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About this Publication
Title
On estimation of time-dependent attributable fraction from population-based case-control studies.
Pubmed ID
28099992 (View this publication on the PubMed website)
Publication
Biometrics. 2017; Volume 73 (Issue 3): Pages 866-875
Authors
Zhao W, Chen YQ, Hsu L
Affiliations
  • Department of Biostatistics, University of Washington, Seattle, Washington, U.S.A.
  • Biostatistics and Biomathematics Program, Fred Hutchinson Cancer Research Center, Seattle, Washington, U.S.A.
Abstract

Population attributable fraction (PAF) is widely used to quantify the disease burden associated with a modifiable exposure in a population. It has been extended to a time-varying measure that provides additional information on when and how the exposure's impact varies over time for cohort studies. However, there is no estimation procedure for PAF using data that are collected from population-based case-control studies, which, because of time and cost efficiency, are commonly used for studying genetic and environmental risk factors of disease incidences. In this article, we show that time-varying PAF is identifiable from a case-control study and develop a novel estimator of PAF. Our estimator combines odds ratio estimates from logistic regression models and density estimates of the risk factor distribution conditional on failure times in cases from a kernel smoother. The proposed estimator is shown to be consistent and asymptotically normal with asymptotic variance that can be estimated empirically from the data. Simulation studies demonstrate that the proposed estimator performs well in finite sample sizes. Finally, the method is illustrated by a population-based case-control study of colorectal cancer.

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