范畴变量
计算机科学
错误发现率
选择(遗传算法)
银屑病性关节炎
机器学习
变量(数学)
临床试验
人工智能
数据挖掘
医学
关节炎
数学
内科学
化学
数学分析
基因
生物化学
作者
Matthías Kormáksson,Luke J. Kelly,Xuan Zhu,Sibylle Haemmerle,Luminita Pricop,David Ohlssen
摘要
Knockoffs provide a general framework for controlling the false discovery rate when performing variable selection. Much of the Knockoffs literature focuses on theoretical challenges and we recognize a need for bringing some of the current ideas into practice. In this paper we propose a sequential algorithm for generating knockoffs when underlying data consists of both continuous and categorical (factor) variables. Further, we present a heuristic multiple knockoffs approach that offers a practical assessment of how robust the knockoff selection process is for a given dataset. We conduct extensive simulations to validate performance of the proposed methodology. Finally, we demonstrate the utility of the methods on a large clinical data pool of more than 2000 patients with psoriatic arthritis evaluated in four clinical trials with an IL-17A inhibitor, secukinumab (Cosentyx), where we determine prognostic factors of a well established clinical outcome. The analyses presented in this paper could provide a wide range of applications to commonly encountered datasets in medical practice and other fields where variable selection is of particular interest.
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