End-to-end deep learning for auxiliary diagnosis of pneumonia using original lung sounds(PDF)
《中国医学物理学杂志》[ISSN:1005-202X/CN:44-1351/R]
- Issue:
- 2025年第2期
- Page:
- 274-280
- Research Field:
- 医学人工智能
- Publishing date:
Info
- Title:
- End-to-end deep learning for auxiliary diagnosis of pneumonia using original lung sounds
- Author(s):
- XIAO Xin; GAO Yuqing; ZHANG Jianmin
- School of Artificial Intelligence, Jianghan University, Wuhan 430056, China
- Keywords:
- Keywords: original lung sound pneumonia intelligent auxiliary diagnosis end-to-end learning DCL-Net
- PACS:
- R318;R563.1
- DOI:
- DOI:10.3969/j.issn.1005-202X.2025.02.021
- Abstract:
- Abstract: An end-to-end auxiliary diagnosis method for pneumonia based on DCL-Net with dual-path of different convolutional kernels is proposed, in which no feature engineering is required, and the original lung sound signal is directly input into the model. The dual-path convolutional network with kernel sizes of 1*3 and 1*5, with each path containing 3 residual blocks, allows the model to automatically learn features of lung sounds at different scales while avoiding model degradation. The performance of the end-to-end method is validated through the comparisons with 3 commonly used feature extraction methods in signal analysis, namely Mel-spectrogram, short-time Fourier transform, and wavelet transform. The results show that the proposed method has a diagnostic accuracy of 61.4% for the 4-class classification task (normal, moderate, severe, critical), which is 1.6%, 5.0%, and 3.7% higher than the other 3 feature extraction methods, and the diagnostic accuracy is 89.7% for the binary classification task (normal or abnormal), which is 11.0%, 5.1%, and 11.2% higher than the other 3 feature engineering methods, demonstrating that it can serve as an effective diagnostic tool for pneumonia.
Last Update: 2025-01-22