Latent class regression: Inference and estimation with two‐stage multiple imputation |
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Authors: | Ofer Harel Hwan Chung Diana Miglioretti |
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Affiliation: | 1. Department of Statistics, University of Connecticut, , Storrs, CT, 06269‐4120 USA;2. Department of Statistics, Korea University, , Seoul, 136‐701 Korea;3. Department of Public Health Sciences, UC Davis School of Medicine, One Shields Avenue, , Davis, CA, 95616 USA |
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Abstract: | Latent class regression (LCR) is a popular method for analyzing multiple categorical outcomes. While nonresponse to the manifest items is a common complication, inferences of LCR can be evaluated using maximum likelihood, multiple imputation, and two‐stage multiple imputation. Under similar missing data assumptions, the estimates and variances from all three procedures are quite close. However, multiple imputation and two‐stage multiple imputation can provide additional information: estimates for the rates of missing information. The methodology is illustrated using an example from a study on racial and ethnic disparities in breast cancer severity. |
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Keywords: | Latent class regression Missing data Missing information Multiple imputation |
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