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Automatic Detection of Congestive Heart Failure Based on a Hybrid Deep Learning Algorithm in the Internet of Medical Things

机译:基于互联网互联网混合深层学习算法的充血性心力衰竭自动检测

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摘要

Congestive heart failure (CHF) is a chronic heart condition with heart function decline caused by various heart diseases that requires long-term treatment and affects personal life safety. Presently, CHF diagnosis is being conducted by experts, which is a nonspecific mode that is time consuming and depends on experience. Therefore, it is of great clinical value to conduct CHF recognition through automatic detection. This article proposed an automatic CHF detection model based on a hybrid deep learning algorithm that is composed of a convolutional neural network (CNN) and a recursive neural network (RNN). We also classified normal sinus heart rate signals and CHF signals based on electrocardiography (ECG) and time-frequency spectra during the RR interval. The accuracy of this algorithm was 99.93%, the sensitivity was 99.85%, and the specificity was 100% when 5-min ECG signals were analyzed. It showed a certain improvement over previous studies. We also investigated the detection of CHF patients from healthy subjects by ultrashort-term ECG, and good performance was obtained. The hybrid deep learning algorithm can make objective, accurate classifications of CHF signals and serve as an effective auxiliary tool for the clinical detection of CHF patients.
机译:充血性心力衰竭(CHF)是一种慢性心脏病,具有由各种心脏病引起的心功能下降,需要长期治疗,影响个人生活安全性。目前,专家正在进行CHF诊断,这是一种不特异性的模式,这是耗时的并且取决于经验。因此,通过自动检测进行CHF识别是巨大的临床价值。本文提出了一种基于混合深度学习算法的自动CHF检测模型,其由卷积神经网络(CNN)和递归神经网络(RNN)组成。在RR间隔期间,我们还基于心电图(ECG)和时频光谱的正常窦心率信号和CHF信号分类。该算法的准确性为99.93%,灵敏度为99.85%,当分析5分钟的ECG信号时,特异性为100%。它表现出对先前的研究一定的改进。我们还调查了通过超短术语ECG从健康受试者中检测CHF患者,并且获得了良好的性能。混合的深度学习算法可以进行客观,准确的CHF信号分类,并用作CHF患者的临床检测的有效辅助工具。

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