In this paper we develop a general framework for quantifying how binary risk
factors jointly influence a binary outcome. Our key result is an additive
expansion of odds ratios as a sum of marginal effects and interaction terms of
varying order. These odds ratio expansions are used for estimating the excess
odds ratio, attributable proportion and synergy index for a case-control
dataset by means of maximum likelihood from a logistic regression model. The
confidence intervals associated with these estimates of joint effects and
interaction of risk factors rely on the delta method. Our methodology is
illustrated with a large Nordic meta dataset for multiple sclerosis. It
combines four studies, with a total of 6265 cases and 8401 controls. It has
three risk factors (smoking and two genetic factors) and a number of other
confounding variables.Comment: Published at http://dx.doi.org/10.15559/17-VMSTA77 in the Modern
Stochastics: Theory and Applications (https://www.i-journals.org/vtxpp/VMSTA)
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