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The third factor

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Title: The third factor


1
The third factor
  • Effect modification
  • Confounding factor FETP India

2
Competency to be gained from this lecture
  • Identify and describe an effect
    modificationEliminate a confounding factor

3
Key elements
  • Describing an effect modification
  • Eliminating a confounding factor

4
Stratification
  • Sub-groups can be defined according to various
    characteristics in a population
  • Age
  • Sex
  • Socio-economic status
  • An association between a risk factor and an
    outcome may be studied within these various strata

5
Key elements
  • Describing an effect modification
  • Eliminating a confounding factor

Effect modification
6
Spotting effect modification in a stratified
analysis
  • Effect modification ( Interaction) occurs when
    the answer about a measure of association is
  • it depends
  • Examples
  • Efficacy of measles vaccine
  • Variation according to the age
  • Risk of myocardial infarction among women taking
    oral contraceptives
  • Variation according to smoking habits

Effect modification
7
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
8
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
9
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
10
Death from diarrhoea according to breast-
feeding, Brazil, 1980s(Crude analysis)
Diarrhoea Controls Total No breastfeeding
120 136 256 Breastfeeding 50 204 254 Total 170 3
40 510
Odds ratio 3.6 95 CI 2.4- 5.5 p lt 0.0001
Effect modification
11
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
12
Death from diarrhoea according to breastfeeding,
Brazil, 1980s
Infants lt 1 month of age Cases Controls Total No
breastfeeding 10 3 13 Breastfeeding
7 68 75 Total 17 71 88 Infants 1 month of
age Cases Controls Total No breastfeeding
110 133 243 Breastfeeding 43 136 179 Total 153 2
69 422
13
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
14
Death from diarrhoea according to breast
feeding, Brazil, 1980sAnalysis among infants lt
1 month of age
Cases Controls Total No breastfeeding
10 3 13 Breastfeeding 7 68 75 Total 17 71 88
Odds ratio 32.4 95 CI 6- 203 p lt 0.0001
Effect modification
15
Death from diarrhoea according to breast
feeding, Brazil, 1980sAnalysis among infants
1 month of age
Cases Controls Total No breastfeeding
110 133 243 Breastfeeding 43 136 179 Total 153 2
69 422
Odds ratio 2.6 95 CI 1.7- 4.1 p lt 0.0001
Effect modification
16
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
17
Judge the heterogeneity of the measures of
association
  • To be a difference, a difference should make a
    difference
  • Review public health implications
  • Odds ratios in the specific example
  • Strata 1 OR 32 95 CI 6.0- 200
  • Strata 2 OR 2.6 95 CI 1.7- 4.1

Effect modification
18
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
19
Woolfs test for heterogeneity of the odds ratios
  • Statistical testing of the heterogeneity of the
    odds ratios
  • Lacks statistical power
  • Calculation
  • In statistical textbooks
  • In the softwares analysis output
  • Judgement is important

Effect modification
20
Handling heterogeneous measures of association
21
Describing an effect modification
  • Conduct crude analysis
  • Stratify data by suspected modifier
  • Observe the association strata by strata
  • Judge the heterogeneity of
  • Odds ratios
  • Relative risks
  • Test a potential difference
  • Report the effect modification

Effect modification
22
Conclusion of the Brazilian case-control study on
breastfeeding and death from diarrhoea
  • The protective efficacy of breastfeeding is more
    marked among infants under the age of one month
  • This may correspond to a biological phenomenon
    that must be reported as part of the results

Effect modification
23
Reporting results in the presence of an effect
modification
  • Once the effect modification was detected the
    study population is split
  • Results for the risk factor considered are
    reported stratum by stratum

Effect modification
24
Vaccination against hepatitis B among
institutionalized children in Romania
  • Hepatitis B is highly endemic in Romania
  • Many children live in institutions
  • Institutionalized children are at higher risk
  • 1995 Hepatitis B immunization initiated
  • 1997 Evaluation through serologic survey

