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在混合 RCT/RWD 中进行匹配:关于关联因果估计量的框架。

Matching within a hybrid RCT/RWD: framework on associated causal estimands.

机构信息

Takeda Pharmaceuticals, Statistics and Quantitative Sciences, Cambridge, Massachusetts, United States.

Global Statistical Sciences, Eli Lilly and Company, Indianapolis, Indiana, United States.

出版信息

J Biopharm Stat. 2023 Jul 4;33(4):439-451. doi: 10.1080/10543406.2022.2105346. Epub 2022 Aug 5.

DOI:10.1080/10543406.2022.2105346
PMID:35929973
Abstract

As the regulatory environment becomes progressively receptive toward utilizing real-world evidence, a spectrum of real-world data incorporation techniques in trial conduct and analysis has seen increasing interest and adoption in different stages of drug development. Of particular interest is leveraging external control data to augment the control arm in a concurrent randomized controlled trial, where patients are enrolled in both investigational treatment arm and the control arm. Yet despite the emerging literature in external data borrowing in a hybrid trial setting, very little discussion focuses on delineating what should be matched and what is actually being estimated, especially when a variety of matching schemes can be considered. In general, external control can be matched in four different ways: (1) matching with the intersection between investigational treatment and concurrent control, (2) matching with the union of concurrent investigational treatment and concurrent control, (3) matching with concurrent control alone, and (4) matching with investigational treatment alone. In this article, the formulation of estimands for different matching schemes are detailed to describe what these matching methods facilitate to answer. Simulation studies are also conducted to evaluate the performance characteristics under different matching schemes, estimation methods, effect size assumptions, and missingness of confounders.

摘要

随着监管环境对利用真实世界证据变得越来越接受,在试验实施和分析中采用一系列真实世界数据纳入技术,在药物开发的不同阶段都引起了越来越多的关注和采用。特别值得关注的是,利用外部对照数据来增加同期随机对照试验中的对照臂,在该试验中,患者同时入组研究治疗组和对照组。然而,尽管在混合试验环境中外部数据借用方面出现了越来越多的文献,但很少有讨论集中在界定应该匹配什么和实际估计什么上,尤其是当可以考虑多种匹配方案时。一般来说,外部对照可以通过以下四种不同的方式进行匹配:(1)与研究治疗和同期对照的交集进行匹配,(2)与同期研究治疗和同期对照的并集进行匹配,(3)仅与同期对照进行匹配,(4)仅与研究治疗进行匹配。本文详细阐述了不同匹配方案的估计目标的制定,以描述这些匹配方法有助于回答的问题。还进行了模拟研究,以评估不同匹配方案、估计方法、效应大小假设和混杂因素缺失下的性能特征。

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Matching within a hybrid RCT/RWD: framework on associated causal estimands.在混合 RCT/RWD 中进行匹配:关于关联因果估计量的框架。
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引用本文的文献

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Clinical Research Informatics: a Decade-in-Review.临床研究信息学:十年回顾
Yearb Med Inform. 2024 Aug;33(1):127-142. doi: 10.1055/s-0044-1800732. Epub 2025 Apr 8.
2
Visualizing the target estimand in comparative effectiveness studies with multiple treatments.多治疗方法的比较疗效研究中目标估计值的可视化。
J Comp Eff Res. 2024 Feb;13(2):e230089. doi: 10.57264/cer-2023-0089. Epub 2024 Jan 23.
3
Utilization of anonymization techniques to create an external control arm for clinical trial data.利用匿名化技术为临床试验数据创建外部对照臂。
BMC Med Res Methodol. 2023 Nov 4;23(1):258. doi: 10.1186/s12874-023-02082-5.