Data collected in clinical trials are often composed of multiple types of variables. For example, laboratory measurements and vital signs are longitudinal data of continuous or categorical variables, adverse events may be recurrent events, and death is a time-to-event variable. Missing data due to patients' discontinuation from the study or as a result of handling intercurrent events using a hypothetical strategy almost always occur during any clinical trial. Imputing these data with mixed types of variables simultaneously is a challenge that has not been studied. In this article, we propose using an approximate fully conditional specification to impute the missing data. Simulation shows the proposed method provides satisfactory results under the assumption of missing at random. Finally, real data from a major diabetes clinical trial are analyzed to illustrate the potential benefit of the proposed method.
翻译:临床试验中收集的数据往往由多种变量组成,例如,实验室测量和生命迹象是连续或绝对变量的纵向数据,不利事件可能是经常性事件,死亡是一个时间到活动变数。由于病人停止研究,或由于使用假设战略处理周期间事件而缺少的数据几乎总是在任何临床试验期间发生。用混合变量同时计算这些数据是一个尚未研究的挑战。在本篇文章中,我们提议使用一个大致的完全有条件的规格来估计缺失的数据。模拟显示拟议方法在随机失踪假设下提供了令人满意的结果。最后,对重大糖尿病临床试验的实际数据进行了分析,以说明拟议方法的潜在好处。