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Expected value of artificial intelligence in gastrointestinal endoscopy: European Society of Gastrointestinal Endoscopy (ESGE) Position Statement

  • Helmut Messmann
  • , Raf Bisschops
  • , Giulio Antonelli
  • , Diogo Libanio
  • , Pieter Sinonquel
  • , Mohamed Abdelrahim
  • , Omer F. Ahmad
  • , Miguel Areia
  • , Jacques J.G.H.M. Bergman
  • , Pradeep Bhandari
  • , Ivo Boskoski
  • , Evelien Dekker
  • , Dirk Domagk
  • , Alanna Ebigbo
  • , Tom Eelbode
  • , Rami Eliakim
  • , Michael Hafner
  • , Rehan J. Haidry
  • , Rodrigo Jover
  • , Michal F. Kaminski
  • Roman Kuvaev, Yuichi Mori, Maxime Palazzo, Alessandro Repici, Emanuele Rondonotti, Matthew D. Rutter, Yutaka Saito, Prateek Sharma, Cristiano Spada, Cristiano Spada, Marco Spadaccini, Andrew Veitch, Ian M. Gralnek, Cesare Hassan, Mario Dinis-Ribeiro
  • Universitatsklinikum Augsburg
  • Departement Chronische Ziekten, Metabolisme en Veroudering
  • Ospedale Dei Castelli Hospital
  • Instituto Português de Oncologia do Porto Francisco Gentil E.P.E.
  • Portsmouth Hospitals University NHS Trust
  • University College London Hospital
  • Portuguese Oncology Institute of Coimbra
  • Amsterdam UMC
  • University of Münster
  • KU Leuven
  • Tel Aviv University
  • Barmherzige Schwestern Krankenhaus
  • Hospital General Universitario de Alicante
  • University of Oslo
  • Yaroslavl Regional Cancer Hospital
  • European Hospital
  • Humanitas University
  • Ospedale Valduce
  • North Tees and Hartlepool NHS Foundation Trust
  • National Cancer Center Hospital
  • University of Kansas
  • Royal Wolverhampton Hospitals NHS Trust
  • Emek Medical Center

Research output: Contribution to journalArticle

Abstract

This ESGE Position Statement defines the expected value of artificial intelligence (AI) for the diagnosis and management of gastrointestinal neoplasia within the framework of the performance measures already defined by ESGE. This is based on the clinical relevance of the expected task and the preliminary evidence regarding artificial intelligence in artificial or clinical settings. Main recommendations: (1) For acceptance of AI in assessment of completeness of upper GI endoscopy, the adequate level of mucosal inspection with AI should be comparable to that assessed by experienced endoscopists. (2) For acceptance of AI in assessment of completeness of upper GI endoscopy, automated recognition and photodocumentation of relevant anatomical landmarks should be obtained in >= 90% of the procedures. (3) For acceptance of AI in the detection of Barrett's high grade intraepithelial neoplasia or cancer, the AI-assisted detection rate for suspicious lesions for targeted biopsies should be comparable to that of experienced endoscopists with or without advanced imaging techniques. (4) For acceptance of AI in the management of Barrett's neoplasia, AI-assisted selection of lesions amenable to endoscopic resection should be comparable to that of experienced endoscopists. (5) For acceptance of AI in the diagnosis of gastric precancerous conditions, AI-assisted diagnosis of atrophy and intestinal metaplasia should be comparable to that provided by the established biopsy protocol, including the estimation of extent, and consequent allocation to the correct endoscopic surveillance interval. (6) For acceptance of artificial intelligence for automated lesion detection in small-bowel capsule endoscopy (SBCE), the performance of AI-assisted reading should be comparable to that of experienced endoscopists for lesion detection, without increasing but possibly reducing the reading time of the operator. (7) For acceptance of AI in the detection of colorectal polyps, the AI-assisted adenoma detection rate should be comparable to that of experienced endoscopists. (8) For acceptance of AI optical diagnosis (computer-aided diagnosis [CADx]) of diminutive polyps (<= 5 mm), AI-assisted characterization should match performance standards for implementing resect-and-discard and diagnose-and-leave strategies. (9) For acceptance of AI in the management of polyps >= 6 mm, AI-assisted characterization should be comparable to that of experienced endoscopists in selecting lesions amenable to endoscopic resection.
Original languageEnglish
Pages (from-to)1211-1231
Number of pages21
JournalEndoscopy
Volume54
DOIs
Publication statusPublished - 2022

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Keywords

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