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A Data Enhancement Approach to Improve Machine Learning Performance for Predicting Health Status Using Remote Healthcare Data

机译:一种数据增强方法,以提高机器学习性能,以使用远程医疗数据预测健康状态

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Machine Learning (ML) is becoming tremendously important to improve the performance of remote healthcare systems. Portable health clinic (PHC), a remote healthcare system contains a triage function that classifies the patients in two major groups - (a)healthy and (b)unhealthy. Unhealthy patients require regular health checkups. This paper aims to predict the status of the registered patients to decide the follow-up date and frequency. Health management cost can be reduced by decreasing the number of follow-up frequency. We carried out an experiment on 271 corporate members and monitored their health status in every three months and collected four phases of data. The data records contain clinical data, socio-demographical data, dietary behavior data. However, most of the machine learning algorithms can not directly work with categorical data. Several encoding techniques are available which can also enhance the prediction performance. In this paper, We applied three encoding techniques and proposed a new encoding approach to handle categorical variables. The result shows that Random Forest Classifier performs the best with 95.33% accuracy. A comparison chart displaying the performance of eight different supervised learning algorithms in terms of three existing encoding mechanisms is reported.
机译:机器学习(ML)正变得非常重要,可以提高远程医疗保健系统的性能。便携式健康诊所(PHC),远程医疗保健系统包含一个分类函数,分类为两个主要群体中的患者 - (a)健康和(b)不健康。不健康的患者需要定期健康检查。本文旨在预测注册患者的状态,以确定后续日期和频率。通过减少后续频率的数量,可以减少健康管理成本。我们对271名公司成员进行了实验,并在每三个月内监测了健康状况,并收集了四个阶段数据。数据记录包含临床数据,社会人口统计数据,饮食行为数据。但是,大多数机器学习算法不能直接使用分类数据。有多种编码技术可用于增强预测性能。在本文中,我们应用了三种编码技术,提出了一种新的编码方法来处理分类变量。结果表明,随机林分类器的精度为95.33%。报告了在三种现有编码机制方面显示八种不同监督学习算法的性能的比较图。

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