Heart disease monitoring and predicting by using machine learning based on IoT technology

Qingyun He, Angelika Maag, A. Elchouemi
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引用次数: 4

Abstract

The major disease caused by human death nowadays is heart disease, due it happens suddenly and without significant symptoms, leads patient to miss the best time for first aid. With the development of IoT technology combined with the healthcare industry. It is providing technical support for clinic staff to predict and monitor heart disease patients remotely. In this paper, the main goal is to review the most relevant and latest papers to find the advantages and disadvantages and gaps in this area. Furthermore, compare the different proposed method’s performance and present the best framework for heart disease continuous prediction and monitoring. Many researchers have been already providing the use of different types of machine learning algorithms to predict and diagnose heart disease. However, most of the previous researchers use the data collected from the dataset. As well know, to process the data collected from IoT sensors is harder than data collected from the dataset, because it may contain more noise and missing values in IoT sensor collected data. Dealing with those issues is the main challenge in the whole prediction system. Therefore, in this paper, we expect to reduce the research gap to find the best way to continuously monitoring and predicting patient ECG signals collected from IoT sensor devices in the meantime achieved acceptable prediction accuracy.
利用基于物联网技术的机器学习进行心脏病监测和预测
目前造成人类死亡的主要疾病是心脏病,由于其发生突然且无明显症状,导致患者错过了急救的最佳时机。随着物联网技术的发展与医疗保健行业相结合。它为诊所工作人员远程预测和监测心脏病患者提供技术支持。在本文中,主要目的是回顾最相关和最新的论文,找出这一领域的优缺点和差距。在此基础上,比较了不同方法的性能,提出了心脏病连续预测和监测的最佳框架。许多研究人员已经开始使用不同类型的机器学习算法来预测和诊断心脏病。然而,大多数先前的研究人员使用从数据集中收集的数据。众所周知,处理从物联网传感器收集的数据比从数据集收集的数据更难,因为物联网传感器收集的数据中可能包含更多的噪声和缺失值。处理这些问题是整个预测系统的主要挑战。因此,在本文中,我们希望能够缩小研究差距,找到最好的方法来持续监测和预测从物联网传感器设备收集的患者心电信号,同时达到可接受的预测精度。
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