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Learning the Representation of Medical Features for Clinical Pathway Analysis

机译:学习医学特征的表示方法以进行临床通路分析

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Clinical Pathway (CP) represents the best practice of treatment process management for inpatients with specific diagnosis, and a treatment process can be divided into several stages, usually in units of days. With the explosion of medical data, CP analysis is receiving increasing attention, which provides important support for CP design and optimization. However, these data-driven researches often suffer from the high complexity of medical data, so that a proper representation of medical features is necessary. Most of existing representation learning methods in healthcare domain focus on outpatient data, which get weak performance and interpretability when adopted for CP analysis. In this paper, we propose a new representation, RoMCP, which can capture both diagnosis information and temporal relations between days. The learned diagnosis embedding grasps the key factors of the disease, and each day embedding is determined by the diagnosis together with the preorder days. We evaluate RoMCP on real-world dataset with 538K inpatient visits for several typical CP analysis tasks. Our method demonstrates significant improvement on performance and interpretation.
机译:临床途径(CP)代表了用于特异性诊断的住院患者治疗过程管理的最佳实践,并且可以将治疗方法分为几个阶段,通常以单位为单位。随着医疗数据的爆炸,CP分析正在接受越来越多的关注,这为CP设计和优化提供了重要的支持。然而,这些数据驱动的研究经常遭受医疗数据的高度复杂性,从而需要对医疗特征的适当表示是必要的。医疗域中的大多数现有代表学习方法专注于门诊数据,在采用CP分析时获得弱的性能和解释性。在本文中,我们提出了一种新的代表,ROMCP,可以捕获天之间的诊断信息和时间关系。学习诊断饲养掌握疾病的关键因素,每天嵌入通过诊断与预订日决定。我们在具有538k住院性访问的现实数据集中评估ROMCP,用于几个典型的CP分析任务。我们的方法表明了对性能和解释的重大改善。

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