论文标题

将贝叶斯动态线性模型应用于随机分配临床试验

Application of Bayesian Dynamic Linear Models to Random Allocation Clinical Trials

论文作者

Lee III, Albert. H., Boone, Edward L, Sabo, Roy T., Donahue, Erin

论文摘要

临床试验中使用的随机分配模型有助于研究人员确定哪种特定治疗方法通过减少组之间的偏见提供了最佳结果。但是,这种确定通常会使研究人员与为患者提供不利治疗的道德问题作斗争。许多方法(例如扮演获胜者和随机游戏)在历史上已经利用了胜利者规则来确定患者分配,但是,这些方法容易增加不利治疗的分配。最近,\ citep {sabo2014aptive}提出了一种新的贝叶斯方法,并提出了\ citep {donahue20202020allocation}。但是,如果需要MCMC方法,此方法可能会很耗时。我们建议使用一种使用动态线性模型(DLM)\ citep {harrison1999bayesian}来提高分配速度的新方法,同时还减少了患者分配样本,以识别更有利的治疗方法。此外,对多个参数进行了灵敏度分析。最后,计算了一个贝叶斯因子,以确定在指定切断的未使用的患者预算的比例,这将用于确定有利于更好治疗的决定性证据。

Random allocation models used in clinical trials aid researchers in determining which of a particular treatment provides the best results by reducing bias between groups. Often however, this determination leaves researchers battling ethical issues of providing patients with unfavorable treatments. Many methods such as Play the Winner and Randomized Play the Winner Rule have historically been utilized to determine patient allocation, however, these methods are prone to the increased assignment of unfavorable treatments. Recently a new Bayesian Method using Decreasingly Informative Priors has been proposed by \citep{sabo2014adaptive}, and later \citep{donahue2020allocation}. Yet this method can be time consuming if MCMC methods are required. We propose the use of a new method which uses Dynamic Linear Model (DLM) \citep{harrison1999bayesian} to increase allocation speed while also decreasing patient allocation samples necessary to identify the more favorable treatment. Furthermore, a sensitivity analysis is conducted on multiple parameters. Finally, a Bayes Factor is calculated to determine the proportion of unused patient budget remaining at a specified cut off and this will be used to determine decisive evidence in favor of the better treatment.

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