Effect modification
25
Hepatitis B vaccine efficacy among
institutionalized children over 6 months of age
, Romania, 1997
  • Anti-HBc () Anti-HBc (-) RR 95 C.I.
  • 3 doses 15 383 0.48 0.17-1.4
  • lt 3 doses 4 47 Ref.
  • Born after implementation of routine vaccination

HBVVaccine
Vaccine efficacy, 52, 95 CI 0-83
Effect modification
26
Hepatitis B vaccine efficacy among
institutionalized children over 6 months of age
, by district, Romania, 1997
  • Anti-HBc () Anti-HBc (-) RR 95 C.I.
  • 3 doses 12 61 2.0 0.28-14
  • lt 3 doses 1 11 Ref.
  • 3 doses 3 322 0.12 0.0-0.6
  • lt 3 doses 3 36 Ref.
  • Wolf test for evaluation of interaction p 0.03
  • Born after implementation of routine
    vaccination

District X
Others
Effect modification
27
Hepatitis B vaccine efficacy among Romanian
children in institutions Conclusions
  • The protective efficacy of hepatitis B vaccine
    appears low overall
  • This overall low efficacy does not correspond to
    a biological phenomenon
  • In fact, the efficacy is
  • Normal in most districts (88)
  • Low in district X
  • This points towards programme errors that must be
    identified and prevented

Effect modification
28
Describing an effect modificationSummary
  • The analysis plan
  • Anticipates effect modifiers to collect data
  • The analysis
  • Looks for effect modification to test it
  • The report
  • Breaks down the population in strata to report
    the effect modification

Effect modification
29
Key elements
  • Describing an effect modification
  • Eliminating a confounding factor

Confounding factor
30
What may explain an association between a risk
factor and an outcome?
  • Chance
  • Bias
  • Third factor
  • Causal association

Confounding factor
31
What may explain an association between a risk
factor and an outcome?
  • Chance
  • Bias
  • Third factor
  • Causal association

Confounding factor
32
Characteristics of a third, confounding factor
  • Associated with the exposure
  • Without being a consequence of exposure
  • Associated with the outcome
  • Independently from the exposure

Exposure
Outcome
Confounding factor
Confounding factor
33
The nuisance introduced by confounding factors
  • May simulate an association
  • May hide an association that does exist
  • May alter the strength of the association
  • Increased
  • Decreased

Confounding factor
34
Example of confounding factor
Outcome
Exposure 1
Confounding factor
35
Example of confounding factor (1)
Pneumonia
Ethnicity
Confounding factor
36
Example of confounding factor (2)
Pneumonia
Crowding
Confounding factor
37
Eliminating confounding in the pneumonia example
  • Estimate the strength of the association between
    malnutrition and pneumonia
  • Estimate the strength of the association between
    crowding and pneumonia
  • Adjusted for the effect of malnutrition
  • Eliminate the confounding effect of crowding on
    the false association between ethnicity and
    pneumonia

Confounding factor
38
Controlling a confounding factor
  • Stratification
  • Restriction
  • Matching
  • Randomization
  • Multivariate analysis

Confounding factor
39
Controlling a confounding factor
  • Stratification
  • Restriction
  • Matching
  • Randomization
  • Multivariate analysis

Confounding factor
40
Adjustment to eliminate confounding
  • Examine strength of association across strata
  • Check for the absence of effect modification
  • If there is an effect modification, break in
    various strata, report. End of the story
  • Observation of a strength of association
  • Homogeneous across strata
  • Different from the crude measure
  • Calculate weighted average of stratum-specific
    measures of association

Confounding factor
41
Malaria and radio sets
  • Hypothesis Could radio waves be a repellent for
    female anopheles?
  • Cohort study on the risk factors for malaria in
    an endemic area

