Fiche publication


Date publication

février 2025

Journal

Scientific data

Auteurs

Membres identifiés du Cancéropôle Est :
Pr MARESCAUX Jacques , Pr MUTTER Didier


Tous les auteurs :
Mascagni P, Alapatt D, Murali A, Vardazaryan A, Garcia A, Okamoto N, Costamagna G, Mutter D, Marescaux J, Dallemagne B, Padoy N

Résumé

Minimally invasive image-guided surgery heavily relies on vision. Deep learning models for surgical video analysis can support surgeons in visual tasks such as assessing the critical view of safety (CVS) in laparoscopic cholecystectomy, potentially contributing to surgical safety and efficiency. However, the performance, reliability, and reproducibility of such models are deeply dependent on the availability of data with high-quality annotations. To this end, we release Endoscapes2023, a dataset comprising 201 laparoscopic cholecystectomy videos with regularly spaced frames annotated with segmentation masks of surgical instruments and hepatocystic anatomy, as well as assessments of the criteria defining the CVS by three trained surgeons following a public protocol. Endoscapes2023 enables the development of models for object detection, semantic and instance segmentation, and CVS prediction, contributing to safe laparoscopic cholecystectomy.

Mots clés

Cholecystectomy, Laparoscopic, Humans, Deep Learning, Surgery, Computer-Assisted

Référence

Sci Data. 2025 02 25;12(1):331