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A classification method using deep belief network for phonocardiogram signal classification

机译:基于深度置信网络的心电信号分类方法

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Phonocardiogram (PCG) signal is a graphical representation of the heart sounds that can be used to diagnose a heart disease. Diagnosing heart disease based on PCG signal is more effective. Because of its ability to capture all heart sound components including S1 and S2. Nevertheless, the interpretation of PCG signal is depend on the cardiologist's expertise. Therefore automated PCG signal classification is required in order to help the cardiologist diagnosing and monitoring heart disease. The classification of PCG signal is influenced by the segmentation and the feature extraction process. The segmentation process aims to detect the location of heart sound components including S1 and S2 in PCG signal. However it is difficult to find those component in a noisy PCG signal. The feature extraction process aims to extract relevant features that lie in segmented PCG signal. This process is required because the segmented PCG signal has high dimensionality and redundant information. This study proposes Shannon Energy Envelope for segmenting PCG signal and Deep Belief Network (DBN) for feature extraction method. The results show that the proposed method outperforms shallow models in existing datasets.
机译:心音图(PCG)信号是可用于诊断心脏病的心音的图形表示。根据PCG信号诊断心脏病更有效。由于它能够捕获所有心音成分,包括S 1 和S 2 。但是,PCG信号的解释取决于心脏病专家的专业知识。因此,需要自动PCG信号分类,以帮助心脏病专家诊断和监测心脏病。 PCG信号的分类受分割和特征提取过程的影响。分割过程旨在检测PCG信号中包括S 1 和S 2 的心音成分的位置。但是,很难在嘈杂的PCG信号中找到那些分量。特征提取过程旨在提取分段PCG信号中的相关特征。因为分段的PCG信号具有高维数和冗余信息,所以需要此过程。这项研究提出了香农能量包络分割PCG信号和深度信念网络(DBN)的特征提取方法。结果表明,该方法优于现有数据集中的浅层模型。

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