Year 2022 / Volume 114 / Number 10
Review
Artificial intelligence in gastrointestinal endoscopy — Evolution to a new era

605-615

DOI: 10.17235/reed.2022.8961/2022

Oswaldo Ortiz Zúñiga, María Glòria Fernández Esparrach, María Daca, María Pellisé,

Abstract
Artificial intelligence (AI) systems based on machine learning have evolved in the last few years with an increasing applicability in gastrointestinal endoscopy. Thanks to AI, an image (input) can be transformed into a clinical decision (output). Although AI systems have been initially studied to improve detection (CADe) and characterization of colorectal lesions (CADx), other indications are being currently investigated as detection of blind spots, scope guidance, or delineation/measurement of lesions. The objective of these review is to summarize the current evidence on applicability of AI systems in gastrointestinal endoscopy, highlight strengths and limitations of the technology and review regulatory and ethical aspects for its general implementation in gastrointestinal endoscopy.
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Ortiz Zúñiga O, Fernández Esparrach M, Daca M, Pellisé M. Artificial intelligence in gastrointestinal endoscopy — Evolution to a new era. 8961/2022


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Publication history

Received: 26/05/2022

Accepted: 22/06/2022

Online First: 30/06/2022

Published: 07/10/2022

Article revision time: 22 days

Article Online First time: 35 days

Article editing time: 134 days


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