Monitoring and Recognition of Heart Health using Heartbeat Classification with Deep Learning and IoT

Arulkumar V, Mohammad Arif, Vinod D, Devipriya A, C. G, Surendran S
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引用次数: 1

Abstract

The advancement and innovations in the field of science and technology paved way for various advanced treatments in the field of medicine. They are implemented using sensors, and computer-aided designs with artificial intelligence techniques. This helps in the detection of serious health constraints at an earlier stage with appropriate treatments using decision-making techniques. One of the important health concerns that are increasing rapidly is cardiovascular disorders. This includes Arrhythmia and Myocardial Infarction. Earlier prediction and classification can protect them from serious constraints. They are diagnosed using the Electrocardiogram (ECG). To obtain accurate results, artificial intelligence techniques are implemented to extract the optimum output. The proposed system includes the detection and classification using deep learning techniques with the Internet of Things (IoT). The existing heartbeat detection system is overcome using a deep convolutional neural network. This helps in the implementation of automatic heartbeat detection and identification of abnormalities. The ECG signals are pre-processed with segmentation and feature extraction techniques. The classification and identification of constraints in the functioning of the heart are identified using optimization algorithms. The proposed system is trained, tested, and evaluated using the MIT-BIH arrhythmia database. The accuracy and efficiency of the proposed system are 99.98% using the MIT-BIH dataset.
利用深度学习和物联网的心跳分类监测和识别心脏健康
科学技术领域的进步和创新为医学领域的各种先进疗法铺平了道路。它们是通过传感器和人工智能技术的计算机辅助设计实现的。这有助于在较早阶段发现严重的健康限制,并利用决策技术进行适当治疗。正在迅速增加的重要健康问题之一是心血管疾病。这包括心律失常和心肌梗死。更早的预测和分类可以保护它们免受严重的约束。他们是用心电图(ECG)诊断的。为了获得准确的结果,采用人工智能技术提取最佳输出。提出的系统包括使用物联网(IoT)的深度学习技术进行检测和分类。利用深度卷积神经网络克服了现有的心跳检测系统。这有助于实现自动心跳检测和异常识别。采用分割和特征提取技术对心电信号进行预处理。使用优化算法对心脏功能中的约束进行分类和识别。该系统使用MIT-BIH心律失常数据库进行训练、测试和评估。使用MIT-BIH数据集,该系统的准确率和效率达到99.98%。
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