A Wearable Stethoscope for Accurately Monitoring Real-time Lung Sounds and Distinguishing Wheezing Sounds Based on an Ai Algorithm

Authors
Seo, S. C.Lee, Soo HyunLee, KyoungRyulKang, D. S.Kim, D. H.
Issue Date
2023-06
Publisher
International Congress on Pediatric Pulmonology (CIPP)
Citation
22nd International Congress of Pediatric Pulmonology (CIPP), pp.S156
Abstract
The various bioacoustics signals obtained with auscultation contain complex clinical information used as traditional biomarkers, however it is not widely used in clinical for long-term studies due to spatiotemporal limitations. Here, we developed a wearable stethoscope for skin-attachable, continuous and real-time auscultation using a lung sound monitoring patch (LSMP). The LSMP can monitor respiratory function through mobile app and classify normal and adventitious breathing by comparing the unique acoustic characteristics they produced. Heart and breathing sounds from humans can be distinguished from complex sound consisting of a mixture of the bioacoustic signal and external noise. The performance was further demonstrated with pediatric asthma and elderly chronic obstructive pulmonary disease (COPD) patients. We implemented a counting algorithm to identify wheezing events in real-time regardless of the respiratory cycle. As a result, the AI-based adventitious breathing event counter distinguished over 80% of events, especially wheezing events, in long-term clinical application.
ISSN
8755-6863
URI
https://pubs.kist.re.kr/handle/201004/150226
DOI
10.1002/ppul.26478
Appears in Collections:
KIST Conference Paper > 2023
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