结果(博弈论)
生存分析
估计员
计算机科学
人口
临床试验
危险系数
非参数统计
决策规则
医学
个性化医疗
统计
数学
人工智能
置信区间
内科学
生物信息学
环境卫生
数理经济学
生物
作者
Qijia He,Shixiao Zhang,Michael LeBlanc,Ying‐Qi Zhao
标识
DOI:10.1177/09622802241262525
摘要
Individualized treatment rules inform tailored treatment decisions based on the patient’s information, where the goal is to optimize clinical benefit for the population. When the clinical outcome of interest is survival time, most of current approaches typically aim to maximize the expected time of survival. We propose a new criterion for constructing Individualized treatment rules that optimize the clinical benefit with survival outcomes, termed as the adjusted probability of a longer survival. This objective captures the likelihood of living longer with being on treatment, compared to the alternative, which provides an alternative and often straightforward interpretation to communicate with clinicians and patients. We view it as an alternative to the survival analysis standard of the hazard ratio and the increasingly used restricted mean survival time. We develop a new method to construct the optimal Individualized treatment rule by maximizing a nonparametric estimator of the adjusted probability of a longer survival for a decision rule. Simulation studies demonstrate the reliability of the proposed method across a range of different scenarios. We further perform data analysis using data collected from a randomized Phase III clinical trial (SWOG S0819).
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