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Leveraging a discriminative dictionary learning algorithm for single-lead ECG classification

机译:利用区分字典学习算法进行单导ECG分类

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Detecting and classifying cardiovascular diseases and their underlying etiology is necessary in critical-care patient monitoring. This paper presents a novel sparse-based classification algorithm for electrocardiogram (ECG) signals. We demonstrate dictionary learning and classification processes simultaneously following the detection of supraventricular and ventricular heartbeats using a single-lead ECG. Such a discriminative label-consistent learning procedure for adapting both dictionaries and classifier to a specified ECG signal, rather than employing pre-defined dictionaries, is our work's novelty. Because our results demonstrate a classification accuracy of 94.61% for Supra Ventricular Ectopic Beats (SVEB) class and 97.18% for Ventricular Ectopic Beats (VEB) class at sampling rate of 114 Hz on MIT-BIH database, a lower sampling rate of 114 Hz provides sufficient discriminatory power for the classification task.
机译:在重症监护患者监测中,必须对心血管疾病及其潜在病因进行检测和分类。本文提出了一种新颖的基于稀疏的心电图(ECG)信号分类算法。我们展示了字典学习和分类过程同时使用单导联心电图检测室上和心室的心跳。这种使标签和分类器都适应指定的ECG信号而不是使用预定义词典的,区分标签一致的学习程序,是我们工作的新颖之处。因为我们的研究结果表明,在MIT-BIH数据库上以114 Hz的采样率对室上性特异搏动(SVEB)分类的分类准确度为94.61%,对于室性异位搏动(VEB)为97.18%的分类准确率,因此较低的114 Hz采样率对分类任务具有足够的区分能力。

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