Title: Approaches to Measuring Population Health Ian McDowell November, 2005
1Approaches to Measuring Population HealthIan
McDowellNovember, 2005
- Mortality-based summary measures
- Combined disability mortality methods
- Conceptual rationale for summary measures
- Environmental indicators
- Global indicators
POP 8910
21. Why do we need measures of population health?
- Governments wish to monitor health of citizens
- To set priorities for health services policies
- To evaluate social and health policies
- To compare health of different regions
- To identify pressing health needs
- To draw attention to inequalities in health
- Highlight balance between length and quality of
life - Numerical index desirable a GNP of Health
3Classifying Population Health Measures by their
Purpose
- Descriptive measures
- Current health status (e.g., health surveys)
- Evaluative measures (e.g., to assess outcomes of
health policies) - Analytic measures include an implicit time
dimension - Predictive methods (risk assessment projections
of disease burden) look forward - Explanatory measures (income inequality or social
cohesion) look backwards.
4These purposes may correspond to different types
of research (shown in the ellipses)
Note the figure is intended to show the typical
blend of methods you might use in a particular
type of study HSR would use descriptive and
analytic, for example.
5Classifying Population Health Measures by their
Focus
- Aggregate measures combine data from individual
people, summarized at regional or national
levels. E.g., rates of smoking or lung cancer. - Environmental indicators record physical or
social characteristics of the place in which
people live and cover factors external to the
individual, such as air or water quality, or the
number of community associations that exist in a
neighborhood. These can have analogues at the
individual level. - Global indicators have no obvious analogue at the
individual level. Examples include contextual
indicators such as the existence of healthy
public policy laws restricting smoking in public
places, or social equity in access to care
social cohesion, etc. - Morgenstern H. Ecologic studies in epidemiology
concepts, principles, and methods. Annual
Reviews of Public Health 1995 1661-81.
6Linking the focus of a measure to its application
- Aggregate measures are typically used in
descriptive studies they focus on the
individuals within the population, i.e.
idiographic. They measure health in the
population - Environmental measures can be used in
descriptive, analytic or explanatory studies - Global measures mainly used in analytic studies
focus on generating theory (nomothetic studies).
They could measure health of the population
7Linking the target of a population intervention
to the type of measure Interventions can target
people, environmental factors, or policy in
general
These correspond to Morgensterns categories of
measures used to evaluate the intervention
and to the presumed etiological sequence
8History of changing approaches to measuring
population health
- Originally based on mortality rates. IMR is
often used to describe level of development of a
country - With declining mortality, people with chronic
disease survive morbidity disability gain
importance - Concern with quality of life, not mere survival
- To compare populations at different stages of
economic development, it may be desirable to
combine mortality and morbidity in a single,
composite index
9Aggregate MeasuresMortality-Based Indicators
- Life expectancy
- Expected years of life lost
- Potential years of life lost
10Life Expectancy
- Summary of all age-specific mortality rates
- Estimates hypothetical length of life of a cohort
born in a particular year - This assumes that current mortality rates will
continue
11Expectancies and Gaps
- From a typical survival curve, we can either
consider the life expectancy (E), or the gap
(G) between current life expectancy and some
ideal. - Expectancies are generic gaps can be
disease-specific (e.g., life yrs lost due to
cancer)
12Classifying Health Gaps
- Gaps Compare population health to some target.
Difference between time lived in health states
less than ideal health, and the specified target - The implied norm or target can be arbitrary, but
must be explicit and the same for all populations
being compared. The precise value does not matter
13Gaps Expected Years of Life Lost
- Uses population life expectancy at the
individuals age of death - Problems different countries may have different
life expectancies. Its overall mortality, so
cannot identify impact of a disease. - Standard Expected Years of Life Lost
- Reference is to an ideal life expectancy
- E.g., Japan (82 years for women)
- Area between survivorship curve and the chosen
norm
14Potential Years of Life Lost (PYLL)
- PYLL ? ( normal age at death actual age at
death). Doesnt much matter what age is chosen
as reference typically 75 - Attempts to represent impact of a disease on the
population death at a young age is a greater
loss than death of an elderly person - Focuses attention on conditions that kill younger
people (accidents cancers) - All-causes or cause-specific
153. Aggregate Measures that Combine Mortality
Morbidity
- Health expectancies
- Health gaps
16Composite Measures
- Aim to represent overall health of a population
- Composite measures combine morbidity and
mortality into a health index. (An index is a
numerical summary of several indicators of
health) - Mortality data typically derived from life
tables morbidity indicators from health
surveys, e.g. - Self-rated health
- Disability or activity limitations
- A generic health index
17Sidebar Different Types of Morbidity Scales for
Use in Composite Measures
- Generic instruments cover a wide range of health
topics, e.g. reflecting the WHO definition.
