Validating the Assumptions of Population Adjustment: Application of Multilevel Network Meta-regression to a Network of Treatments for Plaque Psoriasis.

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Medical Decision Making Pub Date : 2023-01-01 Epub Date: 2022-08-23 DOI:10.1177/0272989X221117162
David M Phillippo, Sofia Dias, A E Ades, Mark Belger, Alan Brnabic, Daniel Saure, Yves Schymura, Nicky J Welton
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引用次数: 0

Abstract

Background: Network meta-analysis (NMA) and indirect comparisons combine aggregate data (AgD) from multiple studies on treatments of interest but may give biased estimates if study populations differ. Population adjustment methods such as multilevel network meta-regression (ML-NMR) aim to reduce bias by adjusting for differences in study populations using individual patient data (IPD) from 1 or more studies under the conditional constancy assumption. A shared effect modifier assumption may also be necessary for identifiability. This article aims to demonstrate how the assumptions made by ML-NMR can be assessed in practice to obtain reliable treatment effect estimates in a target population.

Methods: We apply ML-NMR to a network of evidence on treatments for plaque psoriasis with a mix of IPD and AgD trials reporting ordered categorical outcomes. Relative treatment effects are estimated for each trial population and for 3 external target populations represented by a registry and 2 cohort studies. We examine residual heterogeneity and inconsistency and relax the shared effect modifier assumption for each covariate in turn.

Results: Estimated population-average treatment effects were similar across study populations, as differences in the distributions of effect modifiers were small. Better fit was achieved with ML-NMR than with NMA, and uncertainty was reduced by explaining within- and between-study variation. We found little evidence that the conditional constancy or shared effect modifier assumptions were invalid.

Conclusions: ML-NMR extends the NMA framework and addresses issues with previous population adjustment approaches. It coherently synthesizes evidence from IPD and AgD studies in networks of any size while avoiding aggregation bias and noncollapsibility bias, allows for key assumptions to be assessed or relaxed, and can produce estimates relevant to a target population for decision-making.

Highlights: Multilevel network meta-regression (ML-NMR) extends the network meta-analysis framework to synthesize evidence from networks of studies providing individual patient data or aggregate data while adjusting for differences in effect modifiers between studies (population adjustment). We apply ML-NMR to a network of treatments for plaque psoriasis with ordered categorical outcomes.We demonstrate for the first time how ML-NMR allows key assumptions to be assessed. We check for violations of conditional constancy of relative effects (such as unobserved effect modifiers) through residual heterogeneity and inconsistency and the shared effect modifier assumption by relaxing this for each covariate in turn.Crucially for decision making, population-adjusted treatment effects can be produced in any relevant target population. We produce population-average estimates for 3 external target populations, represented by the PsoBest registry and the PROSPECT and Chiricozzi 2019 cohort studies.

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验证人口调整的假设:将多层次网络元回归应用于斑块状银屑病治疗网络。
背景:网络荟萃分析(NMA)和间接比较结合了多项研究中有关治疗方法的总体数据(AgD),但如果研究人群不同,则可能会得出有偏差的估计值。多层次网络荟萃回归(ML-NMR)等人群调整方法旨在通过在条件恒定假设下使用来自一项或多项研究的患者个体数据(IPD)来调整研究人群的差异,从而减少偏差。共享效应修饰符假设可能也是可识别性的必要条件。本文旨在展示如何在实践中评估 ML-NMR 所做的假设,以便在目标人群中获得可靠的治疗效果估计值:我们将 ML-NMR 应用于斑块状银屑病治疗方法的证据网络,该网络由报告有序分类结果的 IPD 和 AgD 试验组成。我们估算了每个试验人群以及由一项登记和两项队列研究代表的 3 个外部目标人群的相对治疗效果。我们检查了残余异质性和不一致性,并依次放宽了每个协变量的共享效应修饰假定:结果:由于效应修饰因子的分布差异较小,不同研究人群的估计人群平均治疗效果相似。与 NMA 相比,ML-NMR 的拟合效果更好,而且通过解释研究内部和研究之间的差异减少了不确定性。我们发现几乎没有证据表明条件恒定或共享效应修饰因子假设是无效的:结论:ML-NMR 扩展了 NMA 框架,解决了以往人群调整方法存在的问题。它能在任何规模的网络中连贯地综合 IPD 和 AgD 研究的证据,同时避免聚集偏倚和非可比性偏倚,允许对关键假设进行评估或放宽,并能产生与目标人群相关的估计值,以供决策之用:多层次网络荟萃回归(ML-NMR)扩展了网络荟萃分析框架,可从提供单个患者数据或总体数据的研究网络中综合证据,同时调整不同研究之间效应修饰因子的差异(群体调整)。我们首次展示了 ML-NMR 如何评估关键假设。我们通过残余异质性和不一致性检查相对效应条件恒定性的违反情况(如未观察到的效应修饰因子),并通过依次放宽每个协变量的共享效应修饰因子假设检查违反情况。我们得出了 3 个外部目标人群的人群平均估计值,分别以 PsoBest 登记、PROSPECT 和 Chiricozzi 2019 队列研究为代表。
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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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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