A Smart Heart Disease Diagnostic System Using Deep Vanilla LSTM

Maryam Bukhari, Sadaf Yasmin, Sheneela Naz, Mehr Yahya Durrani, Mubashir Javaid, Jihoon Moon, Seungmin Rho
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Abstract

Effective smart healthcare frameworks contain novel and emerging solutions for remote disease diagnostics, which aid in the prevention of several diseases including heart-related abnormalities. In this context, regular monitoring of cardiac patients through smart healthcare systems based on Electrocardiogram (ECG) signals has the potential to save many lives. In existing studies, several heart disease diagnostic systems are proposed by employing different state-of-the-art methods, however, improving such methods is always an intriguing area of research. Hence, in this research, a smart healthcare system is proposed for the diagnosis of heart disease using ECG signals. The proposed framework extracts both linear and time-series information on the ECG signals and fuses them into a single framework concurrently. The linear characteristics of ECG signals are extracted by convolution layers followed by Gaussian Error Linear Units (GeLu) and time series characteristics of ECG beats are extracted by Vanilla Long Short-Term Memory Networks (LSTM). Following on, the feature reduction of linear information is done with the help of ID Generalized Gated Pooling (GGP). In addition, data misbalancing issues are also addressed with the help of the Synthetic Minority Oversampling Technique (SMOTE). The performance assessment of the proposed model is done over the two publicly available datasets named MIT-BIH arrhythmia database (MITDB) and PTB Diagnostic ECG database (PTBDB). The proposed framework achieves an average accuracy performance of 99.14% along with a 95% recall value.
基于深度香草LSTM的智能心脏病诊断系统
有效的智能医疗保健框架包含用于远程疾病诊断的新型和新兴解决方案,有助于预防包括心脏相关异常在内的几种疾病。在这种情况下,通过基于心电图(ECG)信号的智能医疗系统对心脏病患者进行定期监测有可能挽救许多生命。在现有的研究中,采用不同的最先进的方法提出了几种心脏病诊断系统,然而,改进这些方法一直是一个有趣的研究领域。因此,在本研究中,提出了一种利用心电信号诊断心脏病的智能医疗系统。该框架同时提取心电信号的线性和时间序列信息,并将其融合到一个框架中。通过卷积层和高斯误差线性单元(GeLu)提取心电信号的线性特征,采用Vanilla长短期记忆网络(LSTM)提取心电拍的时间序列特征。然后,利用ID广义门控池(GGP)对线性信息进行特征约简。此外,数据不平衡问题也在合成少数派过采样技术(SMOTE)的帮助下得到解决。该模型的性能评估是在MIT-BIH心律失常数据库(MITDB)和PTB诊断心电图数据库(PTBDB)两个公开可用的数据集上完成的。该框架的平均准确率为99.14%,召回率为95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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