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Comparisons of imputation methods with application to assess factors associated with self efficacy of physical activity in breast cancer survivors
Authors:Yunxi Zhang  Ye Lin  George Baum  Karen M Basen-Engquist  Michael D Swartz
Institution:1. Department of Biostatistics and Data Science, The University of Texas Health Science Center at Houston, Houston, TX, U.S.A;2. The University of Texas MD Anderson Cancer Center, Houston, TX, U.S.A
Abstract:ABSTRACT

Missing data are commonly encountered in self-reported measurements and questionnaires. It is crucial to treat missing values using appropriate method to avoid bias and reduction of power. Various types of imputation methods exist, but it is not always clear which method is preferred for imputation of data with non-normal variables. In this paper, we compared four imputation methods: mean imputation, quantile imputation, multiple imputation, and quantile regression multiple imputation (QRMI), using both simulated and real data investigating factors affecting self-efficacy in breast cancer survivors. The results displayed an advantage of using multiple imputation, especially QRMI when data are not normal.
Keywords:Missing data  Multiple imputation  Non-normal  Quantile imputation
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