A deeper look at two concepts of measuring gene –gene interactions: logistic regression and interaction information revisited

ABSTRACT Detection of gene–gene interactions is one of the most important challenges in genome‐wide case–control studies. Besides traditional logistic regression analysis, recently the entropy‐based methods attracted a significant attention. Among entropy‐based methods, interaction information is one of the most promising measures having many desirable properties. Although both logistic regression and interaction information have been used in several genome‐wide association studies, the relationship between them has not been thoroughly investigated theoretically. The present paper attempts to fill this gap. We show that although certain connections between the two methods exist, in general they refer two different concepts of dependence and looking for interactions in those two senses leads to different approaches to interaction detection. We introduce ordering between interaction measures and specify conditions for independent and dependent genes under which interaction information is more discriminative measure than logistic regression. Moreover, we show that for so‐called perfect distributions those measures are equivalent. The numerical experiments illustrate the theoretical findings indicating that interaction information and its modified version are more universal tools for detecting various types of interaction than logistic regression and linkage disequilibrium measures.
Source: Genetic Epidemiology - Category: Epidemiology Authors: Tags: RESEARCH ARTICLE Source Type: research
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