Department of Biostatistics & Data Science, The University of Kansas Medical Center, Kansas City, KS, USA.
Stat Methods Med Res. 2024 Aug;33(8):1355-1375. doi: 10.1177/09622802241259172. Epub 2024 Aug 6.
For personalized medicine, we propose a general method of evaluating the potential performance of an individualized treatment rule in future clinical applications with new patients. We focus on rules that choose the most beneficial treatment for the patient out of two active (nonplacebo) treatments, which the clinician will prescribe regularly to the patient after the decision. We develop a measure of the individualization potential (IP) of a rule. The IP compares the expected effectiveness of the rule in a future clinical individualization setting versus the effectiveness of not trying individualization. We illustrate our evaluation method by explaining how to measure the IP of a useful type of individualized rules calculated through a new parametric interaction model of data from parallel-group clinical trials with continuous responses. Our interaction model implies a structural equation model we use to estimate the rule and its IP. We examine the IP both theoretically and with simulations when the estimated individualized rule is put into practice in new patients. Our individualization approach was superior to outcome-weighted machine learning according to simulations. We also show connections with crossover and N-of-1 trials. As a real data application, we estimate a rule for the individualization of treatments for diabetic macular edema and evaluate its IP.
对于个性化医学,我们提出了一种通用方法,用于评估未来临床应用中针对新患者的个体化治疗规则的潜在性能。我们专注于从两种活性(非安慰剂)治疗方法中为患者选择最有益治疗方法的规则,临床医生将在决策后定期为患者开处方。我们制定了一种规则个体化潜力(IP)的度量标准。IP 将规则在未来临床个体化环境中的预期效果与不尝试个体化的效果进行比较。我们通过解释如何通过新的平行组临床试验中连续反应数据的参数交互模型计算出有用的个体化规则类型来衡量其 IP,从而说明了我们的评估方法。我们的交互模型暗示了我们用于估计规则及其 IP 的结构方程模型。当将估计的个体化规则应用于新患者时,我们从理论和模拟两方面检查了 IP。根据模拟,我们的个体化方法优于基于结果的机器学习。我们还展示了与交叉和 N-of-1 试验的联系。作为真实数据应用,我们估计了一种用于糖尿病性黄斑水肿个体化治疗的规则,并评估了其 IP。