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Artificial Intelligence in Gastrointestinal Endoscopy in a Resource-constrained Setting: A Reality Check

Shivaram Prasad Singh, Prajna Anirvan, Dinesh Meher

2021Euroasian Journal of Hepato-Gastroenterology16 citationsDOIOpen Access PDF

Abstract

Artificial intelligence (AI) is being increasingly explored in different domains of gastroenterology, particularly in endoscopic image analysis, cancer screening, and prognostication models. It is widely touted to become an integral part of routine endoscopies, considering the bulk of data handled by endoscopists and the complex nature of critical analyses performed. However, the application of AI in endoscopy in resourceconstrained settings remains fraught with problems. We conducted an extensive literature review using the PubMed database on articles covering the application of AI in endoscopy and the difficulties encountered in resource-constrained settings. We have tried to summarize in the present review the potential problems that may hinder the application of AI in such settings. Hopefully, this review will enable endoscopists and health policymakers to ponder over these issues before trying to extrapolate the advancements of AI in technically advanced settings to those having constraints at multiple levels.

Topics & Concepts

Resource (disambiguation)EndoscopyComputer scienceMedicineRadiologyComputer networkColorectal Cancer Screening and DetectionPancreatic and Hepatic Oncology ResearchRadiomics and Machine Learning in Medical Imaging
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