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Outcome-Weighted Learning for Personalized Medicine with Multiple Treatment Options

机译:具有多种治疗选择的个性化医学成果加权学习

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To achieve personalized medicine, an individualized treatment strategy assigning treatment based on an individual's characteristics that leads to the largest benefit can be considered. Recently, a machine learning approach, O-learning, has been proposed to estimate an optimal individualized treatment rule (ITR), but it is developed to make binary decisions and thus limited to compare two treatments. When many treatment options are available, existing methods need to be adapted by transforming a multiple treatment selection problem into multiple binary treatment selections, for example, via one-vs-one or one-vs-all comparisons. However, combining multiple binary treatment selection rules into a single decision rule requires careful consideration, because it is known in the multicategory learning literature that some approaches may lead to ambiguous decision rules. In this work, we propose a novel and efficient method to generalize outcome-weighted learning for binary treatment to multi-treatment settings. We solve a multiple treatment selection problem via sequential weighted support vector machines. We prove that the resulting ITR is Fisher consistent and obtain the convergence rate of the estimated value function to the true optimal value, i.e., the estimated treatment rule leads to the maximal benefit when the data size goes to infinity. We conduct simulations to demonstrate that the proposed method has superior performance in terms of lower mis-allocation rates and improved expected values. An application to a three-arm randomized trial of major depressive disorder shows that an ITR tailored to individual patient's expectancy of treatment efficacy, their baseline depression severity and other characteristics reduces depressive symptoms more than non-personalized treatment strategies (e.g., treating all patients with combined pharmacotherapy and psychotherapy).
机译:为了实现个性化医疗,可以考虑根据个体特征分配治疗方案的个体化治疗策略,从而获得最大的收益。最近,已经提出了一种机器学习方法,即O学习,以估计最佳的个性化治疗规则(ITR),但是它被开发用于做出二元决策,因此仅限于比较两种治疗方法。当有许多治疗选择可用时,需要通过将多个治疗选择问题转换为多个二元治疗选择(例如,通过一对一或一对多比较)来适应现有方法。但是,将多个二元处理选择规则组合为单个决策规则需要仔细考虑,因为在多类别学习文献中已知某些方法可能会导致模棱两可的决策规则。在这项工作中,我们提出了一种新颖有效的方法,可以将针对二元治疗的结果加权学习推广到多治疗环境。我们通过顺序加权支持向量机解决了多重治疗选择问题。我们证明了所得的ITR是Fisher一致性的,并且获得了估计值函数对真实最佳值的收敛率,即,当数据大小达到无穷大时,估计的处理规则导致了最大的收益。我们进行仿真以证明所提出的方法在较低的误分配率和改进的期望值方面具有优越的性能。一项针对重度抑郁症的三臂随机试验的一项应用表明,针对个体患者的预期治疗效果,其基线抑郁严重程度和其他特征量身定制的ITR比非个性化治疗策略(例如,对所有患有抑郁症的患者进行治疗)减轻抑郁症状的可能性更大。药物治疗和心理治疗相结合)。

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