A multisystem-compatible deep learning-based algorithm for detection and characterization of angiectasias in small-bowel capsule endoscopy. A proof-of-concept study. - Archive ouverte HAL Accéder directement au contenu
Article Dans Une Revue Digestive and Liver Disease Année : 2021

A multisystem-compatible deep learning-based algorithm for detection and characterization of angiectasias in small-bowel capsule endoscopy. A proof-of-concept study.

Résumé

Background and aimsCurrent artificial intelligence (AI)-based solutions for capsule endoscopy (CE) interpretation are proprietary. We aimed to evaluate an AI solution trained on a specific CE system (Pillcam®, Medtronic) for the detection of angiectasias on images captured by a different proprietary system (MiroCam®, Intromedic).Material and methodsAn advanced AI solution (Axaro®, Augmented Endoscopy), previously trained on Pillcam® small bowell images, was evaluated on independent datasets with more than 1200 Pillcam® and MiroCam® still frames (equally distributed, with or without angiectasias). Images were reviewed by experts before and after AI interpretation.ResultsSensitivity for the diagnosis of angiectasia was 97.4% with Pillcam® images and 96.1% with Mirocam® images, with specificity of 98.8% and 97.8%, respectively. Performances regarding the delineation of regions of interest and the characterization of angiectasias were similar in both groups (all above 95%). Processing time was significantly shorter with Mirocam® (20.7 ms) than with Pillcam® images (24.6 ms, p<0.0001), possibly related to technical differences between systems.ConclusionThis proof-of-concept study on still images paves the way for the development of resource-sparing, “universal” CE databases and AI solutions for CE interpretation.
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hal-03352234 , version 1 (05-01-2024)

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Paternité - Pas d'utilisation commerciale

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Charles Houdeville, Marc Souchaud, Romain Leenhardt, Hanneke Beaumont, Robert Benamouzig, et al.. A multisystem-compatible deep learning-based algorithm for detection and characterization of angiectasias in small-bowel capsule endoscopy. A proof-of-concept study.. Digestive and Liver Disease, 2021, ⟨10.1016/j.dld.2021.08.026⟩. ⟨hal-03352234⟩
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