Confounding factor
42
Incidence of malaria according to the presence of
a radio set, Kahinbhi Pradesh
Crude data Malaria No malaria Total Radio 80 440
520 No radio 220 860 1080 Total 300 1300 1600
RR 0.7 95 CI 0.6- 0.9 p lt 0.02
Confounding factor
43
Incidence of malaria according to the presence of
a radio set, Kahinbhi Pradesh
Strata 1 Sleeping under a mosquito
net Malaria No malaria Total Radio 30 370 400 No
radio 50 630 680 Total 80 1000 1080
RR 1.02 95 CI 0.7- 1.6 p lt 0.97
Confounding factor
44
Incidence of malaria according to the presence of
a radio set, Kahinbhi Pradesh
Strata 2 Sleeping without a mosquito net
Malaria No malaria Total Radio 50 70 120 No
radio 170 230 400 Total 220 300 520
RR 0.98 95 CI 0.8- 1.2 p lt 0.95
Confounding factor
45
Mantel-Haenszel adjusted relative risk
????aixL0i) / Ti ????ci xL1i) / Ti
RR M-H
Confounding factor
46
Malaria and radio sets Conclusion
  • No association between radio and malaria within
    each strata
  • The new adjusted relative risk replaces the crude
    one

Radio sets
Malaria
Confounding factor
47
Mantel-Haenszel adjusted odds ratio
????ai.di) / Ti ????bi.ci) / Ti
OR M-H
Confounding factor
48
Controlling a confounding factor
  • Stratification
  • Restriction
  • Matching
  • Randomization
  • Multivariate analysis

Confounding factor
49
Hepatitis B and blood transfusion in Moldova
  • Hepatitis B virus infection is highly endemic in
    Moldova
  • Routes of transmission are unknown
  • A case control study was initiated to assess
    potential modes of transmission

Confounding factor
50
Acute hepatitis B and receiving a transfusion in
Moldova, 1994-1995
Cases Controls Total Transfusion 3 1 4 Non-trans
fusion 69 189 258 Total 72 190 262 Odds ratio
8.2 95 CI 0.8-220
Confounding factor
51
Acute hepatitis B and receiving a transfusion in
Moldova, 1994-1995 (According to receiving
injections)
Injections
No injections
Case Control Total Transfusion 0 0 0 No
transfusion 47 183 230 Total 47 183 230 Odds
ratio -
Case Control Total Transfusion 3 1 6 No
transfusion 22 6 28 Total 25 7 32
Odds ratio 0.8, 95 CI 0.1-24.9
Confounding factor
52
Controlling a confounding factor
  • Stratification
  • Restriction
  • Matching
  • Randomization
  • Multivariate analysis

Confounding factor
53
Matching
  • Stratification conducted initially at the stage
    of the study design of a case control study
  • Stratified analysis (matched) necessary

Confounding factor
54
Controlling a confounding factor
  • Stratification
  • Restriction
  • Matching
  • Randomization
  • Multivariate analysis

Confounding factor
55
Randomization
  • Distribution of exposure of interest at random in
    the study population for a prospective cohort
  • An association between an exposure and a
    confounding factor will be
  • Secondary to chance alone
  • Improbable

Confounding factor
56
Controlling a confounding factor
  • Stratification
  • Restriction
  • Matching
  • Randomization
  • Multivariate analysis

Confounding factor
57
Multivariate analysis
  • Mathematical model
  • Simultaneous adjustment of all confounding and
    risk factors
  • Can address effect modification

Confounding factor
58
Taking into account a third factor in practice
  • Think of potential confounding factors
  • Collect accurate data on them
  • Conduct crude analysis
  • Stratify
  • Look for effect modification
  • Are the RR or OR different to each other?
  • If effect modification
  • Report
  • Do not adjust
  • Control confounding factors through adjustment
  • If applicable

Before the study
During the analysis
59
Analyzing a third factor
60
Take-home messages
  • Describe effect modifications
  • The analysis must TEST for their occurrences
  • Control confounding factors
  • The analysis must ELIMINATE their influence
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