Feasibility of real time artificial intelligence assisted anatomical structure recognition during endoscopic submucosal dissection
DOI:
10.1055/a-2615-8008
Publication Date:
2025-05-20T00:05:03Z
AUTHORS (10)
ABSTRACT
Endoscopic submucosal dissection (ESD) is a challenging minimally invasive resection technique with a long training period and relevant operator dependent complications. Real time artificial intelligence (AI) orientation support may improve safety and intervention speed.
1011 endoscopic still images from 30 ESDs were annotated for relevant anatomical structures and used for training of a deep learning algorithm. After internal and external validation, this algorithm was applied to 12 ESDs performed by either one expert or one novice in ESD using an in vivo porcine model. External validation yielded mean Dice Scores of 88%, 60%, 58% and 92% for background, submucosal layer, submucosal blood vessels and muscle layer, respectively. The system was successfully applied during all 12 ESDs. All resections were completed en bloc and without complications. In this proof-of-concept study, feasibility of a real time AI algorithm for anatomical structure delineation and orientation support during ESD was evaluated. The application proved safe and apt for routine procedures in humans. Further studies are needed to elucidate a potential clinical benefit of this new technology.
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