Publication | Closed Access
Robust estimation for homoscedastic regression in the secondary analysis of caseâcontrol data
27
Citations
21
References
2012
Year
Primary analysis of caseâcontrol studies focuses on the relationship between disease D and a set of covariates of interest (Y ,X). A secondary application of the caseâcontrol study, which is often invoked in modern genetic epidemiologic association studies, is to investigate the interrelationship between the covariates themselves. The task is complicated owing to the caseâcontrol sampling, where the regression of Y on X is different from what it is in the population. Previous work has assumed a parametric distribution for Y given X and derived semiparametric efficient estimation and inference without any distributional assumptions about X.We take up the issue of estimation of a regression function whenY given X follows a homoscedastic regression model, but otherwise the distribution of Y is unspecified. The semiparametric efficient approaches can be used to construct semiparametric efficient estimates, but they suffer from a lack of robustness to the assumed model for Y given X. We take an entirely different approach.We show how to estimate the regression parameters consistently even if the assumed model forY given X is incorrect, and thus the estimates are model robust. For this we make the assumption that the disease rate is known or well estimated. The assumption can be dropped when the disease is rare, which is typically so for most caseâcontrol studies, and the estimation algorithm simplifies. Simulations and empirical examples are used to illustrate the approach.
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