Clinicians' guide to artificial intelligence in colon capsule endoscopy - technology made simple
Author
Lei, Ian INia, Gohar J
White, Elizabeth
Wenzek, Hagen
Segui, Santi
Watson, Angus J M
Koulaouzidis, Anastasios
Arasaradnam, Ramesh P
Affiliation
Authors: Ian I. Lei, Gohar J. Nia, Elizabeth White, Hagen Wenzek, Santi Segui, Angus J. M. Watson, Anastasios Koulaouzidis and Ramesh P. ArasaradnamPublication date
2023-03-08Subject
Gastroenterology
Metadata
Show full item recordAbstract
Artificial intelligence (AI) applications have become widely popular across the healthcare ecosystem. Colon capsule endoscopy (CCE) was adopted in the NHS England pilot project following the recent COVID pandemic's impact. It demonstrated its capability to relieve the national backlog in endoscopy. As a result, AI-assisted colon capsule video analysis has become gastroenterology's most active research area. However, with rapid AI advances, mastering these complex machine learning concepts remains challenging for healthcare professionals. This forms a barrier for clinicians to take on this new technology and embrace the new era of big data. This paper aims to bridge the knowledge gap between the current CCE system and the future, fully integrated AI system. The primary focus is on simplifying the technical terms and concepts in machine learning. This will hopefully address the general "fear of the unknown in AI" by helping healthcare professionals understand the basic principle of machine learning in capsule endoscopy and apply this knowledge in their future interactions and adaptation to AI technology. It also summarises the evidence of AI in CCE and its impact on diagnostic pathways. Finally, it discusses the unintended consequences of using AI, ethical challenges, potential flaws, and bias within clinical settings.Citation
Diagnostics (Basel) . 2023 Mar 8;13(6):1038Type
ArticleOther
PMID
36980347Journal
DiagnosticsPublisher
MDPIae974a485f413a2113503eed53cd6c53
10.3390/diagnostics13061038