Personalized Health Knowledge Graph.

CEUR workshop proceedings Pub Date : 2018-10-01
Amelie Gyrard, Manas Gaur, Saeedeh Shekarpour, Krishnaprasad Thirunarayan, Amit Sheth
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Abstract

Our current health applications do not adequately take into account contextual and personalized knowledge about patients. In order to design "Personalized Coach for Healthcare" applications to manage chronic diseases, there is a need to create a Personalized Healthcare Knowledge Graph (PHKG) that takes into consideration a patient's health condition (personalized knowledge) and enriches that with contextualized knowledge from environmental sensors and Web of Data (e.g., symptoms and treatments for diseases). To develop PHKG, aggregating knowledge from various heterogeneous sources such as the Internet of Things (IoT) devices, clinical notes, and Electronic Medical Records (EMRs) is necessary. In this paper, we explain the challenges of collecting, managing, analyzing, and integrating patients' health data from various sources in order to synthesize and deduce meaningful information embodying the vision of the Data, Information, Knowledge, and Wisdom (DIKW) pyramid. Furthermore, we sketch a solution that combines: 1) IoT data analytics, and 2) explicit knowledge and illustrate it using three chronic disease use cases - asthma, obesity, and Parkinson's.

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个性化健康知识图谱。
我们目前的健康应用程序没有充分考虑到患者的情境和个性化知识。为了设计“个性化医疗保健教练”应用程序来管理慢性疾病,需要创建一个个性化医疗保健知识图(PHKG),该知识图考虑了患者的健康状况(个性化知识),并使用来自环境传感器和数据网络的情境化知识(例如疾病的症状和治疗)来丰富患者的健康状况。为了开发PHKG,需要从各种异构来源(如物联网(IoT)设备、临床记录和电子医疗记录(emr))聚集知识。在本文中,我们解释了收集、管理、分析和整合来自各种来源的患者健康数据的挑战,以便综合和推断体现数据、信息、知识和智慧(DIKW)金字塔愿景的有意义的信息。此外,我们还概述了一个解决方案,该解决方案结合了:1)物联网数据分析和2)明确的知识,并使用三种慢性病用例(哮喘、肥胖和帕金森病)进行说明。
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