Conditional and unconditional categorical regression models with missing covariates |
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Authors: | Satten G A Carroll R J |
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Affiliation: | Centers for Disease Control and Prevention, Atlanta, Georgia 30333, USA. gas0@cdc.gov |
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Abstract: | We consider methods for analyzing categorical regression models when some covariates (Z) are completely observed but other covariates (X) are missing for some subjects. When data on X are missing at random (i.e., when the probability that X is observed does not depend on the value of X itself), we present a likelihood approach for the observed data that allows the same nuisance parameters to be eliminated in a conditional analysis as when data are complete. An example of a matched case-control study is used to demonstrate our approach. |
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Keywords: | Case-control study Endometrial cancer Likelihood Matching Missing at random Missing data Two-stage sample |
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