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Machine learning in GI endoscopy

Authors :
Fons van der Sommen
Jeroen de Groof
Maarten Struyvenberg
Joost van der Putten
Tim Boers
Kiki Fockens
Erik J Schoon
Wouter Curvers
Peter de With
Yuichi Mori
Michael Byrne
Jacques J G H M Bergman
Video Coding & Architectures
Center for Care & Cure Technology Eindhoven
EAISI Health
Gastroenterology and Hepatology
Graduate School
AGEM - Re-generation and cancer of the digestive system
CCA - Imaging and biomarkers
AGEM - Amsterdam Gastroenterology Endocrinology Metabolism
Source :
Gut, Gut, 69(11), 2035-2045. BMJ Publishing Group, Gut, 69(11):gutjnl-2019-320466, 2035-2045. BMJ Publishing Group
Publication Year :
2020
Publisher :
BMJ Publishing Group, 2020.

Abstract

There has been a vast increase in GI literature focused on the use of machine learning in endoscopy. The relative novelty of this field poses a challenge for reviewers and readers of GI journals. To appreciate scientific quality and novelty of machine learning studies, understanding of the technical basis and commonly used techniques is required. Clinicians often lack this technical background, while machine learning experts may be unfamiliar with clinical relevance and implications for daily practice. Therefore, there is an increasing need for a multidisciplinary, international evaluation on how to perform high-quality machine learning research in endoscopy. This review aims to provide guidance for readers and reviewers of peer-reviewed GI journals to allow critical appraisal of the most relevant quality requirements of machine learning studies. The paper provides an overview of common trends and their potential pitfalls and proposes comprehensive quality requirements in six overarching themes: terminology, data, algorithm description, experimental setup, interpretation of results and machine learning in clinical practice.

Details

Language :
English
ISSN :
14683288 and 00175749
Volume :
69
Issue :
11
Database :
OpenAIRE
Journal :
Gut
Accession number :
edsair.doi.dedup.....f262c1977cc6da6c63ab34dc83dabb9a