Institute for Clinical Research and Health Policy Studies, Tufts Medical Center, Boston, MA, USA.
Trials. 2010 Aug 12;11:85. doi: 10.1186/1745-6215-11-85.
Mounting evidence suggests that there is frequently considerable variation in the risk of the outcome of interest in clinical trial populations. These differences in risk will often cause clinically important heterogeneity in treatment effects (HTE) across the trial population, such that the balance between treatment risks and benefits may differ substantially between large identifiable patient subgroups; the "average" benefit observed in the summary result may even be non-representative of the treatment effect for a typical patient in the trial. Conventional subgroup analyses, which examine whether specific patient characteristics modify the effects of treatment, are usually unable to detect even large variations in treatment benefit (and harm) across risk groups because they do not account for the fact that patients have multiple characteristics simultaneously that affect the likelihood of treatment benefit. Based upon recent evidence on optimal statistical approaches to assessing HTE, we propose a framework that prioritizes the analysis and reporting of multivariate risk-based HTE and suggests that other subgroup analyses should be explicitly labeled either as primary subgroup analyses (well-motivated by prior evidence and intended to produce clinically actionable results) or secondary (exploratory) subgroup analyses (performed to inform future research). A standardized and transparent approach to HTE assessment and reporting could substantially improve clinical trial utility and interpretability.
越来越多的证据表明,临床试验人群中感兴趣结局的风险常常存在很大差异。这些风险差异通常会导致治疗效果(HTE)在整个试验人群中出现明显的临床异质性,以至于治疗风险与获益之间的平衡在大的可识别亚组患者之间可能存在显著差异;在汇总结果中观察到的“平均”获益甚至可能不能代表试验中典型患者的治疗效果。传统的亚组分析检查特定患者特征是否会改变治疗效果,但通常无法检测到治疗获益(和危害)在风险组之间的较大变化,因为它们没有考虑到患者同时具有多个影响治疗获益可能性的特征。基于最近关于评估 HTE 的最佳统计方法的证据,我们提出了一个框架,该框架优先分析和报告基于风险的多变量 HTE,并建议其他亚组分析应明确标记为主要亚组分析(有充分的前期证据支持,并旨在产生临床可操作的结果)或次要(探索性)亚组分析(为了为未来的研究提供信息)。对 HTE 评估和报告进行标准化和透明化处理可以大大提高临床试验的实用性和可解释性。