We propose a novel personalized concept for the optimal treatment selection for a situation where the response is a multivariate vector, that could contain right-censored variables such as survival time. The proposed method can be applied with any number of treatments and outcome variables, under a broad set of models. Following a working semiparametric Single Index Model that relates covariates and responses, we first define a patient-specific composite score, constructed from individual covariates. We then estimate conditional means of each response, given the patient score, correspond to each treatment, using a nonparametric smooth estimator. Next, a rank aggregation technique is applied to estimate an ordering of treatments based on ranked lists of treatment performance measures given by conditional means. We handle the right-censored data by incorporating the inverse probability of censoring weighting to the corresponding estimators. An empirical study illustrates the performance of the proposed method in finite sample problems. To show the applicability of the proposed procedure for real data, we also present a data analysis using HIV clinical trial data, that contained a right-censored survival event as one of the endpoints.
翻译:我们提出了一个新颖的个性化概念,用于对反应为多变量矢量的状态进行最佳治疗选择,其中可能包含诸如存活时间等经右检查的变量。拟议方法可以在一系列广泛的模型下适用于任何数量的治疗和结果变量。根据一个与共变和反应相关的工作半参数单一指数模型,我们首先从单个共变数中确定一个特定病人的复合得分。然后,我们根据病人的得分,估计每种反应的有条件方法与每种治疗对应,使用非对称的平滑估计仪。接下来,运用一个等级汇总技术,根据按等级排列的按有条件手段确定的治疗效度措施清单来估计治疗的顺序。我们处理正确的审查数据,将审查加权的反差纳入相应的估计者。一项实证研究说明了拟议方法在有限抽样问题中的性能。为了显示拟议的程序对真实数据的适用性,我们还利用艾滋病毒临床试验数据进行数据分析,其中含有作为终点之一的正确检验的存活事件。