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Testing interaction between treatment and high-dimensional covariates in randomized clinical trials

机译:在随机临床试验中检测治疗与高维协变量的相互作用

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摘要

In this paper, we considered different methods to test the interaction between treatment and a potentially large number (p) of covariates in randomized clinical trials. The simplest approach was to fit univariate (marginal) models and to combine the univariate statistics or p-values (e.g., minimum p-value). Another possibility was to reduce the dimension of the covariates using the principal components (PCs) and to test the interaction between treatment and PCs. Finally, we considered the Goeman global test applied to the high-dimensional interaction matrix, adjusted for the main (treatment and covariates) effects. These tests can be used for personalized medicine to test if a large set of biomarkers can be useful to identify a subset of patients who may be more responsive to treatment. We evaluated the performance of these methods on simulated data and we applied them on data from two early phases oncology clinical trials.
机译:在本文中,我们考虑了在随机临床试验中测试治疗与潜在大量(P)之间的相互作用的不同方法。 最简单的方法是适合单变量(边缘)模型,并结合单变量统计或p值(例如,最小p值)。 另一种可能性是使用主成分(PC)来减少协变量的尺寸,并测试治疗和PC之间的相互作用。 最后,我们考虑了应用于高维相互作用矩阵的老鹰全球测试,调整了主要(治疗和协变量)效应。 这些测试可用于个性化药物,以测试是否有大量的生物标志物可用于识别可能更响应治疗的患者的患者的子集。 我们评估了这些方法对模拟数据的性能,并从两种早期临床试验中施加了对数据的数据。

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