PHMR Ltd., Westport, F28 ET85, Ireland.
National Institute for Health & Care Excellence, Manchester, M1 4BT, UK.
J Comp Eff Res. 2022 Aug;11(12):851-859. doi: 10.2217/cer-2022-0029. Epub 2022 Jun 9.
Evidence generated from nonrandomized studies (NRS) is increasingly submitted to health technology assessment (HTA) agencies. Unmeasured confounding is a primary concern with this type of evidence, as it may result in biased treatment effect estimates, which has led to much criticism of NRS by HTA agencies. Quantitative bias analyses are a group of methods that have been developed in the epidemiological literature to quantify the impact of unmeasured confounding and adjust effect estimates from NRS. Key considerations for application in HTA proposed in this article reflect the need to balance methodological complexity with ease of application and interpretation, and the need to ensure the methods fit within the existing frameworks used to assess nonrandomized evidence by HTA bodies.
越来越多的非随机研究(NRS)证据被提交给卫生技术评估(HTA)机构。对于这种类型的证据,未测量的混杂是一个主要关注点,因为它可能导致治疗效果估计值存在偏差,这导致 HTA 机构对 NRS 提出了很多批评。定量偏倚分析是流行病学文献中发展起来的一组方法,用于量化未测量混杂的影响,并调整 NRS 的效应估计值。本文提出的在 HTA 中应用的关键考虑因素反映了需要在方法的复杂性与应用和解释的简便性之间进行平衡,并且需要确保这些方法适用于 HTA 机构用于评估非随机证据的现有框架内。