生活方式风险关联汇总

E. Effiok, E. Liu, Jon Hitchcock
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引用次数: 1

摘要

物联网在医疗保健中的应用,通过记录和分析长期数据,提供了监测和收集与健康相关的生物标志物,特别是与生活方式相关的数据的方法,以提供对患者状态的洞察。为了充分利用这一应用程序,将收集到的患者数据与疾病预测模型联系起来,将产生个性化的疾病进展和预测。人们对各种危险因素进行了广泛的研究,以找出对该疾病的影响。然而,风险因素在医学文献中是碎片化的,通常每个出版物都报告一个或几个风险因素,通常是来自不同研究的几个因素的组合。在本文中,我们提出了一种探索风险因素组合的方法。研究结果将为可用于许多卫生应用的完整风险预测模型奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lifestyle Risk Association Aggregation
IoT application in health care provides ways to monitor and collect health related biomarkers, in particular, lifestyle related data, by recording and analyzing long-term data, to provide insight to patients’ status. In order to make most use of this application, linking the collected patients’ data with a disease predictive model will generate a personalized disease progression and predictions. Various risk factors have been researched extensively to find the effect on the disease. However, risk factors are fragmented all over medical literature, and often each publication reports on one or a few risk factors, a combination of several of those factors, often from different research. In this paper, we propose an approach to explore the combination of risk factors. The outcome will form a base for a complete risk prediction model that can be used for many health applications.
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