基于边缘设备的启发式深度神经网络多类心律失常检测

Arief Kurniawan, Eko Mulyanto Yuniarno, Eko Setijadi, Mochamad Yusuf Alsagaff, Gijsbertus Jacob Verkerke, I Ketut Eddy Purnama
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引用次数: 0

摘要

心脏病是一种心脏疾病,有时会导致人突然死亡。其中一个症状是心律失常。多类心律失常检测包括:QRS复合体检测程序和基于QRS复合体形态的心律失常分类。我们提出了一种基于方差分析(QVAT)的QRS复合体检测和基于QRS复合体谱图的心律失常分类的边缘装置。该分类器采用二维卷积神经网络(2D CNN)深度学习。我们使用单板计算机和神经网络计算棒来实现边缘器件。研究结果是一个原型装置,心脏病学家将其用作分析心电图信号的辅助工具,患者也可以用它进行自我检测,以了解自己的心脏健康状况。为了评估我们的边缘设备的性能,我们使用MIT-BIH数据库进行测试,因为其他方法也使用这些数据。QVAT敏感性为99.81%,预测阳性为99.90%。分类器的准确率、灵敏度、预测阳性、特异性和f1评分分别为99.82%、99.55%、99.55%、99.89%和99.55%。心律失常分类的实验结果表明,该方法优于其他方法。尽管如此,对于r峰检测,在边缘设备中实现的QVAT与其他方法相当。在未来的工作中,我们可以使用QVAT中的双重检查算法来提高r-峰检测的性能,并通过在分类器中添加1个类,即非QRS类来交叉检查QRS复合体检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of multi-class arrhythmia using heuristic and deep neural network on edge device
Heart disease is a heart condition that sometimes causes a person to die suddenly. One indication is a rhythm disorder known as arrhythmia. Multi-class Arrhythmia Detection has followed: QRS complex detection procedure and arrhythmia classification based on the QRS complex morphology. We proposed an edge device that detects QRS complexes based on variance analysis (QVAT) and the arrhythmia classification based on the QRS complex spectrogram. The classifier uses two-dimensional convolutional neural network (2D CNN) deep learning. We use a single board computer and neural network compute stick to implement the edge device. The outcomes are a prototype device cardiologists use as a supporting tool for analysing ECG signals, and patients can also use it for self-tests to figure out their heart health. To evaluate the performance of our edge device, we tested using the MIT-BIH database because other methods also use the data. The QVAT sensitivity and predictive positive are 99.81% and 99.90%, respectively. Our classifier's accuracy, sensitivity, predictive positive, specificity, and F1-score are 99.82%, 99.55%, 99.55%, 99.89%, and 99.55%, respectively. The experiment result of arrhythmia classification shows that our method outperforms the others. Still, for r-peak detection, the QVAT implemented in an edge device is comparable to the other methods. In future work, we can improve the performance of r-peak detection using the double-check algorithm in QVAT and cross-check the QRS complex detection by adding 1 class to the classifier, namely the non-QRS class.
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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