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Activity Number: 236 - Causal Modeling Methods in Epidemiology
Type: Contributed
Date/Time: Monday, July 31, 2017 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics in Epidemiology
Abstract #324794
Title: Sufficient Cause Interaction for Ordinal Outcomes
Author(s): Jaffer Zaidi* and Tyler J. VanderWeele
Companies: Harvard University and Harvard University
Keywords: Causal inference ; Mechanistic Interaction ; Ordinal Outcomes ; Sufficient Cause Model ; HIV ; Epidemiology
Abstract:

VanderWeele and Robins (Biometrika 2008) derived counterfactual and empirical conditions for sufficient cause interaction between two binary exposures for an event. Sufficient cause interaction can be shown present if there exists a subpopulation for whom the binary outcome occurs if both exposures are present, but will not occur if either of the two exposures is absent. We extend the sufficient cause framework from binary outcomes to ordinal outcomes. Novel empirical conditions, in the form of inequality constraints on the observed data distribution, are derived for detecting sufficient cause interaction for ordinal outcomes. These inequality constraints cannot be derived through first dichotomizing the ordinal outcome, then applying the earlier inequality tests from the framework for binary outcomes. Inference to test the null hypothesis that there is no sufficient cause interaction using these novel inequality constraints is developed. Using the Stanford HIV drug resistance database, we discover mutations that mechanistically interact to confer resistance (none, partial, full) to particular HIV drugs.


Authors who are presenting talks have a * after their name.

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