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  4. A Progressively Expanded Database for Automated Lung Sound Analysis: An Update
 
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A Progressively Expanded Database for Automated Lung Sound Analysis: An Update

Journal
Applied Sciences (Switzerland)
Journal Volume
12
Journal Issue
15
Date Issued
2022-08-01
Author(s)
Hsu, Fu Shun
Huang, Shang Ran
Huang, Chien Wen
Cheng, Yuan Ren
Chen, Chun Chieh
Hsiao, Jack
Chen, Chung Wei
FEI-PEI LAI  
DOI
10.3390/app12157623
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/632603
URL
https://api.elsevier.com/content/abstract/scopus_id/85136935833
Abstract
Featured Application: Auscultatory lung sound analysis in healthcare. We previously established an open-access lung sound database, HF_Lung_V1, and developed deep learning models for inhalation, exhalation, continuous adventitious sound (CAS), and discontinuous adventitious sound (DAS) detection. The amount of data used for training contributes to model accuracy. In this study, we collected larger quantities of data to further improve model performance and explored issues of noisy labels and overlapping sounds. HF_Lung_V1 was expanded to HF_Lung_V2 with a 1.43× increase in the number of audio files. Convolutional neural network–bidirectional gated recurrent unit network models were trained separately using the HF_Lung_V1 (V1_Train) and HF_Lung_V2 (V2_Train) training sets. These were tested using the HF_Lung_V1 (V1_Test) and HF_Lung_V2 (V2_Test) test sets, respectively. Segment and event detection performance was evaluated. Label quality was assessed. Overlap ratios were computed between inhalation, exhalation, CAS, and DAS labels. The model trained using V2_Train exhibited improved performance in inhalation, exhalation, CAS, and DAS detection on both V1_Test and V2_Test. Poor CAS detection was attributed to the quality of CAS labels. DAS detection was strongly influenced by the overlapping of DAS with inhalation and exhalation. In conclusion, collecting greater quantities of lung sound data is vital for developing more accurate lung sound analysis models.
Subjects
auscultation | convolutional neural network | deep learning | gated recurrent unit | lung sound
SDGs

[SDGs]SDG3

Publisher
MDPI
Type
journal article

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