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ID 118789
タイトル別表記
New acoustic respiratory sound monitoring with artificial intelligence
著者
Shimizu, Yoshitaka Hiroshima University
Saeki, Noboru Hiroshima University
Ohshimo, Shinichiro Hiroshima University
Doi, Mitsuru Hiroshima University
Oue, Kana Hiroshima University
Yoshida, Mitsuhiro Hiroshima University
Takahashi, Tamayo Hiroshima University
Oda, Aya Hiroshima University
Sadamori, Takuma Hiroshima University
Shime, Nobuaki Hiroshima University
キーワード
Airway Obstruction
Artificial Intelligence
Obesity
Monitored anesthesia care
資料タイプ
学術雑誌論文
抄録
Monitored anesthesia care (MAC) often causes airway complications, particularly posing an elevated risk of aspiration and airway obstruction in obese patients. This study aimed to quantify the levels of aspiration and airway obstruction using an artificial intelligence (AI)-based acoustic analysis algorithm, assessing its utility in identifying airway complications in obese patients. To verify the correlation between the stridor quantitative value (STQV) calculated by acoustic analysis and body weight, and to further evaluate fluid retention and airway obstruction, STQV calculated exhaled breath sounds collected at the neck region, was compared before and after injection of 3 ml of water in the oral cavity and at the start and end of the MAC procedures. STQV measured immediately following the initiation of MAC exhibited a weak correlation with body mass index. Furhtermore, STQV values before and after water injection increased predominantly after injection, further increased at the end of MAC. AI-based analysis of cervical respiratory sounds can enhance the safety of airway management during MAC by quantifying airway obstruction and fluid retention in obese patients.
掲載誌名
The Journal of Medical Investigation
ISSN
13496867
13431420
cat書誌ID
AA11166929
出版者
Tokushima University Faculty of Medicine
70
3-4
開始ページ
430
終了ページ
435
並び順
430
発行日
2023-08
出版社版DOI
出版社版URL
フルテキストファイル
言語
eng
著者版フラグ
出版社版
部局
医学系