Automatic scoring of drug-induced sleep endoscopy for obstructive sleep apnea using deep learning

Treatment of obstructive sleep apnea is crucial for long term health and reduced economic burden. For those considered for surgery, drug-induced sleep endoscopy (DISE) is a method to characterize location and pattern of sleep-related upper airway collapse. According to the VOTE classification system...

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Veröffentlicht in:Sleep medicine 2023-02, Vol.102, p.19-29
Hauptverfasser: Hanif, Umaer, Kiaer, Eva Kirkegaard, Capasso, Robson, Liu, Stanley Y., Mignot, Emmanuel J.M., Sorensen, Helge B.D., Jennum, Poul
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Sprache:eng
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Zusammenfassung:Treatment of obstructive sleep apnea is crucial for long term health and reduced economic burden. For those considered for surgery, drug-induced sleep endoscopy (DISE) is a method to characterize location and pattern of sleep-related upper airway collapse. According to the VOTE classification system, four upper airway sites of collapse are characterized: velum (V), oropharynx (O), tongue (T), and epiglottis (E). The degree of obstruction per site is classified as 0 (no obstruction), 1 (partial obstruction), or 2 (complete obstruction). Here we propose a deep learning approach for automatic scoring of VOTE obstruction degrees from DISE videos. We included 281 DISE videos with varying durations (6 s–16 min) from two sleep clinics: Copenhagen University Hospital and Stanford University Hospital. Examinations were split into 5-s clips, each receiving annotations of 0, 1, 2, or X (site not visible) for each site (V, O, T, and E), which was used to train a deep learning model. Predicted VOTE obstruction degrees per examination was obtained by taking the highest predicted degree per site across 5-s clips, which was evaluated against VOTE degrees annotated by surgeons. Mean F1 score of 70% was obtained across all DISE examinations (V: 85%, O: 72%, T: 57%, E: 65%). For each site, sensitivity was highest for degree 2 and lowest for degree 0. No bias in performance was observed between videos from different clinicians/hospitals. This study demonstrates that automating scoring of DISE examinations show high validity and feasibility in degree of upper airway collapse. •First ever attempt to automate scoring of drug-induced sleep endoscopy.•Deep learning-based estimation of sites of upper airway collapse and obstruction degrees.•Proposed algorithm provides objective, data-driven predictions which can help surgeons.•Performance is comparable to experienced otolaryngology surgeons.
ISSN:1389-9457
1878-5506
DOI:10.1016/j.sleep.2022.12.015