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Arrhythmia Classification using Deep Learning and Machine Learning with Features Extracted from Waveform-based Signal Processing

机译:使用深度学习和机器学习进行心律失常分类,并从基于波形的信号处理中提取特征

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Arrhythmia is a serious cardiovascular disease, and early diagnosis of arrhythmia is critical. In this study, we present a waveform-based signal processing (WBSP) method to produce state-of-the-art performance in arrhythmia classification. When performing WBSP, we first filtered ECG signals, searched local minima, and removed baseline wandering. Subsequently, we fit the processed ECG signals with Gaussians and extracted the parameters. Afterwards, we exploited the products of WBSP to accomplish arrhythmia classification with our proposed machine learning-based and deep learning-based classifiers. We utilized MIT-BIH Arrhythmia Database to validate WBSP. Our best classifier achieved 98.8% accuracy. Moreover, it reached 96.3% sensitivity in class V and 98.6% sensitivity in class Q, which both share one of the best among the related works. In addition, our machine learning-based classifier accomplished identifying four waveform components essential for automated arrhythmia classification: the similarity of QRS complex to a Gaussian curve, the sharpness of the QRS complex, the duration of and the area enclosed by P-wave.Clinical relevance— Early diagnosis and automated classification of arrhythmia is clinically essential.
机译:心律失常是一种严重的心血管疾病,因此心律失常的早期诊断至关重要。在这项研究中,我们提出了一种基于波形的信号处理(WBSP)方法,以产生心律失常分类的最新技术。在执行WBSP时,我们首先过滤了ECG信号,搜索了局部最小值,并消除了基线漂移。随后,我们将处理后的ECG信号与高斯拟合,并提取参数。之后,我们利用WBSP的产品,利用我们提出的基于机器学习和基于深度学习的分类器来完成心律失常分类。我们利用MIT-BIH心律失常数据库来验证WBSP。我们最好的分类器达到了98.8%的准确度。此外,在V类中达到96.3%的灵敏度,在Q类中达到98.6%的灵敏度,在相关作品中均是最好的之一。此外,我们基于机器学习的分类器还完成了对自动心律失常分类必不可少的四个波形成分的识别:QRS复数与高斯曲线的相似性,QRS复数的清晰度,P波的持续时间和被P波包围的区域。相关性-心律失常的早期诊断和自动分类在临床上至关重要。

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