Title: Epidemiology Kept Simple
1Epidemiology Kept Simple
- Sections 11.111.3
- Ecological Cross-Sectional Studies
2Basic Design
- Ecological and cross-sectional studies involve no
follow-up of individuals, so are often grouped
together - In addition, these studies depend on a full
accounting or random cross-section of the
population - This design is capable of measuring prevalences
and open population incidence rates
3Illustrative Example 1 Regional Cigarette
Consumption Lung Cancer
Each line of data represents a geographic
aggregate ? this is an ecological design The
variables name cig1930 refers to cigarette
consumption per capital in 1930. The variable
mortalit represents lung cancer mortality per
100,000 person-years in 1950
4Illustrative Example 1 (cont.) Regional
Cigarette Consumption Lung Cancer
Per capita cigarette consumption and lung cancer
mortality are highly correlated, r 0.74
5Illustrative Example 2 calories from fat
heart disease
Studies in the 1950s showed an ecological
correlation between high fat diet and
cardiovascular disease mortality (see pp. 1945)
6Illustrative Example 3 Demonstration of
Confounding
- Confounding bias due to an extraneous variable
- This historical study by Farr (1852) reveals how
ecological studies are susceptible to
confounding. - Explanatory variable elevation above sea level
by neighborhood - Outcome variable cholera mortality
- This strong correlation was used to support the
erroneous miasma theory (see Chapter 1!) - In fact, elevation plays no part in cholera
transmission - Confounding variable proximity to Thames River.
7Illustrative Example 4Psychosis, Neurosis,
Social Class
- Here are data from a 1964 field study of mental
disorders - Note the negative correlation between high SES
and psychosis - Note the positive correlation between high SES
and neurosis - Can you predict biases in this study? (see next
slide)
Prevalence of psychosis and neurosis by social class, per 100,000 (Hollingshead Redlich, 1964) Prevalence of psychosis and neurosis by social class, per 100,000 (Hollingshead Redlich, 1964) Prevalence of psychosis and neurosis by social class, per 100,000 (Hollingshead Redlich, 1964)
Social class Psychosis Neurosis
High 188 349
Moderate 291 250
Low 518 114
Very low 1505 97
8Illustrative example 4 (cont.)Psychosis,
Neurosis, Social Class
- Detection bias Different diagnostic practices
create artificial differences in incidence or
prevalence - e.g., Poor people labeled psychotic rich people
labeled neurotic - Reverse-causality bias Disease causes the
exposure - e.g., Psychosis causes low SES
- Prevalence-incidence bias Difference in
prevalence but not incidence - wealthy people no more likely to be diagnosed
with neurosis but more persistent diagnoses (due
to different type of health care) - During later half of 20th century,
epidemiologists became increasingly aware of the
limitations of cross-sectional surveys, prompting
development of cohort and case-control methods
(see next set of slides)
9The remaining slides in this presentation are
optional
10The Ecological Fallacy (aggregation bias)
- The ecological fallacy occurs when an association
seen in aggregate does not hold for individuals - Illustrative example There is a negative
ecological association between high foreign birth
and illiteracy rate (r -0.62) - When data are disaggregated, there is a positive
association high foreign birth and literacy (as
one would expect) - Reason high immigration states had better public
education
11Logic of the Ecological
- Renewed interest in ecological measures
- Studies that mix aggregate observations and
individual-level observations are called
multi-level designs - Multi-level analysis useful in elucidating
- causal webs
- interdependence between upstream factors and
downstream factors
12Types of aggregate-level risk factors (Susser,
1994)
- Integral variables factors that effect all
community members (e.g., the local economy) - Contextual variables summary of individual
attributes (e.g., of calories from fat) - Contagion variables a property that involves a
group outcome (e.g., prevalence of HIV effects
risk of exposure)
13Illustrative Example Goldberger on Pellagra
- Pellagra epidemics of early 1900s initially
thought to be of infectious origin - Joseph Goldberger used epidemiologic studies to
demonstrate nutritional basis of pellagra (niacin
deficiency)
14Goldbergers (1918) Field Study of Food Intake
(Average Calories by Food Group) pp. 200 - 201