Multi-path Convolutional Neural Networks Efficiently Improve Feature Extraction in Continuous Adventitious Lung Sound Detection
Fu-Shun Hsu, Shang-Ran Huang, Chien-Wen Huang, Chun-Chieh Chen,, Yuan-Ren Cheng, Feipei Lai

TL;DR
This study enhances lung sound analysis by introducing multi-path CNN architectures, significantly improving continuous adventitious sound detection without increasing computational costs.
Contribution
The paper proposes a multi-path CNN-BiGRU model with minimal modifications, leading to better feature extraction and improved CAS detection performance.
Findings
CAS detection F1 score increased from 0.445 to 0.491-0.530
Multi-path CNN-BiGRU outperformed other models in 5 of 9 metrics
No significant increase in inference time (0.97-fold)
Abstract
We previously established a large lung sound database, HF_Lung_V2 (Lung_V2). We trained convolutional-bidirectional gated recurrent unit (CNN-BiGRU) networks for detecting inhalation, exhalation, continuous adventitious sound (CAS) and discontinuous adventitious sound at the recording level on the basis of Lung_V2. However, the performance of CAS detection was poor due to many reasons, one of which is the highly diversified CAS patterns. To make the original CNN-BiGRU model learn the CAS patterns more effectively and not cause too much computing burden, three strategies involving minimal modifications of the network architecture of the CNN layers were investigated: (1) making the CNN layers a bit deeper by using the residual blocks, (2) making the CNN layers a bit wider by increasing the number of CNN kernels, and (3) separating the feature input into multiple paths (the model was…
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Taxonomy
TopicsPhonocardiography and Auscultation Techniques · Music and Audio Processing · Respiratory and Cough-Related Research
