基于家庭监测的生命体征相关性早期预测异常临床事件的概率模型

A. Forkan, I. Khalil
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引用次数: 33

摘要

在澳大利亚和全世界,慢性病是造成死亡的主要原因。这就需要一个自我护理、预防、预测和保护的辅助生活系统,在这个系统中,患者可以使用可穿戴和无线传感器进行持续监测。在实时家庭监控系统中,通过移动设备(智能手机或平板电脑)连续获取患者的各种生物信号,并将其发送到云端,发现患者特有的异常情况。这项工作的目的是建立一个概率模型,利用最近和过去的多个生命体征(如心率、血压、呼吸频率)的值来识别患者未来的临床异常。由于缺乏有效的自动化系统,对生命体征的不规则性缺乏预先预测能力,导致独居慢性患者死于各种疾病。本文采用隐马尔可夫模型(HMM),利用6种生物信号的时间行为来预测不同的临床发病。HMM模型使用从MIT physiobank档案的MIMIC-II数据库收集的1000多名患者的连续监测数据进行训练和评估。利用期望最大化(EM)算法选择最佳模型,并将其用于个性化远程监测系统中,以预测连续监测患者最可能出现的临床状态。利用云计算的可扩展能力从大样本中快速学习各种临床事件。从创新的家庭监测应用中获得的结果显示了一种利用多参数趋势检测临床异常的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A probabilistic model for early prediction of abnormal clinical events using vital sign correlations in home-based monitoring
Chronic diseases are major causes of deaths in Australia and throughout the world. This necessitates the need for a self-care, preventive, predictive and protective assisted living system where a patient can be monitored continuously using wearable and wireless sensors. In real-time home monitoring system, various biological signals of a patient are obtained continuously using a mobile device (smart phone or tablet) and sent to the cloud to discover patient-specific abnormalities. The objective of this work is to develop a probabilistic model that identifies the future clinical abnormalities of a patient using recent and past values of multiple vital signs (e.g. heart rate, blood pressure, respiratory rate). Chronic patients living alone in home die of various diseases for the lack of an efficient automated system having prior prediction ability in the irregularities of vital signs. In this paper, Hidden Markov Model (HMM) is adopted to predict different clinical onsets using the temporal behaviours of six biosignals. The HMM models are trained and evaluated using continuous monitoring data of more than 1000 patients collected from the MIMIC-II database of MIT physiobank archive. The best models are selected using expectation maximisation (EM) algorithm and used in personalized remote monitoring system to forecast the most probable forthcoming clinical states of a continuously monitored patient. The scalable power of cloud computing is utilized for fast learning of various clinical events from large samples. The results obtained from the innovative home-based monitoring application show a new approach of detecting clinical anomalies using multi-parameter trends.
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