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Stratified Analysis

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Title: Stratified Analysis


1
Stratified Analysis
  • Tuesday 1/29/02
  • PH 2711
  • Jan Risser

2
30 of Type A die shortly after MI and wont be
prevalent cases
90 die
3
Selection of Controls
BASE Population
The assumption that cases and controls originate
from the same hypothetical source cohort is a
critical issue affecting the validity of
case-control studies. (Szklo)
4
Data Analysis Purpose
  • Control for confounding
  • How is the primary association of interest
    affected when adjusted for potential confounding
    variables?
  • Provide precision of point estimates
  • Discover interaction
  • Interpret findings
  • in relation to the literature and limitations of
    your study

5
Confounding
  • A distortion of an association between and
    exposure and disease brought about by an
    extraneous factor or factors.
  • Occurs when the exposure is associated with the
    confounding factor and with the disease.

6
Strategies for control of confounding
  • 1. Random allocation of exposure
  • Ideal (adjusts for known as well as unknown
    confounders
  • Rarely possible in observational studies of risk
    factors ethical constraints, time, and cost

7
Strategies for control of confounding
  • 2. Restriction
  • The effects of know or potential confounders can
    be eliminated by restriction of study subjects
  • Should be considered for strong by uncommon risk
    factors
  • Can simplify the analysis (fewer variables)
  • Reduces the number of potential subject but
    increases precision of estimates number of
    subjects
  • Loss of generalization of restricted factors

8
Strategies for control of confounding
  • 3. Matching - Partial restriction
  • Match on disease status
  • Matching gains efficiency in case control studies
  • Matching in design must be retained in the
    analysis
  • Compare matched vs. unmatched estimates

9
Strategies for control of confounding
  • 4. Stratification
  • Use stratified analysis to evaluate interaction
    and control for confounding
  • No assumptions and straightforward computational
    procedures
  • Stratum specific estimates become imprecise with
    numbers in cells becomes small
  • ALWAYS look at stratification before jumping into
    models (logistic, etc)

10
Strategies for control of confounding
  • 5. Modeling
  • After stratification - modeling may be employed
    to control confounding and test for interaction
  • Modeling is attractive when number of variables
    is large or when continuous variables can not be
    / should not be categorized
  • Disadvantage assumptions

11
Analysis of etiologic studies
  • Determine crude point estimate and CI for each
    strata
  • Calculate univariate OR first
  • How does this compare to what we know
  • Form Strata
  • Look for confounding
  • Look for interaction
  • Decide if summary measures of association are
    appropriate
  • Determine summary measure

12
Univariate Odds Ratio
13
Odds Ratio
14
Statistical Significance
15
(No Transcript)
16
95 CI around OR
  • Exact Unbeatable
  • based on Fisher limits
  • time consuming, with iterations
  • Test Based Transformation of the statistical
    test (Chi square)
  • Cornfeld, Woolf approximation
  • more accurately represent Exact with greater
    deviation from the null

17
Test based confidence interval
18
Woolf approximation
Using a Taylor series expansion
Woolf Ann Human Gen 195519251-253.
19
Cornfeld
  • Requires iterations
  • Is theoretically preferable since it involves
    recalculating the standard error using fitted
    cell frequencies that correspond to the value of
    the confidence interval

20
95 CI around OR
a and c cells 4 Total N 1644
A and C cells 40 Total N 16440
21
Comparison of CIs from Stata
  • http//www.sph.uth.tmc.edu/courses/epi/Jrisser/PH2
    711_spr02/Projects/ci.htm

22
Form Strata
  • Look for confounding
  • Look for interaction
  • Decide if summary measures of association are
    appropriate
  • Determine summary measures
  • For case control studies Mantel Haenszel
    weighted odds ratio.

23
Interaction
  • The interdependent operation of two or more
    factors to produce an unanticipated effect.
  • Statistical interactions statistical model does
    not explain the joint effect of two or more
    independent variables. Model dependent.
  • Biological interactions Synergy. There is a
    difference in biologic effect of exposure
    according to the presence/absence cofactor.

24
Simpsons Paradox
  • Data show one thing when aggregated and something
    different when disaggregated.

25
Interaction or Simpsons bias
26
Weighted averages
  • Precision-based Taylor series variance
  • Mantel-Haenszel for use in case control
    studies.
  • Direct mathematical connection between this and
    the MH Chi square test (following)
  • Standardized weights standard pop.
  • Provide unconfounded summary comparisons with a
    known standard population, and for SMR.

27
Mantel-Haenszel Odds Ratio
28
Mantel-Haenszel Relative Risk
29
MD Odds Ratio
30
MH Chi Square (multiple strata)
31
Ischemic Heart Disease Exercise
  • Cases initial diagnosis of IHD - angina,
    myocardial infarction, sudden death.
  • Restricted to females under 60
  • Diagnosis 1960-1974
  • Rochester Minnesota residents

32
Ischemic Heart Disease Exercise
  • Controls two individually matched controls for
    each case
  • No prior IHD dx
  • Resident
  • Year of Dx
  • Age /- 3 years

33
Ischemic Heart Disease Exercise
  • Risk factor information derived from records
    prior to IHD Dx in cases and controls
  • Matched also on length of prior medical record
    (in an attempt to make any information bias
    non-differentia)
  • ORs with and without matching similar - therefore
    no confounding introduced by matching.

34
Ischemic Heart Disease Exercise
  • Determine crude point estimates and CI for each
    factor (smoking and OC use)

35
Ischemic Heart Disease Exercise
  • How does this compare to what we know
  • Previous studies
  • RR of 2-4 for hypertension, smoking, high
    cholesterol
  • RR 4-5 for diabetes
  • Shapiro suggests OC use increases risk and there
    is a strong interaction between OC use and smoking

36
Ischemic Heart Disease Exercise
  • Form strata and look for interaction

Crude OR 2.8
37
Ischemic Heart Disease Example
Calculate the adjusted odds ratio using the
Mantel-Haenszel test.
Crude OR 2.8, adjusted OR 2.8
38
Ischemic Heart Disease Exercise
  • Test for interaction
  • mhodds or cc case exposure, by(factor)
  • You get a Test of homogeneity
  • This is the MH chi square test, testing the
    hypotheses OR1OR2ORx
  • If the results are significant - then you have
    interaction
  • chi2(1) 0.41 Prgtchi2 0.524

39
Mantel-Haenszel Odds Ratio
  • Easy to compute
  • Results are same as MH Chi Square
  • (if OR 1, Chi square0)
  • Can be used when there are 0 cells which permits
    adjustment for many categories
  • Can be used for summary risk ratios, rate ratios,
    and odds ratios (see KKM, p345).
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