues. When a decision point is
reached, the approach associated with the greatest expected value or the
lowest expected cost is the preferred choice.
Sensitivity Analysis: Perhaps the greatest
strength of decision models of clinical problems is the ability to vary
the assumptions related to model structure, probabilities or outcome values
over a range of reasonable possibilities in a process termed sensitivity
analysis. Such analyses also allow one to estimate the threshold
at which the expected value of the decision choices are exactly the same.
Decision analysis is particularly suited to economic evaluation by allowing
simultaneous consideration of both clinical and economic outcomes in the
form of a cost-effectiveness analysis. Decision analytic models
also permit the incorporation of quality-of-life considerations or utilities
in the form of a cost-utility analysis.
Combined Outcome Measures: Cost-effectiveness
and cost-utility analyses combine clinical and economic outcomes on the
basis of cost and effectiveness or utility.19 Cost-effectiveness
analysis measures the added clinical benefit (marginal benefit)
and the added cost (marginal cost) of one strategy over the other.
These two measures are then combined into a summary measure that can be
based on either cost or effectiveness. Cost-based analyses compare management
strategies on the basis of the cost for each unit of benefit, eg, cost
in dollars per year of life gained (marginal cost-effectiveness).
Effectiveness-based analyses compare management strategies on the basis
of effectiveness for each unit cost, eg, years of life gained per dollar.
In cost-utility analysis, quality of life is considered by assigning a
utility value to each outcome state or estimation of quality-adjusted life
years (QALYs). By measuring the added quality-adjusted benefit (marginal
benefit) and the added cost (marginal cost) of an intervention, the cost
per unit of quality-adjusted clinical benefit can be estimated (marginal
cost-utility). Where appropriate, these values may be summed after weighting
by the time spent in each outcome state. It must be noted that the summary
measures of cost-effectiveness and cost-utility analyses are marginal outcome
measures. Such marginal measures represent the incremental change in benefit
with each unit change in cost, but they do not reflect the absolute benefit
or cost that should also be assessed in any meaningful economic analysis.20
A strategy may appear superior in terms of cost-effectiveness or cost-utility
and yet have substantially lower absolute effectiveness or utility. It
is important, therefore, to assess absolute as well as marginal measures
of benefit and cost in such analyses.
Cost Discounting: It may be necessary
or appropriate to adjust changes in the cost or benefit measures for changes
that occur over time. Cost discounting generally involves the adjustment
of costs for the common preference of delaying present costs to the future.
Future benefits may also be adjusted to the present based on the usual
preference for immediate benefit.21
Decision Analyses in the Elderly
Clinical decision analyses are of particular use in
evaluating management strategies in the elderly. Such decisions involve
the consideration of several issues of importance to the elderly patient
with cancer. Cost-effectiveness analysis permits an evaluation of the trade-off
between what is best for the patient (such as greater life expectancy or
quality of life) and what is best for society (such as lower cost). For
an individual patient, such analyses permit both an evaluation of what
is most effective and what is least harmful as well as a distinction between
the harmful effects of the disease and the toxicity of treatment.
22
Several factors of importance to the elderly cancer
patient must be considered in any cost-effectiveness analysis. The greater
prevalence of cancer, which increases rapidly with age, yields a higher
predictive value for any positive screening or diagnostic test. The types
of cancer that affect the elderly are often ones that benefit the most
from early diagnosis and treatment rather than those that present as advanced
disease. Such studies must also consider the limited life expectancy of
the patient and any comorbid conditions.23
Conclusions
Cancer care is associated with both clinical and economic
outcomes of interest. There is increasing interest in measuring the impact
of cancer and its treatment on the quality as well as the quantity of survival.
Methods are available to evaluate management strategies based on both clinical
and economic outcomes. These methods have only recently been applied to
the study of cancer care in the elderly. With further use of such methods,
we can anticipate a substantial increase in our understanding of the effectiveness
and costs of managing cancer in the elderly. This knowledge should aid
clinicians and health care planners in providing optimal quality and cost-effective
care to the elderly patient with cancer.
Appreciation is expressed to Dorothy Allen for
her excellent technical assistance in the preparation of the manuscript.
This paper was presented in part at the Third International Conference
on Geriatric Oncology, Tampa, Florida, USA, November 1996.
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Glossary
Cost: resources spent to purchase services or other resources
including direct, indirect and intangible components.
Cost-to-charge ratio: method of estimating cost based on charges
and assumed distribution of costs per unit charge.
DEALE: declining exponential approximation of life expectancy
that estimates survival with the assumption of a constant mortality rate
whose reciprocal is the life expectancy.
Decision analysis: form of analysis based on decision theory
incorporating a formal decision structure (tree) and specified probabilities
and outcome values to evaluate treatment alternatives.
Direct costs: medical and nonmedical costs associated with the
provision of medical services for the prevention, diagnosis, treatment,
follow-up, rehabilitation, and palliation of illness.
Direct institutional costs: costs associated with the direct
provision of services to the patient and for which a charge may be generated.
Discount: adjustment in benefit or cost in the future relative
to benefit and cost in the present.
Effectiveness: measurement of treatment effect in the population
outside of a clinical trial.
Efficacy: measurement of treatment effect within a sample of
the population in the framework of a clinical trial.
Expected value: calculated value at a chance or decision point
in a decision model found by summing all products of outcome values and
probabilities of branches distal to the point.
Indirect costs: cost associated with the morbidity or mortality
of illness beyond the direct provision of care.
Indirect institutional costs: costs associated with the operation
of the institution not directly associated with patient care and for which
a charge is not generated.
Intangible costs: poorly defined costs associated with illness
including pain and suffering and loss of companionship.
Life expectancy: average number of years of life remaining at
a given age.
Marginal benefit: difference in benefit between two strategies.
Marginal cost: difference in cost between two strategies or treatments.
Marginal cost-effectiveness: difference in cost to achieve an
additional amount of benefit with a treatment strategy usually expressed
in dollars per year of life gained.
Marginal cost-utility: difference in cost to achieve an additional
amount of quality-adjusted benefit with a treatment strategy usually expressed
in dollars per quality-adjusted life year (QALY) gained.
Q-TWIST: quality-adjusted time without symptoms of disease or
toxicity of treatment representing the sum over all time intervals of the
product of time and utility.
Sensitivity analysis: process of assessing the change in expected
value or threshold values based on variation of the probabilities or outcome
values assumed in a decision model over a range of possible values.
Threshold: value of a variable evaluated in a sensitivity analysis
where the expected value of the decision choices are exactly equal.
Time trade-off: method for assessing patient preferences by estimating
the time in full health that is considered equivalent to actual time in
the diseased state.
Utility: measured patient preference for a given health outcome
state.