Conception and realization of an IoT-enabled deep CNN decision support system for automated arrhythmia classification

IF 2.1 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Intelligent Systems Pub Date : 2022-01-01 DOI:10.1515/jisys-2022-0015
Ann Varghese, Midhun Muraleedharan Sylaja, J. Kurian
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引用次数: 4

Abstract

Abstract Arrhythmias are irregular heartbeats that may be life-threatening. Proper monitoring and the right care at the right time are necessary to keep the heart healthy. Monitoring electrocardiogram (ECG) patterns on continuous monitoring devices is time-consuming. An intense manual inspection by caregivers is not an option. In addition, such an inspection could result in errors and inter-variability. This article proposes an automated ECG beat classification method based on deep neural networks (DNN) to aid in the detection of cardiac arrhythmias. The data collected by an Internet of Things enabled ECG monitoring device are transferred to a server. They are analysed by a deep learning model, and the results are shared with the primary caregiver. The proposed model is trained using the MIT-BIH ECG arrhythmia database to classify into four classes: normal beat (N), left bundle branch block beat (L), right bundle branch block beat (R), and premature ventricular contraction (V). The received data are sampled with an overlapping sliding window and divided into an 80:20 ratio for training and testing, with tenfold cross-validation. The proposed method achieves higher accuracy with a simple model without any preprocessing when compared with previous works. For the train and test sets, we achieved accuracy rates of 99.09 and 99.03%, respectively. A precision, recall, and F1 scores of 0.99 is obtained. The proposed model achieves its goal of developing a simple and accurate ECG monitoring system with improved performance. This simple and efficient deep learning approach for heartbeat classification could be applied in real-time telehealth monitoring systems.
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基于物联网的心律失常自动分类深度CNN决策支持系统的构想与实现
心律失常是指可能危及生命的不规则心跳。在适当的时间进行适当的监测和护理是保持心脏健康的必要条件。在连续监测设备上监测心电图(ECG)模式非常耗时。由护理人员进行密集的人工检查不是一种选择。此外,这样的检查可能导致错误和内部变异。本文提出了一种基于深度神经网络(DNN)的心电心跳自动分类方法,以辅助心律失常的检测。通过物联网功能的心电监护设备采集到的数据传输到服务器。通过深度学习模型对它们进行分析,并将结果与主要护理人员共享。采用MIT-BIH心电失常数据库对模型进行训练,将模型分为正常心跳(N)、左束支传导阻滞心跳(L)、右束支传导阻滞心跳(R)和室性早搏(V)四类。接收到的数据采用重叠滑动窗口采样,按80:20的比例进行训练和测试,并进行十倍交叉验证。与以往的方法相比,该方法模型简单,无需任何预处理,具有更高的精度。对于训练集和测试集,我们分别实现了99.09和99.03%的准确率。得到的精度、召回率和F1分数为0.99。该模型实现了开发简单、准确、性能优良的心电监测系统的目的。这种简单有效的深度学习心跳分类方法可以应用于实时远程健康监测系统。
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来源期刊
Journal of Intelligent Systems
Journal of Intelligent Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
5.90
自引率
3.30%
发文量
77
审稿时长
51 weeks
期刊介绍: The Journal of Intelligent Systems aims to provide research and review papers, as well as Brief Communications at an interdisciplinary level, with the field of intelligent systems providing the focal point. This field includes areas like artificial intelligence, models and computational theories of human cognition, perception and motivation; brain models, artificial neural nets and neural computing. It covers contributions from the social, human and computer sciences to the analysis and application of information technology.
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