These can be health profiles (e.g., Sickness
Impact Profile, SF-36) or health indexes
(e.g., Health Utilities Index, EuroQol) - Specific instruments
- Disease-specific (e.g., Arthritis Impact
Measurement Scale) - Age-specific (e.g., Child Behavior Checklist)
- Gender-specific (e.g., Womens Health
Questionnaire)
18Survivorship Functions for Health States
Survivors
Deaths
This diagram extends the earlier one by
recognizing that not all survivors are perfectly
healthy. The lower area H shows the proportion
of people in good health (however defined) it
shows healthy life expectancy. The top curve
shows deaths intermediate area represents levels
of disability. Area G again represents the
health gap. The question arises whether the
people with a disability ought to be counted with
H or with G.
Age
19More details on the combined indicators
- From the previous chart
- We can still read from the bottom, and talk of
health expectancies, or from the top, and
create gap indexes years of life lost, etc. - The value of a life lived in less than perfect
health is less than a healthy life-year. This is
health-adjusted life expectancy - The indicators will fall in a descending
sequence overall life expectancy, then
health-adjusted life expectancy, then healthy
life expectancy.
20A Simple PresentationLife Expectancy and
Disability-Free Life Expectancy, Canada, 1986-1991
Years
Life Expectancy from birth Disability-Free Life
Expectancy (DFLE)
M F M
F
1986 1991
21 Health expectancies
- Generic term any expectation of life in various
states of health. Includes other, more specific
terms, such as Disability Free Life Expectancy - Two main classes
- Dichotomous rating two health states
- Health state valuations for a range of levels
22I. Dichotomous expectancies
- Here full health is rated 1, and any state of
poor health (mild, moderate, severe disability)
is rated 0. - This leads to Disability-free life expectancy
(DFLE) weight of 1 for no disability and 0
for all other states. - Expectation of life with no disability, or
Healthy Life Expectancy (HLE) - Very sensitive to threshold of disability chosen
23II. Polytomous states and valuations
- These incorporate many levels of disability into
life expectancy estimates and count time spent
with each level of disability. - Polytomous model (three or more health states
defined weights assigned to each generally 0 to
1.0. These may be added together and compared
across diseases) - Health-adjusted life expectancy (HALE)
- First calculated for Canada by Wilkins. Four
levels of severity arbitrary weights. - Recent work uses utility weights. E.g. from
Health Utilities Index, Quality of Well-Being
Scale, EUROQoL, etc.
24Polytomous Curves Showing Quality of Survival
Survivors
Deaths
This diagram illustrates several classes of
disability, each having a separate severity
weighting. The area H again includes healthy
people, but the definition may have changed. The
top curve shows deaths intermediate curves
represent various levels of disability.
Age
25Health Expectancy by Income Level and Sex,
Canada, 1978 (Wilkins)
Years
Severely disabled Restricted Minor
limitations Healthy
Low
High
Income Quintiles
Males Females
26Relationship between Life Expectancy, Health
Expectancy and Health-Adjusted Life Expectancy
Life Expectancy
Health-Adjusted Life Expectancy
Healthy Life Expectancy
By down-weighting the various levels of
disability, the HALE falls between LE and HLE
27Some HALE Results for Canada
- Wolfson Wilkins at Statistics Canada used data
from the National Population Health Survey to
calculate HALEs, using the Health Utilities
Index to weight different levels of imperfect
health - The difference between LE and HALE is 11 for
men, and 15 for women, because women live longer
and suffer more chronic disease at older ages - They recalculated HALEs, deleting certain types
of disability, and found that sensory problems
(eyesight, hearing) were the major contributor in
Canada to lost years. Vision problem have a very
minor effect on health status, but are very
common Pain was the second largest cause - They also showed that less educated people both
live shorter lives, and also experience more
disability - Source Wolfson MC. Health Reports 19868(1)41-46
28Gap Measures QALYs DALYs
- Gap measures can also use a weighting for
intermediate health states. This is necessary to
combine time lost due to ill health with time
lost due to premature mortality - Quality Adjusted Life Years (QALYs) lost
- Common outcome measurement in clinical trials,
program evaluation - Record extra years of life provided by therapy
and quality of that life - Typically use utility scale running from 0 to 1
- DALYS (disability-adjusted life years) lost
29Complementarity of Health Expectancies and Health
Gaps
Gaps
Age
Expectancies
LE Life Expectancy SLE Standard LE HALE
Health-Adjusted LE HLE Healthy LE SEYLL
Standard Expected Years of Life Lost HALY
Health-Adjusted Life Years Lost
304. When do we Use Each Type of Measure?
- Towards a Functional Classification
31Recall our Classification of Measures
- Descriptive measures
- Current health status
- Evaluative measures
- Analytic measures
- Predictive methods that look forward
- Explanatory measures that look backwards.
