基于非均匀谱分析和人工神经网络的心电快速诊断

K. Chen, Po-Chen Chien, Zi-Jie Gao, Chi-Hsun Wu
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引用次数: 2

摘要

心电图(ECG)已被证明是监测心脏电活动的有效诊断工具,并已成为诊断心脏病的广泛应用的临床方法。在实际的方式中,ECG信号可以被分解为P、Q、R、S和T波。基于这些波中的特征信息,如每个波的振幅和间隔,可以使用基于神经网络的ECG分析方法来检测多种类型的心脏病。然而,由于对原始ECG信号进行预处理需要大量的计算,因此在时域中分析ECG信号是耗时的。此外,非线性ECG信号分析加剧了ECG信号的诊断难度。为了解决这个问题,我们提出了一种基于频谱分析和人工神经网络的快速心电诊断方法。与传统的时域方法相比,该方法只在频域中分析心电信号。然而,由于原始ECG信号中的大多数噪声属于高频信号,因此需要在低频谱中获取更多的特征,而在高频谱中获取更少的特征。因此,本文提出了一种非均匀特征提取方法。由于频域中的数据预处理少于时域中的数据,该方法不仅降低了总诊断延迟,而且降低了ECG诊断的计算功耗。为了验证所提出的方法,著名的MIT-BIH心律失常数据库参与了这项工作。实验结果表明,在心脏病诊断准确率相似的情况下,与传统的心电图分析方法相比,该方法可以将心电图诊断延迟降低47%至52%。此外,由于数据预处理较少,与相关工作相比,该方法可以实现22%至29%的区域开销和29%至34%的计算功耗,适合将该方法应用于便携式医疗设备。
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A Fast ECG Diagnosis by Using Non-Uniform Spectral Analysis and the Artificial Neural Network
The electrocardiogram (ECG) has been proven as an efficient diagnostic tool to monitor the electrical activity of the heart and has become a widely used clinical approach to diagnose heart diseases. In a practical way, the ECG signal can be decomposed into P, Q, R, S, and T waves. Based on the information of the features in these waves, such as the amplitude and the interval between each wave, many types of heart diseases can be detected by using the neural network (NN)-based ECG analysis approach. However, because of a large amount of computing to preprocess the raw ECG signal, it is time consuming to analyze the ECG signal in the time domain. In addition, the non-linear ECG signal analysis worsens the difficulty to diagnose the ECG signal. To solve the problem, we propose a fast ECG diagnosis approach based on spectral analysis and the artificial neural network. Compared with the conventional time-domain approaches, the proposed approach analyzes the ECG signal only in the frequency domain. However, because most of the noises in the raw ECG signal belong to high-frequency signals, it is necessary to acquire more features in the low-frequency spectrum and fewer features in the high-frequency spectrum. Hence, a non-uniform feature extraction approach is proposed in this article. According to less data preprocessing in the frequency domain than the one in the time domain, the proposed approach not only reduces the total diagnosis latency but also reduces the computing power consumption of the ECG diagnosis. To verify the proposed approach, the well-known MIT-BIH arrhythmia database is involved in this work. The experimental results show that the proposed approach can reduce ECG diagnosis latency by 47% to 52% compared with conventional ECG analysis methods under similar diagnostic accuracy of heart diseases. In addition, because of less data preprocessing, the proposed approach can achieve lower area overhead by 22% to 29% and lower computing power consumption by 29% to 34% compared with the related works, which is proper for applying this approach to portable medical devices.
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