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ViSiBiD: A learning model for early discovery and real-time prediction of severe clinical events using vital signs as big data

机译:ViSiBiD:使用生命体征作为大数据对严重临床事件进行早期发现和实时预测的学习模型

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The advance in wearable and wireless sensors technology have made it possible to monitor multiple vital signs (e.g. heart rate, blood pressure) of a patient anytime, anywhere. Vital signs are an essential part of daily monitoring and disease prevention. When multiple vital sign data from many patients are accumulated for a long period they evolve into big data. The objective of this study is to build a prognostic model, ViSiBiD, that can accurately identify dangerous clinical events of a home-monitoring patient in advance using knowledge learned from the patterns of multiple vital signs from a large number of similar patients. We developed an innovative technique that amalgamates existing data mining methods with smartly extracted features from vital sign correlations, and demonstrated its effectiveness on cloud platforms through comparative evaluations that showed its potential to become a new tool for predictive healthcare. Four clinical events are identified from 4893 patient records in publicly available databases where six bio-signals deviate from normality and different features are extracted prior to 1-2 h from 10 to 30 min observed data of those events. Known data mining algorithms along with some MapReduce implementations have been used for learning on a cloud platform. The best accuracy (95.85%) was obtained through a Random Forest classifier using all features. The encouraging learning performance using hybrid feature space proves the existence of discriminatory patterns in vital sign big data can identify severe clinical danger well ahead of time. (C) 2017 Elsevier B.V. All rights reserved.
机译:穿戴式和无线传感器技术的进步使得随时随地监视患者的多个生命体征(例如心率,血压)成为可能。生命体征是日常监测和疾病预防的重要组成部分。当长期收集来自许多患者的多个生命体征数据时,它们会演变成大数据。这项研究的目的是建立一个预后模型ViSiBiD,该模型可以使用从大量相似患者的多种生命体征模式中学到的知识,提前准确地识别出家庭监护患者的危险临床事件。我们开发了一项创新技术,该技术将现有数据挖掘方法与从生命体征相关性中智能提取的功能融合在一起,并通过比较评估证明了其在云平台上的有效性,从而显示了其成为预测性医疗保健新工具的潜力。从公开数据库中的4893个患者记录中识别出四个临床事件,其中六个生物信号偏离正常状态,并且在从这些事件的观察数据的10到30分钟的1-2小时之前提取了不同的特征。已知的数据挖掘算法以及一些MapReduce实现已用于在云平台上进行学习。使用所有功能的随机森林分类器可获得最高的准确度(95.85%)。使用混合特征空间的令人鼓舞的学习成绩证明了生命体征大数据中歧视性模式的存在可以提前识别严重的临床危险。 (C)2017 Elsevier B.V.保留所有权利。

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