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首页> 外文期刊>Journal of the American statistical association >Learning Optimal Personalized Treatment Rules in Consideration of Benefit and Risk: With an Application to Treating Type 2 Diabetes Patients With Insulin Therapies
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Learning Optimal Personalized Treatment Rules in Consideration of Benefit and Risk: With an Application to Treating Type 2 Diabetes Patients With Insulin Therapies

机译:学习考虑利益和风险的最佳个性化治疗规则:应用于胰岛素治疗的2型糖尿病患者

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摘要

Individualized medical decision making is often complex due to patient treatment response heterogeneity. Pharmacotherapy may exhibit distinct efficacy and safety profiles for different patient populations. An optimal treatment that maximizes clinical benefit for a patient may also lead to concern of safety due to a high risk of adverse events. Thus, to guide individualized clinical decision making and deliver optimal tailored treatments, maximizing clinical benefit should be considered in the context of controlling for potential risk. In this work, we propose two approaches to identify personalized optimal treatment strategy that maximizes clinical benefit under a constraint on the average risk. We derive the theoretical optimal treatment rule under the risk constraint and draw an analogy to the Neyman-Pearson lemma to prove the theorem. We present algorithms that can be easily implemented by any off-the-shelf quadratic programming package. We conduct extensive simulation studies to show satisfactory risk control when maximizing the clinical benefit. Finally, we apply our method to a randomized trial of type 2 diabetes patients to guide optimal utilization of the first line insulin treatments based on individual patient characteristics while controlling for the rate of hypoglycemia events. We identify baseline glycated hemoglobin level, body mass index, and fasting blood glucose as three key factors among 18 biomarkers to differentiate treatment assignments, and demonstrate a successful control of the risk of hypoglycemia in both the training and testing dataset.
机译:由于患者治疗反应的异质性,个性化的医疗决策通常很复杂。对于不同的患者人群,药物治疗可能会表现出独特的功效和安全性。由于不良事件的高风险,使患者获得最大临床收益的最佳治疗方法也可能引起对安全性的关注。因此,为了指导个性化的临床决策并提供最佳的量身定制的治疗方法,应在控制潜在风险的背景下考虑最大程度地提高临床收益。在这项工作中,我们提出了两种方法来确定个性化的最佳治疗策略,该策略在平均风险的约束下最大化临床收益。我们推导了在风险约束下的理论最优处理规则,并与奈曼-皮尔森引理进行类比以证明该定理。我们提出的算法可以通过任何现成的二次编程包轻松实现。我们进行了广泛的模拟研究,以显示出最大的临床效益时,令人满意的风险控制。最后,我们将我们的方法应用于2型糖尿病患者的随机试验,以根据个体患者的特征指导一线胰岛素治疗的最佳利用,同时控制低血糖事件的发生率。我们确定基线糖化血红蛋白水平,体重指数和空腹血糖为18个生物标志物之间的三个关键因素,以区分治疗分配,并在训练和测试数据集中证明成功控制了低血糖的风险。

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