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SimCol3D -- 3D Reconstruction during Colonoscopy Challenge

Authors :
Rau, Anita
Bano, Sophia
Jin, Yueming
Azagra, Pablo
Morlana, Javier
Kader, Rawen
Sanderson, Edward
Matuszewski, Bogdan J.
Lee, Jae Young
Lee, Dong-Jae
Posner, Erez
Frank, Netanel
Elangovan, Varshini
Raviteja, Sista
Li, Zhengwen
Liu, Jiquan
Lalithkumar, Seenivasan
Islam, Mobarakol
Ren, Hongliang
Lovat, Laurence B.
Montiel, José M. M.
Stoyanov, Danail
Source :
Medical Image Analysis 96 (2024): 103195
Publication Year :
2023

Abstract

Colorectal cancer is one of the most common cancers in the world. While colonoscopy is an effective screening technique, navigating an endoscope through the colon to detect polyps is challenging. A 3D map of the observed surfaces could enhance the identification of unscreened colon tissue and serve as a training platform. However, reconstructing the colon from video footage remains difficult. Learning-based approaches hold promise as robust alternatives, but necessitate extensive datasets. Establishing a benchmark dataset, the 2022 EndoVis sub-challenge SimCol3D aimed to facilitate data-driven depth and pose prediction during colonoscopy. The challenge was hosted as part of MICCAI 2022 in Singapore. Six teams from around the world and representatives from academia and industry participated in the three sub-challenges: synthetic depth prediction, synthetic pose prediction, and real pose prediction. This paper describes the challenge, the submitted methods, and their results. We show that depth prediction from synthetic colonoscopy images is robustly solvable, while pose estimation remains an open research question.

Details

Database :
arXiv
Journal :
Medical Image Analysis 96 (2024): 103195
Publication Type :
Report
Accession number :
edsarx.2307.11261
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.media.2024.103195