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Utilizing IoT wearable medical device for heart disease prediction using higher order Boltzmann model: A classification approach

机译:利用高阶Boltzmann模型利用IoT可穿戴医疗装置进行心脏病预测:一种分类方法

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Globally, the prognosis of heart disease can be improved by early diagnosis and treatment. However, existing automatic systems for diagnosing heart disease are hampered by the requisite big data. This paper introduces an Internet of Things-based medical device for collecting patients' heart details before and after heart disease. The information, which is continuously transmitted to the health care center, is processed using the higher order Boltzmann deep belief neural network (HOBDBNN). The deep learning method learns heart disease features from past analysis, and achieves efficiency by the effective manipulation of complex data. Following experiments, the performance of the system is evaluated based on characteristics such as f-measure, sensitivity, specificity, loss function, and receiver operating characteristic (ROC) curve. The HOBDBNN method and IoT-based analysis recognize heart disease with 99.03% accuracy with minimum time complexity (8.5 s), effectively minimizing heart disease mortality by reducing the complexity of diagnosing heart disease. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在全球范围内,通过早期诊断和治疗可以提高心脏病的预后。然而,通过必要的大数据阻碍了用于诊断心脏病的现有自动系统。本文介绍了基于事物的互联网,用于在心脏病之前和之后收集患者的心脏细节。使用更高阶Boltzmann深信神经网络(HOBDBNN)进行处理,该信息是连续传输到医疗保健中心的信息。深度学习方法从过去分析中学习心脏病特征,通过有效操纵复杂数据来实现效率。在实验之后,基于F测量,灵敏度,特异性,损失功能和接收器操作特征(ROC)曲线等特性来评估系统的性能。基于HOBDBNN方法和IOT的分析识别99.03%的心脏病,精度最小时间复杂性(8.5秒),通过降低诊断心脏病的复杂性有效地减少心脏病死亡率。 (c)2019年elestvier有限公司保留所有权利。

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