4.5 Article

A learnable front-end based efficient channel attention network for heart sound classification

期刊

PHYSIOLOGICAL MEASUREMENT
卷 44, 期 9, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/1361-6579/acf3cf

关键词

heart sound classification; feature extraction; efficient channel attention network; learnable front-end; convolutional recurrent neural

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This study proposes a learnable front-end approach for heart sound classification, which enhances accuracy by optimizing waveform-to-spectrogram transformation and utilizing a convolutional recurrent neural network with feature selection. Experimental results on a public dataset demonstrate its effectiveness in heart sound classification research and applications.
Objective. To enhance the accuracy of heart sound classification, this study aims to overcome the limitations of common models which rely on handcrafted feature extraction. These traditional methods may distort or discard crucial pathological information within heart sounds due to their requirement of tedious parameter settings. Approach. We propose a learnable front-end based Efficient Channel Attention Network (ECA-Net) for heart sound classification. This novel approach optimizes the transformation of waveform-to-spectrogram, enabling adaptive feature extraction from heart sound signals without domain knowledge. The features are subsequently fed into an ECA-Net based convolutional recurrent neural network, which emphasizes informative features and suppresses irrelevant information. To address data imbalance, Focal loss is employed in our model. Main results. Using the well-known public PhysioNet challenge 2016 dataset, our method achieved a classification accuracy of 97.77%, outperforming the majority of previous studies and closely rivaling the best model with a difference of just 0.57%. Significance. The learnable front-end facilitates end-to-end training by replacing the conventional heart sound feature extraction module. This provides a novel and efficient approach for heart sound classification research and applications, enhancing the practical utility of end-to-end models in this field.

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