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Quantifying the totality of treatment effect with multiple event-time observations in the presence of a terminal event from a comparative clinical study

机译:在来自比较性临床研究的终末事件的存在下,通过多个事件时间观察来量化治疗效果的总体

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摘要

To evaluate the totality of one treatmentu27s benefit/risk profile relative to an alternative treatment via a longitudinal comparative clinical study, the timing and occurrence of multiple clinical events are typically collected during the patientu27s followup. These multiple observations reflect the patientu27s disease progression/burden over time. The standard practice is to create a composite endpoint from the multiple outcomes, the timing of the occurrence of the first clinical event, to evaluate the treatment via the standard survival analysis techniques. By ignoring all events after the composite outcome, this type of assessment may not be ideal. Various parametric or semi-parametric procedures have been extensively discussed in the literature for the purposes of analyzing multiple event-time data. Many existing methods were developed based on extensive model assumptions. When the model assumptions are not plausible, the resulting inferences for the treatment effect may be misleading. In this article, we propose a simple, non-parametric inference procedure to quantify the treatment effect which has an intuitive, clinically meaningful interpretation. We use the data from a cardiovascular clinical trial for heart failure to illustrate the procedure. A simulation study is also conducted to evaluate the performance of the new proposal.
机译:为了通过纵向比较临床研究评估一种治疗相对于另一种治疗的总收益/风险,通常在患者随访期间收集多种临床事件的发生时间和发生情况。这些多重观察反映了患者随着时间推移的疾病进展/负担。标准做法是根据多种结果(第一个临床事件的发生时间)创建一个复合终点,以通过标准生存分析技术评估治疗方案。通过忽略综合结果之后的所有事件,这种类型的评估可能并不理想。为了分析多个事件时间数据,在文献中已经广泛讨论了各种参数或半参数过程。基于广泛的模型假设,开发了许多现有方法。当模型假设不合理时,对治疗效果的推论可能会产生误导。在本文中,我们提出了一种简单的非参数推理程序来量化治疗效果,该程序具有直观的,对临床有意义的解释。我们使用来自心衰的心血管临床试验的数据来说明该过程。还进行了仿真研究,以评估新提案的效果。

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