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BIOST 536 Lecture 12 1 Lecture 12 – Introduction to Matching
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BIOST 536 Lecture 12 2 Conditional logistic regression
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BIOST 536 Lecture 12 3 Conditional logistic regression
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BIOST 536 Lecture 12 4 Conditional logistic regression
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BIOST 536 Lecture 12 5 Conditional logistic regression
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BIOST 536 Lecture 12 6 Example
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BIOST 536 Lecture 12 7 Example Usual odds ratio and Mantel-Haenszel odds ratio adjusting for year of birth Standard logistic regression
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BIOST 536 Lecture 12 8 Example Unconditional logistic regression adjusting for YOB
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BIOST 536 Lecture 12 9 Example
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BIOST 536 Lecture 12 10 Example Conditional logistic regression stratified on YOB with m cases : n controls for each YOB (“true stratification”) In all the analyses, the OR and 95% CI are about the same due to the close frequency matching
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BIOST 536 Lecture 12 11 Conditional logistic regression
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BIOST 536 Lecture 12 12 1-1 matching
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BIOST 536 Lecture 12 13 1-1 matching
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BIOST 536 Lecture 12 14 1-1 matching
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BIOST 536 Lecture 12 15 1-1 matching
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BIOST 536 Lecture 12 16 Example
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BIOST 536 Lecture 12 17 Example Not really what we want since we want to retain the matching and compare Gall (case) vs Gall (control)
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BIOST 536 Lecture 12 18 Example Use small trick to get case and control value on the same line for Gall bladder disease
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BIOST 536 Lecture 12 19 Example Can use matched case-control command (mcc) Can get the OR easily and get confidence intervals and exact p- values based on the exact binomial distribution with null hypothesis p=0.50 and n = number discordant on exposure status Easier to just use conditional logistic regression
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BIOST 536 Lecture 12 20 Example
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BIOST 536 Lecture 12 21 Example
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BIOST 536 Lecture 12 22 Example
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BIOST 536 Lecture 12 23 Example
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BIOST 536 Lecture 12 24 Example
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BIOST 536 Lecture 12 25 1-m matching
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BIOST 536 Lecture 12 26 1-m matching
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BIOST 536 Lecture 12 27 1-m matching
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BIOST 536 Lecture 12 28 Example
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BIOST 536 Lecture 12 29 Example
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BIOST 536 Lecture 12 30 Example
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BIOST 536 Lecture 12 31 Example
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BIOST 536 Lecture 12 32
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BIOST 536 Lecture 12 33 Example
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BIOST 536 Lecture 12 34 Example
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BIOST 536 Lecture 12 35 Example
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BIOST 536 Lecture 12 36 Example
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BIOST 536 Lecture 12 37 Summary 1-1 matching case-control Only sets where the covariate is different between case and control supply information about that covariate Cannot get absolute probabilities, just conditional probabilities Missing value for the case or control will cause loss of the set 1-m matching case-control Only sets where the covariate is different between the case and at least one control will supply information about that covariate Cannot get absolute probabilities, just conditional probabilities Missing value for the case will cause loss of the set Can use Wald and LR tests as before for model fitting
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