Individualizing treatment assignment can improve outcomes for diseases with patient-to-patient variability in comparative treatment effects. When a clinical trial demonstrates that some patients improve on treatment while others do not, it is tempting to assume that treatment effect heterogeneity exists. However, if variability in response is mainly driven by factors other than treatment, investigating the extent to which covariate data can predict differential treatment response is a potential waste of resources. Motivated by recent meta-analyses assessing the potential of individualizing treatment for major depressive disorder using only summary statistics, we provide a method that uses summary statistics widely available in published clinical trial results to bound the benefit of optimally assigning treatment to each patient. We also offer alternate bounds for settings in which trial results are stratified by another covariate. We demonstrate our approach using summary statistics from a depression treatment trial. Our methods are implemented in the rct2otrbounds R package, which is available at https://github.com/ngalanter/rct2otrbounds .
翻译:如果临床试验显示,有些病人在治疗方面有所改进,而另一些病人则没有改善,那么,人们就会认为,治疗的效果是异质的。然而,如果反应的变异主要受治疗以外的因素驱动,那么调查共变数据在多大程度上可以预测不同治疗反应是潜在的资源浪费。我们利用最近的元分析评估,评估个人化治疗对严重抑郁症的潜在可能性,仅使用简要统计数据,我们提供了一种方法,在公布的临床试验结果中广泛提供简要统计数据,将最佳治疗的好处约束在每位病人身上。我们还为试验结果被另一个同变体分化的环境提供了替代界限。我们用抑郁症治疗试验的简要统计数据展示了我们的方法。我们的方法在rct2otrbounds R软件包中得到了实施,该软件可在https://github.com/ngalanter/rct2rbounds上查阅。