Tang Yongqiang
a Department of Biostatistics and Programming , Lexington , MA , USA.
J Biopharm Stat. 2018;28(3):518-533. doi: 10.1080/10543406.2017.1333999. Epub 2017 Sep 25.
Five algorithms are described for imputing partially observed recurrent events modeled by a negative binomial process, or more generally by a mixed Poisson process when the mean function for the recurrent events is continuous over time. We also discuss how to perform the imputation when the mean function of the event process has jump discontinuities. The validity of these algorithms is assessed by simulations. These imputation algorithms are potentially very useful in the implementation of pattern mixture models, which have been popularly used as sensitivity analysis under the non-ignorability assumption in clinical trials. A chronic granulomatous disease trial is analyzed for illustrative purposes.
本文描述了五种算法,用于对由负二项过程建模的部分观测到的复发事件进行插补,或者更一般地说,当复发事件的均值函数随时间连续时,对由混合泊松过程建模的部分观测到的复发事件进行插补。我们还讨论了在事件过程的均值函数存在跳跃间断点时如何进行插补。通过模拟评估了这些算法的有效性。这些插补算法在模式混合模型的实现中可能非常有用,模式混合模型在临床试验的不可忽略性假设下作为敏感性分析被广泛使用。为了说明目的,分析了一项慢性肉芽肿病试验。