| Literature DB >> 33657508 |
Sharib Ali1, Mariia Dmitrieva2, Noha Ghatwary3, Sophia Bano4, Gorkem Polat5, Alptekin Temizel5, Adrian Krenzer6, Amar Hekalo6, Yun Bo Guo7, Bogdan Matuszewski7, Mourad Gridach8, Irina Voiculescu9, Vishnusai Yoganand10, Arnav Chavan11, Aryan Raj11, Nhan T Nguyen12, Dat Q Tran12, Le Duy Huynh13, Nicolas Boutry13, Shahadate Rezvy14, Haijian Chen15, Yoon Ho Choi16, Anand Subramanian17, Velmurugan Balasubramanian18, Xiaohong W Gao14, Hongyu Hu19, Yusheng Liao19, Danail Stoyanov4, Christian Daul20, Stefano Realdon21, Renato Cannizzaro22, Dominique Lamarque23, Terry Tran-Nguyen24, Adam Bailey25, Barbara Braden25, James E East25, Jens Rittscher2.
Abstract
The Endoscopy Computer Vision Challenge (EndoCV) is a crowd-sourcing initiative to address eminent problems in developing reliable computer aided detection and diagnosis endoscopy systems and suggest a pathway for clinical translation of technologies. Whilst endoscopy is a widely used diagnostic and treatment tool for hollow-organs, there are several core challenges often faced by endoscopists, mainly: 1) presence of multi-class artefacts that hinder their visual interpretation, and 2) difficulty in identifying subtle precancerous precursors and cancer abnormalities. Artefacts often affect the robustness of deep learning methods applied to the gastrointestinal tract organs as they can be confused with tissue of interest. EndoCV2020 challenges are designed to address research questions in these remits. In this paper, we present a summary of methods developed by the top 17 teams and provide an objective comparison of state-of-the-art methods and methods designed by the participants for two sub-challenges: i) artefact detection and segmentation (EAD2020), and ii) disease detection and segmentation (EDD2020). Multi-center, multi-organ, multi-class, and multi-modal clinical endoscopy datasets were compiled for both EAD2020 and EDD2020 sub-challenges. The out-of-sample generalization ability of detection algorithms was also evaluated. Whilst most teams focused on accuracy improvements, only a few methods hold credibility for clinical usability. The best performing teams provided solutions to tackle class imbalance, and variabilities in size, origin, modality and occurrences by exploring data augmentation, data fusion, and optimal class thresholding techniques.Entities:
Keywords: Artefact; Challenge; Deep learning; Detection; Disease; Endoscopy; Gastroenterology; Segmentation
Year: 2021 PMID: 33657508 DOI: 10.1016/j.media.2021.102002
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545