异质病人记录的监督病人相似度测量

Jimeng Sun, Fei Wang, Jianying Hu, Shahram Edabollahi
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引用次数: 150

摘要

在比较有效性研究和临床决策支持应用中,患者相似性评估是患者队列识别的一项重要任务。目标是推导出具有临床意义的距离度量,以衡量患者关键临床指标所代表的患者之间的相似性。如何结合医生对检索结果的反馈?如何基于反馈交互式地更新底层相似性度量?此外,通常不同的医生有不同的理解病人的相似性基于他们的病人队列。为每个医生学习的距离度量通常导致对真正的潜在距离度量的有限看法。如何将每位医生的个人距离指标整合为全球一致的统一指标?我们描述了一套有监督度量学习方法来回答上述问题。特别是,我们提出了局部监督度量学习(LSML)来学习针对医生反馈量身定制的广义马氏距离。然后,我们描述了交互式度量学习(iMet)方法,该方法可以基于医生反馈以在线方式增量更新现有度量。为了结合多个医生的多个相似度测量,我们提出了复合距离积分(Comdi)方法。在这种方法中,我们首先从每个单独的度量中构造判别邻域,然后将它们组合成一个最优距离度量。最后,我们提出了一个由所提出的患者相似度方法驱动的临床决策支持原型系统,并使用真实的EHR数据对几个基线进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised patient similarity measure of heterogeneous patient records
Patient similarity assessment is an important task in the context of patient cohort identif cation for comparative effectiveness studies and clinical decision support applications. The goal is to derive clinically meaningful distance metric to measure the similarity between patients represented by their key clinical indicators. How to incorporate physician feedback with regard to the retrieval results? How to interactively update the underlying similarity measure based on the feedback? Moreover, often different physicians have different understandings of patient similarity based on their patient cohorts. The distance metric learned for each individual physician often leads to a limited view of the true underlying distance metric. How to integrate the individual distance metrics from each physician into a globally consistent unif ed metric? We describe a suite of supervised metric learning approaches that answer the above questions. In particular, we present Locally Supervised Metric Learning (LSML) to learn a generalized Mahalanobis distance that is tailored toward physician feedback. Then we describe the interactive metric learning (iMet) method that can incrementally update an existing metric based on physician feedback in an online fashion. To combine multiple similarity measures from multiple physicians, we present Composite Distance Integration (Comdi) method. In this approach we f rst construct discriminative neighborhoods from each individual metrics, then combine them into a single optimal distance metric. Finally, we present a clinical decision support prototype system powered by the proposed patient similarity methods, and evaluate the proposed methods using real EHR data against several baselines.
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