1 / 30

Arranged marriage

Arranged marriage . Matching in case control studies FETP India. Competency to be gained from this lecture. Design and analyze a matched case control study . Key elements. The concept of matching The matched analysis Pro and cons of matching . Controlling a confounding factor.

helga
Download Presentation

Arranged marriage

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Arranged marriage Matching in case control studies FETP India

  2. Competency to be gained from this lecture Design and analyze a matched case control study

  3. Key elements • The concept of matching • The matched analysis • Pro and cons of matching

  4. Controlling a confounding factor • Stratification • Restriction • Matching • Randomization • Multivariate analysis The concept of matching

  5. Matching: concept • Confounding is anticipated • Adjustment will be necessary • Preparation of the strata a priori • Recruitment of cases and controls • By strata • To ensure sufficient strata size The concept of matching

  6. Why matching? • If cases and controls are similar for the matching variables, • Then, differences must be otherwise explained. The concept of matching

  7. Consequences.... • The problem: • Confounding • Is solved with another problem: • Introduction of more confounding, • so that stratified analysis can eliminate it. The concept of matching

  8. Matching: Definition • Creation of a link between cases and controls • This link is: • Based upon common characteristics • Created when the study is designed • Kept through the analysis The concept of matching

  9. Types of matching strategies • Frequency matching • Large strata • Set matching • Small strata • Sometimes very small (1/1: pairs) The concept of matching

  10. Matching: False pre-conceived ideas • Matching is necessary for all case-control studies • Matching needs to be done on age and sex • Matching is a way to adjust the number of controls on the number of cases The concept of matching

  11. Matching: True statements • Matching can put you in trouble • Matching can be useful to quickly recruit controls The concept of matching

  12. Matching criteria • Potential confounding factors • Associated with exposure • Associated with the outcome • Criteria • Unique • Multiple • Always justified The concept of matching

  13. Example: Risk factors for microsporidiosis among HIV-infected patients • Case control study • Exposure • Food preferences • Potential confounder • CD4 / mm3 • Matching by CD4 category • Analysis by CD4 categories The concept of matching

  14. Mantel-Haenszel adjusted odds ratio ai.di) / Ti] bi.ci) / Ti] OR M-H= Matched analysis

  15. Matched analysis by set (Pairs of 1 case / 1 control) • Concordant pairs • Cases and controls have the same exposure • No ad and bc: no input to the calculation Cases Controls Total Exposed 1 1 2 Non-exposed 0 0 0 Total 1 1 2 Cases Controls Total Exposed 0 0 0 Non-exposed 1 1 2 Total 1 1 2 No effect No effect Matched analysis

  16. Matched analysis by set (Pairs of 1 case / 1 control) • Discordant pairs • Cases and controls have different exposures • ad’s and bc’s: input to the calculation Cases Controls Total Exposed 1 0 1 Non-exposed 0 1 1 Total 1 1 2 Cases Controls Total Exposed 0 1 1 Non-exposed 1 0 1 Total 1 1 2 Positive association Negative association Matched analysis

  17. The Mantel-Haenszel odds ratio... S [(ai.di) / Ti] S [(bi.ci) / Ti] OR M-H= Matched analysis

  18. …becomes the matched odds ratio SDiscordant sets case exposed SDiscordant sets control exposed OR M-H= Matched analysis

  19. …and the analysis can be done with paper clips! • Concordant questionnaire : trash • Discordant questionnaires : on the scale • The "exposed case" pairs weigh for a positive association • The "exposed control" pairs weigh for a negative association Matched analysis

  20. Analysis of matched case control studies with more than one control per case • Sort out the sets according to the exposure status of the cases and controls • Count reconstituted case-control pairs for each type of set • Multiply the number of discordant pairs in each type of set by the number of sets • Calculate odds ratio using the f/g formula Example for 1 case / 2 controls Sets with case exposed: +/++, +/+-, +/--Sets with case unexposed: -/++, -/+-, -/-- Matched analysis

  21. The old 2 x 2 table... Cases Controls Total Exposed a b L1 Unexposed c d L0 Total C1 C0 T Odds ratio: ad/bc Matched analysis

  22. ... is difficult to recognize! ControlsExposed UnexposedTotal Exposed e f a Unexposed g h c Total b d P (T/2) Odds ratio: f/g Cases Matched analysis

  23. The Mac Nemar chi-square (f - g) 2 (f+g) Chi2McN= Matched analysis

  24. Matching: Advantages • Is easy to communicate • Is useful for strong confounding factors • Can increase the power of small studies • Can ease control recruitment • Is useful if only one factor is studied • Allows looking for effect modification with matching criteria Pro and cons

  25. Matching: Inconvenience • Must be understood by the author • Is deleterious in the absence of confounding • Can decrease power • Can complicate control recruitment • Is limiting if more than one factor • Does not allow examining the association with the matching criteria Pro and cons

  26. Matching with a variable associated with exposure, but not with illness(Overmatching) • Reduces variability • Increases the number of concordant pairs • Has deleterious consequences: • If matched analysis: reduction of power • If match broken: Odds ratio biased towards one Pro and cons

  27. Hidden matching (“Crypto-matching”) • Some control recruitment strategies consist de facto in matching • Neighbourhood controls • Friends controls • Matching must be identified and taken into account in the analysis Pro and cons

  28. Matching for operational reasons • Outbreak investigation setting • Friends or neighbours controls are a common choice • Advantages: • Allows identifying controls fast • Will take care of gross confounding factors • May result in some overmatching, which places the investigator on “the safe side” Pro and cons

  29. Breaking the match • Rationale • Matching may limit the analysis • Matching may have been decided for operational purposes only • Procedure • Conduct matched analysis • Conduct unmatched analysis • Break the match if the results are unchanged Pro and cons

  30. Take-home messages • Matching is a difficult technique • Matching design means matched analysis • Matching can always be avoided

More Related