研究分层医疗亚组识别的稳定性。

IF 1.3 4区 医学 Q4 PHARMACOLOGY & PHARMACY Pharmaceutical Statistics Pub Date : 2024-06-25 DOI:10.1002/pst.2409
G M Hair, T Jemielita, S Mt-Isa, P M Schnell, R Baumgartner
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引用次数: 0

摘要

亚组分析可用于研究由基线特征定义的研究人群亚组之间的治疗效果异质性。近年来提出了几种方法,这些方法的统计问题,如多重性、复杂性和选择偏倚等已被广泛讨论。有些方法会对其中一个或多个问题进行调整,但很少有方法讨论或考虑亚组分配的稳定性。我们建议将探讨亚组的稳定性作为分层医疗的敏感性分析步骤,以评估所确定的亚组的稳健性,同时找出可能导致这种不稳定性的因素。在应用贝叶斯可信亚组后,可使用非参数引导法评估亚组和患者层面的稳定性。我们的研究结果表明,当治疗效果较小或不太明显时,患者更有可能在自引导重抽样中切换到不同的亚组(跳组)。相反,当治疗效果较大或极具说服力时,患者一般会留在同一亚组。虽然所提出的亚组稳定性方法是通过贝叶斯可信亚组法对时间到事件数据进行说明的,但这种通用方法也可用于其他亚组识别方法和终点。
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Investigating Stability in Subgroup Identification for Stratified Medicine.

Subgroup analysis may be used to investigate treatment effect heterogeneity among subsets of the study population defined by baseline characteristics. Several methodologies have been proposed in recent years and with these, statistical issues such as multiplicity, complexity, and selection bias have been widely discussed. Some methods adjust for one or more of these issues; however, few of them discuss or consider the stability of the subgroup assignments. We propose exploring the stability of subgroups as a sensitivity analysis step for stratified medicine to assess the robustness of the identified subgroups besides identifying possible factors that may drive this instability. After applying Bayesian credible subgroups, a nonparametric bootstrap can be used to assess stability at subgroup-level and patient-level. Our findings illustrate that when the treatment effect is small or not so evident, patients are more likely to switch to different subgroups (jumpers) across bootstrap resamples. In contrast, when the treatment effect is large or extremely convincing, patients generally remain in the same subgroup. While the proposed subgroup stability method is illustrated through Bayesian credible subgroups method on time-to-event data, this general approach can be used with other subgroup identification methods and endpoints.

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来源期刊
Pharmaceutical Statistics
Pharmaceutical Statistics 医学-统计学与概率论
CiteScore
2.70
自引率
6.70%
发文量
90
审稿时长
6-12 weeks
期刊介绍: Pharmaceutical Statistics is an industry-led initiative, tackling real problems in statistical applications. The Journal publishes papers that share experiences in the practical application of statistics within the pharmaceutical industry. It covers all aspects of pharmaceutical statistical applications from discovery, through pre-clinical development, clinical development, post-marketing surveillance, consumer health, production, epidemiology, and health economics. The Journal is both international and multidisciplinary. It includes high quality practical papers, case studies and review papers.
期刊最新文献
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