Investigating Synthetic Controls with Randomized Clinical Trial Data in Rheumatoid Arthritis Studies

Zailong Wang, Zhuqing Yu, Su Chen, Lanju Zhang
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引用次数: 1

Abstract

The cost of clinical research for new drug development has been increasing rapidly. An effective approach to reduce the cost of clinical trials is to use a synthetic control arm to substitute a concurrent control arm. Synthetic control arms are usually created with propensity-score-based methods from historical or external patient-level control data. Although there is much literature discussing how to create synthetic control arms, little is known about how synthetic control arms perform compared to concurrent control arms in real clinical trials. In this paper, we take a real randomized controlled clinical trial and create a synthetic control arm for it using propensity-score-based methods from the control data in other randomized clinical trials. The goal is to demonstrate validity of using synthetic control arms by comparing the performance of synthetic control arms to the concurrent control arm. Four propensity-score-based methods, stratification, matching, inverse probability of treatment weighting, and covariate adjustment are applied to create the synthetic control group. Our results show that the synthetic control arm created with the stratification or matching method could provide an estimate of treatment effect that is as accurate as that of a real randomized clinical trial. This suggests a good opportunity to expedite drug development with reduced cost. We encourage use of these methods in clinical research for drug development when patient-level control data from comparable historical randomized clinical trials are available.
类风湿关节炎研究中随机临床试验数据的综合对照研究
新药开发的临床研究费用一直在迅速增加。降低临床试验成本的有效途径是用合成对照臂代替并发对照臂。合成控制臂通常使用基于倾向评分的方法,根据历史或外部患者水平的控制数据创建。虽然有很多文献讨论如何创建合成对照臂,但很少有人知道合成对照臂与并发对照臂在实际临床试验中的表现。本文选取了一项真实的随机对照临床试验,并利用其他随机临床试验的对照数据,采用基于倾向评分的方法为其创建了一个综合对照臂。目标是通过比较合成控制臂与并发控制臂的性能来证明使用合成控制臂的有效性。采用四种基于倾向评分的方法,分层、匹配、处理加权逆概率和协变量调整来创建合成对照组。我们的研究结果表明,用分层或匹配方法创建的合成对照臂可以提供与真正的随机临床试验一样准确的治疗效果估计。这为降低成本加快药物开发提供了一个很好的机会。我们鼓励在可比较的历史随机临床试验的患者水平对照数据可用时,在药物开发的临床研究中使用这些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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