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A clustering method to identify who benefits most from the treatment group in clinical trials

机译:在临床试验中确定谁从治疗组中受益最大的聚类方法

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In randomized controlled trials (RCTs), the most compelling need is to determine whether the treatment condition was more effective than control. However, it is generally recognized that not all participants in the treatment group of most clinical trials benefit equally. While subgroup analyses are often used to compare treatment effectiveness across pre-determined subgroups categorized by patient characteristics, methods to empirically identify naturally occurring clusters of persons who benefit most from the treatment group have rarely been implemented. This article provides a modeling framework to accomplish this important task. Utilizing information about individuals from the treatment group who had poor outcomes, the present study proposes an a priori clustering strategy that classifies the individuals with initially good outcomes in the treatment group into: (a) group GE (good outcome, effective), the latent subgroup of individuals for whom the treatment is likely to be effective and (b) group GI (good outcome, ineffective), the latent subgroup of individuals for whom the treatment is not likely to be effective. The method is illustrated through a re-analysis of a publically available data set from the National Institute on Drug Abuse. The RCT examines the effectiveness of motivational enhancement therapy from 461 outpatients with substance abuse problems. The proposed method identified latent subgroups GE and GI, and the comparison between the two groups revealed several significantly different and informative characteristics even though both subgroups had good outcomes during the immediate post-therapy period. As a diagnostic means utilizing out-of-sample forecasting performance, the present study compared the relapse rates during the long-term follow-up period for the two subgroups. As expected, group GI, composed of individuals for whom the treatment was hypothesized to be ineffective, had a significantly higher relapse rate than group GE (63% vs. 27%; χ ~(2)?=?9.99, p -value?=?.002).
机译:在随机对照试验(RCT)中,最迫切的需求是确定治疗条件是否比对照更有效。但是,通常公认的是,并非大多数临床试验的治疗组中的所有参与者都同样受益。虽然经常使用亚组分析来比较按患者特征分类的预定亚组的治疗效果,但很少能凭经验确定从治疗组中受益最大的自然人群的方法。本文提供了完成此重要任务的建模框架。本研究利用治疗组中预后差的个体的信息,提出了先验聚类策略,将治疗组中初始预后良好的个体分为:(a)GE组(预后良好) ,有效),可能对其有效的个体潜伏的亚组和(b)胃肠道疾病(良好结果,无效)的GI组(可能无效的个体)。通过重新分析美国国家药物滥用研究所的公开可用数据集来说明该方法。 RCT检查了461名有药物滥用问题的门诊患者进行动机增强治疗的有效性。所提出的方法鉴定了潜在的亚组GE和GI,并且两组之间的比较显示了几个显着不同和有益的特征,即使两个亚组在治疗后即刻均具有良好的结局。作为利用样本外预测性能的诊断手段,本研究比较了两个亚组在长期随访期间的复发率。正如预期的那样,由假设治疗无效的个体组成的GI组的复发率明显高于GE组(63%比27%; ~~(2)?=?9.99,< i> p -value?= ?. 002)。

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