Using covariate-specific disease prevalence information to increase the power of case-control studies

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Abstract

Public registration databases and large cohort studies provide vital information on disease prevalence at various levels of a risk factor. This auxiliary information can be helpful in conducting statistical inference in a new study.We aim to develop a statistical procedure that improves the efficiency of the logistic regression model for a case-control study by utilizing auxiliary information on covariate-specific disease prevalence via a series of unbiased estimating equations. We adopt empirical likelihood for statistical inference, and demonstrate its advantages through simulation and an application

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Qin, J., Zhang, H., Li, P., Albanes, D., & Yu, K. (2015). Using covariate-specific disease prevalence information to increase the power of case-control studies. Biometrika, 102(1), 169–180. https://doi.org/10.1093/biomet/asu048

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