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Premature Ventricular Contraction Arrhythmia Detection and Classification with Gaussian Process and S Transform

机译:高斯过程和S变换对室性早搏性心律失常的检测和分类

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This paper presents an efficient Bayesian classification system based on Gaussian process classifiers (GPC) for detecting premature ventricular contraction (PVC) beats in electrocardiographic (ECG) signals. GPC have the advantage over SVM classifiers in that the parameters of its kernel are automatically selected according to the Bayesian estimation procedure based on Laplace approximation. We also propose to feed the classifier with different representations of the ECG signals based on morphology, discrete wavelet transform, and S-transform. The latter representation has never been used for ECG signals before. The experimental results obtained on 48 records (i.e., 109887 heart beats) of the MIT-BIH arrhythmia database showed that for all feature representations adopted in this work, the proposed GP classifier combined with the S-transform and trained with only 600 beats from PVC and Non-PVC classes can provide an overall accuracy and a sensitivity above 96% on the whole 48 recordings.
机译:本文提出了一种基于高斯过程分类器(GPC)的有效贝叶斯分类系统,用于检测心电图(ECG)信号中的室性早搏(PVC)搏动。与SVM分类器相比,GPC的优势在于,根据基于Laplace近似的贝叶斯估计程序自动选择其内核参数。我们还建议根据形态学,离散小波变换和S变换为分类器提供不同形式的ECG信号。后一种表示从未用于ECG信号。在MIT-BIH心律失常数据库的48个记录(即109887个心跳)上获得的实验结果表明,对于这项工作中采用的所有特征表示,拟议的GP分类器结合了S变换,并且仅用PVC进行了600次搏动训练非PVC类可以提供整体准确度,并且在全部48条记录中的灵敏度都在96%以上。

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