Deep Learning Based Adaptive Recurrent Neural Network for Detection of Myocardial Infarction

Rakesh Kumar Mahendran, Vishnunarayan Girishan Prabhu, P. Velusamy, A. M. Judith
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引用次数: 2

Abstract

Myocardial infarction (MI) may precipitate severe health damage and lead to irreversible death of the heart muscle, the result of prolonged lack of oxygen if it is not treated in a timely manner. Lack of accurate and early detection techniques for this heart disease has reduced the efficiency of MI diagnosis. In this paper, the design, and implementation of an efficient deep learning algorithm called Adaptive Recurrent neural network (ARNN) is proposed for the MI detection. The main objective of the proposed work is the accurate identification of MI disease using ECG signals. ECG signal denoising has been performed using the Multi-Notch filter, which removes the specified noise frequency range. Discrete wavelet transform (DWT) is utilized for performing the feature extraction that decomposes the ECG signal into varied scales with waveletfiltering bank. After the extraction of specific QRS features, classification of the defected and normal ECG arrhythmic beat has been performed using the deep learning-based ARNN classifier. The MIT-BIH database has been used for testing and training data. The performance of the proposed algorithm is evaluated based on classification accuracy. Results that are attained include the classification accuracy of about 99.21%, 99% of sensitivity and 99.4% of specificity with PPV and NPV of about 99.4 and 99.01 values indicate the enhanced performance of our proposed work compared with the conventional LSTM-CAE and LSTM-CNN techniques.
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基于深度学习的自适应递归神经网络检测心肌梗死
心肌梗死(MI)如果不及时治疗,可能会导致严重的健康损害,并导致心肌不可逆的死亡,导致长期缺氧。缺乏对这种心脏病的准确和早期检测技术降低了心肌梗死的诊断效率。本文提出了一种高效的深度学习算法——自适应递归神经网络(ARNN)的设计和实现,用于MI检测。本研究的主要目的是利用心电信号准确识别心梗疾病。使用多陷波滤波器对心电信号进行去噪,去除指定的噪声频率范围。利用离散小波变换(DWT)进行特征提取,利用小波滤波组将心电信号分解成不同尺度。在提取特定的QRS特征后,使用基于深度学习的ARNN分类器对有缺陷和正常的心电心律失常进行分类。麻省理工学院-波黑研究所数据库已用于测试和训练数据。基于分类精度对算法的性能进行了评价。结果表明,与传统的LSTM-CAE和LSTM-CNN技术相比,该方法的分类准确率约为99.21%,灵敏度为99%,特异性为99.4%,其中PPV和NPV分别为99.4和99.01。
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