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Nonparametric group sequential methods for recurrent and terminal events from multiple follow‐up windows

机译:来自多个后续窗口的复发和终端事件的非参数组顺序方法

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Few methods are currently available for group sequential analysis of recurrent events data subject to a terminal event in the clinical trial setting. This research helps fill this gap by developing a completely nonparametric group sequential monitoring procedure for use with the two‐sample Tayob and Murray statistic. Advantages of the Tayob and Murray statistic include high power to detect treatment differences when there is correlation between recurrent event times or between recurrent and terminal events in an individual. This statistic does not suffer bias from dependent censoring, regardless of the correlation between event times in an individual. This manuscript briefly reviews the Tayob and Murray statistic, develops and describes how to use methods for its group sequential analysis, and through simulation, compares its operating characteristics with those of Cook and Lawless, which is currently in use as the only available nonparametric method for group sequential analysis of recurrent event data. The merits of our proposed approach are most clearly demonstrated when gap times between recurrent events are correlated; when gap times between events are independent, the Cook and Lawless method is difficult to beat. Simulations demonstrate that as correlation between recurrent event times grows, the reduction in power using the Cook and Lawless approach is substantial when compared to our method. Finally, we use our method to analyze recurrent acute exacerbation outcomes from the azithromycin in chronic obstructive pulmonary disease trial.
机译:目前少数方法可用于对临床试验环境中终端事件进行的经常性事件数据的分组顺序分析。该研究通过开发完全非参数组顺序监测程序来填补这种差距,以便与双样本Tayob和Murray统计数据一起使用。托盘和默里统计的优点包括高功率,以检测在经常性事件时间之间存在相关性或个人中的复发和终端事件之间的相关性时检测治疗差异。无论个体中的事件时间之间的相关性如何,这种统计数据都不会受到依赖审查的偏见。此手稿简要介绍Tayob和Murray统计,开发和描述如何使用其组顺序分析的方法,并通过仿真将其与Cook和Accless的操作特性进行比较,该特性当前正在使用的咖啡和律的操作特性作为唯一可用的非参数方法复发事件数据的组序贯分析。当复发事件之间的间隙时间相关时,我们所提出的方法的优点将最清楚地证明;当事件之间的差距时间是独立的时,厨师和无法击败厨师和无法禁止的方法。模拟表明,随着经常性事件时间之间的相关性,与我们的方法相比,使用厨师和无,使用厨师和无,方法的功率降低是很大的。最后,我们利用我们在慢性阻塞性肺病试验中分析来自阿奇霉素的复发性急性加剧结果。

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