Deep learning for detection and segmentation of artefact and disease instances in gastrointestinal endoscopy
Sharib Ali, Mariia Dmitrieva, Noha Ghatwary, Sophia Bano, Gorkem, Polat, Alptekin Temizel, Adrian Krenzer, Amar Hekalo, Yun Bo Guo, Bogdan, Matuszewski, Mourad Gridach, Irina Voiculescu, Vishnusai Yoganand, Arnav, Chavan, Aryan Raj, Nhan T. Nguyen, Dat Q. Tran, Le Duy Huynh

TL;DR
This paper summarizes the top methods from the EndoCV2020 challenge, focusing on deep learning techniques for artefact and disease detection in gastrointestinal endoscopy, highlighting approaches to improve robustness and clinical applicability.
Contribution
It provides an objective comparison of state-of-the-art deep learning methods for endoscopy artefact and disease segmentation, including analysis of generalization and clinical usability.
Findings
Top methods addressed class imbalance and variability.
Data augmentation and fusion improved accuracy.
Few methods demonstrated clinical readiness.
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…
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