Volume 7, Issue 5 pp. 323-336
Original Article

Causal inference of interaction effects with inverse propensity weighting, G-computation and tree-based standardization

Joseph Kang

Corresponding Author

Joseph Kang

Department of Preventive Medicine, Northwestern University, Chicago, IL 60611 USA

Joseph Kang ([email protected])Search for more papers by this author
Xiaogang Su

Xiaogang Su

Department of Mathematical Sciences, University of Texas, El Paso, TX, USA

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Lei Liu

Lei Liu

Department of Preventive Medicine, Northwestern University, Chicago, IL 60611 USA

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Martha L. Daviglus

Martha L. Daviglus

Department of Preventive Medicine, Northwestern University, Chicago, IL 60611 USA

Department of Medicine, Institute for Minority Health Research, University of Illinois, Chicago, IL, USA

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First published: 18 April 2014
Citations: 5

Abstract

Given the recent interest of subgroup-level studies and personalized medicine, health research with causal inference has been developed for interaction effects of measured confounders. In estimating interaction effects, the inverse of the propensity weighting (IPW) method has been widely advocated despite the immediate availability of other competing methods such as G-computation estimates. This paper compares the advocated IPW method, the G-computation method, and our new Tree-based standardization method, which we call the Interaction effect Tree (IT). The IT procedure uses a likelihood-based decision rule to divide the subgroups into homogeneous groups where the G-computation can be applied. Our simulation studies indicate that the IT-based method along with the G-computation works robustly while the advocated IPW method needs some caution in its weighting. We applied the IT-based method to assess the effect of being overweight or obese on coronary artery calcification (CAC) in the Chicago Healthy Aging Study cohort.

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