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Identification of Clinically Meaningful Plasma Transfusion Subgroups Using Unsupervised Random Forest Clustering

机译:使用无监督随机森林聚类确定具有临床意义的血浆输血亚组

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摘要

Statistical techniques such as propensity score matching and instrumental variable are commonly employed to “simulate” randomization and adjust for measured confounders in comparative effectiveness research. Despite such adjustments, the results of these methods apply essentially to an “average” patient. However, as patients show significant heterogeneity in their responses to treatments, this average effect is of limited value. It does not account for individual level variabilities, which can deviate substantially from the population average. To address this critical problem, we present a framework that allows the discovery of clinically meaningful homogeneous subgroups with differential effects of plasma transfusion using unsupervised random forest clustering. Subgroup analysis using two blood transfusion datasets show that considerable variablilities exist between the subgroups and population in both the treatment effect of plasma transfusion on bleeding and mortality and risk factors for these outcomes. These results support the customization of blood transfusion therapy for the individual patient.
机译:在比较有效性研究中,通常使用诸如倾向得分匹配和工具变量之类的统计技术来“模拟”随机化并调整测得的混杂因素。尽管进行了此类调整,但这些方法的结果基本上适用于“普通”患者。但是,由于患者对治疗的反应表现出明显的异质性,因此这种平均效果的价值有限。它没有考虑到个人水平的差异,而水平的差异可能会大大偏离总体平均值。为了解决这个关键问题,我们提出了一个框架,该框架允许使用无监督的随机森林聚类发现具有血浆输注不同作用的具有临床意义的同质亚组。使用两个输血数据集进行的亚组分析表明,在血浆输注对出血的治疗效果和死亡率以及这些结果的危险因素方面,亚组和人群之间存在相当大的可变性。这些结果支持针对个体患者进行输血治疗的定制。

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