Data di Pubblicazione:
2023
Abstract:
Objective. To achieve instance segmentation of upper aerodigestive tract (UADT) neoplasms using a deep learning (DL) algorithm, and to identify differences in its diagnostic performance in three different sites: larynx/hypopharynx, oral cavity and oropharynx.Methods. A total of 1034 endoscopic images from 323 patients were examined under narrow band imaging (NBI). The Mask R-CNN algorithm was used for the analysis. The dataset split was: 935 training, 48 validation and 51 testing images. Dice Similarity Coefficient (Dsc) was the main outcome measure.Results. Instance segmentation was effective in 76.5% of images. The mean Dsc was 0.90 & PLUSMN; 0.05. The algorithm correctly predicted 77.8%, 86.7% and 55.5% of lesions in the larynx/hypopharynx, oral cavity, and oropharynx, respectively. The mean Dsc was 0.90 & PLUSMN; 0.05 for the larynx/hypopharynx, 0.60 & PLUSMN; 0.26 for the oral cavity, and 0.81 & PLUSMN; 0.30 for the oropharynx. The analysis showed inferior diagnostic results in the oral cavity compared with the larynx/hypopharynx (p < 0.001). Conclusions. The study confirms the feasibility of instance segmentation of UADT using DL algorithms and shows inferior diagnostic results in the oral cavity compared with other anatomic areas.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
artificial intelligence; deep learning; instance segmentation; videomics
Elenco autori:
Paderno, Alberto; Villani, Francesca Pia; Fior, Milena; Berretti, Giulia; Gennarini, Francesca; Zigliani, Gabriele; Ulaj, Emanuela; Montenegro, Claudia; Sordi, Alessandra; Sampieri, Claudio; Peretti, Giorgio; Moccia, Sara; Piazza, Cesare
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