32Characteristics of Descriptive Measures
- Intuitively simple cover themes of interest to
people in general (quality of life, etc) - Reflect values possible political influence
- Time frame present
- Emphasis on modifiable themes
- Goal to make broad classifications
33Characteristics of Evaluative Measures
- Fine-grained select indicators that sample
densely from relevant level of severity - Need to be sensitive to change produced by
particular intervention - Content tailored to intervention usually not
comprehensive - Common emphasis on summary score
- But should also cover potential side-effects
34Sensitivity of a Measurement
Metaphor of the combs
Descriptive
Evaluative
35Match the Instrument to the Application
Population Monitoring
Outcomes Research
Patient Management
4
4
4
3
3
3
2
2
2
1
1
1
Source John Ware, October 2000
36Characteristics of Predictive Measures
- Content can be selective rather than
comprehensive - Items not necessarily modifiable, or even very
important - If derived from discriminant analysis, likely to
be parsimonious - Focus on algorithmic scoring and interpretation
(e.g., either x or y, plus z in the absence of w)
37Characteristics of Explanatory Measures
- Can combine various types of measures
classifications, ranging from distal to proximal - Based on a conceptual model, rather than
empirically based - There can therefore be rival explanatory
approaches - Content not necessarily modifiable factors, but
these would be desirable
385. Environmental Measures
- Compositional vs. Contextual Measures
39Compositional
- Demographics age, ethnic composition, lone
parents, dependency ratios, etc - Population resources wealth, educational levels,
etc - Community social cohesion, watch programs,
participation (voting, donations, etc)
40 Contextual
- Neighbourhood type, quality amenities,
transportation - Employment opportunities
- Access to care
- Environmental quality pollution levels air,
water, noise - Climate
- Equity
416. Global Measures
- Income inequalities,
- Health inequalities.
42Some Examples of Global Measures
- Social solidarity sense of identity artistic
output public interest in health issues, etc. - Indicators of societal support the safety net
- Quality of social institutions for health
(health protection laws, etc.) - Social cohesion, neighbourhood quality, social
capital
43Canadian Social Health Index
Composite Indicator, including Homicides Alcohol-
related fatalities Affordable housing Income
equity Child poverty Child abuse IMR Teen
suicide Drug abuse High school drop-out
rate Unemployment Avg. weekly earnings Seniors
poverty rate Uninsured health costs for
seniors
Source Human Resources Development
CanadaApplied Research Bulletin 199736-8
44Distributional Measures Health Inequalities (I)
- Index of Dissimilarity Absolute number or
percentage of all cases that must be
redistributed to obtain the same mortality rate
for all SES groups. - Index of Dissimilarity in Length of Life The
absolute number or proportion of person-years of
life that should be redistributed among SES
strata to achieve equal length of life in all.
45Measures of Health Inequalities (II)
- Relative Index of Inequality Ratio of morbidity
or mortality rates between those at bottom of SES
range to those at top. This is estimated using
regression and corrects for other factors. - Slope Index of Inequality Expresses health
inequality between top and bottom of social
hierarchy in terms of rate differences rather
than rate ratios
46Gini Coefficient Measure of Income Inequality
- L(s) lies below line of equality when income
inequality favours the rich - Gini coefficient is twice the area between the
curve and the line of equality
of income
100
L(s)
0
100
of population
47Standardized Index of Health Inequality
- L(s) lies above line of equality when ill-health
is concentrated among poor. - L(s) is indirectly standardized curve indicating
unavoidable inequality (e.g., due to age-sex
distribution) - Inequality favours rich if L(s) lies above L(s)
Cum of ill-health
100
L(s)
L(s)
100
0
Cum. of population ordered by income
48Measures of Impact of Interventions to Reduce
Inequalities
- Population attributable risk The reduction in
health gap that would occur if everyone
experienced the rates in the highest
socioeconomic group - Population attributable life lost index The
absolute or proportional increase in life
expectancy if everyone experienced the life
expectancy of the highest SES group