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前瞻性、适应性汇总分析(FAME)框架:来自随机试验的汇总数据。

A framework for prospective, adaptive meta-analysis (FAME) of aggregate data from randomised trials.

机构信息

MRC Clinical Trials Unit at UCL, Institute of Clinical Trials & Methodology, University College London, United Kingdom.

出版信息

PLoS Med. 2021 May 6;18(5):e1003629. doi: 10.1371/journal.pmed.1003629. eCollection 2021 May.

Abstract

BACKGROUND

The vast majority of systematic reviews are planned retrospectively, once most eligible trials have completed and reported, and are based on aggregate data that can be extracted from publications. Prior knowledge of trial results can introduce bias into both review and meta-analysis methods, and the omission of unpublished data can lead to reporting biases. We present a collaborative framework for prospective, adaptive meta-analysis (FAME) of aggregate data to provide results that are less prone to bias. Also, with FAME, we monitor how evidence from trials is accumulating, to anticipate the earliest opportunity for a potentially definitive meta-analysis.

METHODOLOGY

We developed and piloted FAME alongside 4 systematic reviews in prostate cancer, which allowed us to refine the key principles. These are to: (1) start the systematic review process early, while trials are ongoing or yet to report; (2) liaise with trial investigators to develop a detailed picture of all eligible trials; (3) prospectively assess the earliest possible timing for reliable meta-analysis based on the accumulating aggregate data; (4) develop and register (or publish) the systematic review protocol before trials produce results and seek appropriate aggregate data; (5) interpret meta-analysis results taking account of both available and unavailable data; and (6) assess the value of updating the systematic review and meta-analysis. These principles are illustrated via a hypothetical review and their application to 3 published systematic reviews.

CONCLUSIONS

FAME can reduce the potential for bias, and produce more timely, thorough and reliable systematic reviews of aggregate data.

摘要

背景

绝大多数系统评价都是回顾性计划的,即在大多数合格试验完成并报告后,并且基于可以从出版物中提取的汇总数据。试验结果的先验知识可能会给审查和荟萃分析方法带来偏差,并且未发表数据的遗漏可能会导致报告偏差。我们提出了一种前瞻性、适应性汇总数据荟萃分析(FAME)的协作框架,以提供较少受到偏差影响的结果。此外,使用 FAME,我们可以监测来自试验的证据如何积累,以预测进行潜在确定性荟萃分析的最早机会。

方法

我们在前列腺癌的 4 项系统评价中开发并试行 FAME,使我们能够完善关键原则。这些原则是:(1)在试验进行中或尚未报告时尽早开始系统评价过程;(2)与试验研究者联系,详细了解所有合格试验;(3)根据累积的汇总数据,前瞻性评估进行可靠荟萃分析的最早可能时间;(4)在试验产生结果并寻求适当的汇总数据之前,制定并注册(或发表)系统评价方案;(5)解释荟萃分析结果时考虑到可用和不可用数据;以及(6)评估更新系统评价和荟萃分析的价值。通过一个假设的综述和对 3 个已发表系统综述的应用来说明这些原则。

结论

FAME 可以减少潜在的偏差,并对汇总数据进行更及时、更全面和更可靠的系统评价。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a1c9/8115774/ddfc3e1c124d/pmed.1003629.g001.jpg

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