Office of Medical Education Research and Development and the Department of Epidemiology and Biostatistics, College of Human Medicine, Michigan State University, MI, USA.
4396Lancaster University and University of Cambridge, Cambridge, UK.
Stat Methods Med Res. 2021 Nov;30(11):2369-2381. doi: 10.1177/09622802211033640. Epub 2021 Sep 27.
An important goal of personalized medicine is to identify heterogeneity in treatment effects and then use that heterogeneity to target the intervention to those most likely to benefit. Heterogeneity is assessed using the predicted individual treatment effects framework, and a permutation test is proposed to establish if significant heterogeneity is present given the covariates and predictive model or algorithm used for predicted individual treatment effects. We first show evidence for heterogeneity in the effects of treatment across an illustrative example data set. We then use simulations with two different predictive methods (linear regression model and Random Forests) to show that the permutation test has adequate type-I error control. Next, we use an example dataset as the basis for simulations to demonstrate the ability of the permutation test to find heterogeneity in treatment effects for a predicted individual treatment effects estimate as a function of both effect size and sample size. We find that the proposed test has good power for detecting heterogeneity in treatment effects when the heterogeneity was due primarily to a single predictor, or when it was spread across the predictors. Power was found to be greater for predictions from a linear model than from random forests. This non-parametric permutation test can be used to test for significant differences across individuals in predicted individual treatment effects obtained with a given set of covariates using any predictive method with no additional assumptions.
个性化医学的一个重要目标是确定治疗效果的异质性,然后利用这种异质性将干预措施针对最有可能受益的人群。使用预测个体治疗效果框架来评估异质性,并提出置换检验,以确定在给定的协变量和用于预测个体治疗效果的预测模型或算法的情况下,是否存在显著的异质性。我们首先在一个说明性示例数据集上展示了治疗效果的异质性证据。然后,我们使用两种不同的预测方法(线性回归模型和随机森林)进行模拟,以表明置换检验具有适当的Ⅰ型错误控制。接下来,我们使用示例数据集作为模拟的基础,以演示置换检验在预测个体治疗效果估计值的治疗效果异质性方面的能力,该估计值是作为效应大小和样本大小的函数。我们发现,当异质性主要归因于单个预测因子时,或者当异质性分布在预测因子之间时,该检验具有良好的检测治疗效果异质性的功效。与随机森林相比,线性模型的预测功效更高。这种非参数置换检验可以用于检验在给定的协变量集下使用任何预测方法获得的预测个体治疗效果在个体之间是否存在显著差异,而无需额外的假设。