Efficient Multiple Imputation for Sensitivity Analysis of Recurrent Events Data with Informative Censoring
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Joseph G. Ibrahim | Donglin Zeng | Joseph F. Heyse | Guoqing Diao | Guanghan F. Liu | Yilong Zhang | Gregory T. Golm | J. Heyse | J. Ibrahim | D. Zeng | G. Diao | G. Golm | G. Liu | Yilong Zhang
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