Standardisation of an AI-based vocal fold assessment tool on a recurrent respiratory papillomatosis model
Articolo
Data di Pubblicazione:
2025
Abstract:
Objective. The assessment of extension of papilloma growth in recurrent respiratory papillomatosis (RRP) on vocal folds can be performed quantitatively utilising artificial intelligence (AI). Methods. This study evaluated the efficacy of an AI-based annotation system, Glottis Coverage Artificial Intelligence and Deep learning (GC-AID) in 4 patients to assess affected mucosa in white light (WL) and narrow band imaging modalities as a case-study for future applications. Results. In healthy larynges, the mean difference between areas of the right and left vocal folds was minimal (2.6%). For patient # 4, following treatment, RRP coverage in WL decreased from 69.5% to 42.6%. A similar improvement was observed for patient # 1, while no significant benefits were noted for patients # 2 and # 3. Conclusions. The extent of RRP was precisely measured with GC-AID before and after treatment. Obtaining objective, quantitative results was possible with frame extraction and annotation using the system described herein.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
NBI; artificial intelligence; deep learning; larynx; papillomatosis
Elenco autori:
Buchwald, Mikolaj; Nogal, Piotr; Nowak, Jan; Kupinski, Szymon; Andrzejewski, Wojciech; Pukacki, Juliusz; Jackowska, Joanna; Klimza, Hanna; Mazurek, Cezary; Paderno, Alberto; Piazza, Cesare; Wierzbicka, Małgorzata
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