| Literature DB >> 33448511 |
Xavier Dray1,2, Dimitris Iakovidis3, Charles Houdeville1, Rodrigo Jover4, Dimitris Diamantis3, Aymeric Histace2, Anastasios Koulaouzidis5.
Abstract
Neural network-based solutions are under development to alleviate physicians from the tedious task of small-bowel capsule endoscopy reviewing. Computer-assisted detection is a critical step, aiming to reduce reading times while maintaining accuracy. Weakly supervised solutions have shown promising results; however, video-level evaluations are scarce, and no prospective studies have been conducted yet. Automated characterization (in terms of diagnosis and pertinence) by supervised machine learning solutions is the next step. It relies on large, thoroughly labeled databases, for which preliminary "ground truth" definitions by experts are of tremendous importance. Other developments are under ways, to assist physicians in localizing anatomical landmarks and findings in the small bowel, in measuring lesions, and in rating bowel cleanliness. It is still questioned whether artificial intelligence will enter the market with proprietary, built-in or plug-in software, or with a universal cloud-based service, and how it will be accepted by physicians and patients.Entities:
Keywords: algorithms; artificial intelligence; capsule endoscopy; deep learning; neural networks; small bowel
Mesh:
Year: 2021 PMID: 33448511 DOI: 10.1111/jgh.15341
Source DB: PubMed Journal: J Gastroenterol Hepatol ISSN: 0815-9319 Impact factor: 4.029