Marta Bofill Roig, Ekkehard Glimm, Tobias Mielke, Martin Posch
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引用次数: 0
摘要
平台试验是一种随机临床试验,可同时比较多种干预措施,通常是与一种共同对照进行比较。测试实验干预措施的臂可能会随着时间的推移进入或离开平台。这意味着试验中实验干预臂的数量可能会随着试验的进展而发生变化。在平台试验中,确定将患者分配到治疗臂和对照臂的最佳分配率具有挑战性,因为最佳分配率取决于平台中的臂数,而后者通常会随着时间的推移而变化。此外,最佳分配率还取决于所使用的分析策略和所考虑的优化标准。在本文中,我们假定使用分层估计和基于回归模型的测试程序来调整时间趋势,从而推导出共享对照的平台试验的最佳治疗分配率。我们既考虑了仅使用同期对照的分析方法,也考虑了使用同期和非同期对照的分析方法,并假设总样本量是固定的。需要最小化的目标函数是效应估计值方差的最大值。我们的研究表明,最优解取决于试验中各臂的进入时间,一般来说,最优解与经典多臂试验中使用的 k 的平方根分配规则并不一致。我们通过案例研究说明了最优分配,并评估了与使用一对一和 k 的平方根分配的试验相比的功率和 1 类错误率。
Optimal allocation strategies in platform trials with continuous endpoints.
Platform trials are randomized clinical trials that allow simultaneous comparison of multiple interventions, usually against a common control. Arms to test experimental interventions may enter and leave the platform over time. This implies that the number of experimental intervention arms in the trial may change as the trial progresses. Determining optimal allocation rates to allocate patients to the treatment and control arms in platform trials is challenging because the optimal allocation depends on the number of arms in the platform and the latter typically varies over time. In addition, the optimal allocation depends on the analysis strategy used and the optimality criteria considered. In this article, we derive optimal treatment allocation rates for platform trials with shared controls, assuming that a stratified estimation and a testing procedure based on a regression model are used to adjust for time trends. We consider both, analysis using concurrent controls only as well as analysis methods using concurrent and non-concurrent controls and assume that the total sample size is fixed. The objective function to be minimized is the maximum of the variances of the effect estimators. We show that the optimal solution depends on the entry time of the arms in the trial and, in general, does not correspond to the square root of allocation rule used in classical multi-arm trials. We illustrate the optimal allocation and evaluate the power and type 1 error rate compared to trials using one-to-one and square root of allocations by means of a case study.
期刊介绍:
Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)