TY - JOUR
T1 - Optical Diagnosis of Early Colorectal Carcinoma
T2 - Performance of an Artificial Intelligence Algorithm vs Endoscopists
AU - Thijssen, Ayla
AU - Dehghani, Nikoo
AU - Schreuder, Ramon Michel
AU - Boonstra, Jurjen J.
AU - Dekker, Evelien
AU - Baven-Pronk, Martine A.M.C.
AU - Schrauwen, Ruud W.M.
AU - Bos, Philip R.
AU - Terhaar sive Droste, Jochim S.
AU - Hadithi, Muhammed
AU - de Vos tot Nederveen Cappel, Wouter H.
AU - Albers, Sander C.
AU - van Bokhorst, Querijn N.E.
AU - Balkema, Sebastiaan
AU - Kessels, Koen
AU - Bulte, Geert J.
AU - Sint Nicolaas, Jerome
AU - Straathof, Jan Willem A.
AU - Haans, Jeoffrey J.L.
AU - Smeets, Fabiënne G.M.
AU - de With, Peter H.N.
AU - Winkens, Bjorn
AU - van der Sommen, Fons
AU - Moons, Leon M.G.
AU - Schoon, Erik J.
N1 - Publisher Copyright:
© 2026 The Authors. Published by Elsevier Inc. This is an open access article under the CC BY license. http://creativecommons.org/licenses/by/4.0/
PY - 2026
Y1 - 2026
N2 - ABSTRACTBACKGROUND AND AIMSEarly colorectal carcinomas (CRCs) are poorly recognized during colonoscopy. In this study, we compared early CRC diagnosis of a computer-aided diagnosis (CADx) system based on artificial intelligence (AI) with the optical diagnosis of endoscopists.METHODSA large training dataset with images and videos of colorectal lesions (≥10 mm or <10 mm with a suspicion of CRC) for CADx system development and a testing dataset of 50 videos from 13 centers were collected. Colonoscopists were invited to also diagnose these 50 videos online. Primary outcomes were diagnostic performance of AI and endoscopists to predict presence of CRC. Endoscopist characteristics such as sex and endoscopy experience were collected and tested for association with diagnostic performance.RESULTSSeventy-eight international endoscopists participated. AI and endoscopists reached sensitivities of 78.6% (95% CI, 48.8%-94.3%) and 89.2% (95% CI, 87.2%-90.9%), specificities of 83.3% (95% CI, 66.5%-93.0%) and 68.2% (95% CI, 66.4%-69.9%), and diagnostic accuracies of 82.0% (95% CI, 68.1%-91.0%) and 74.1% (95% CI, 72.7%-75.4%), respectively. Out of all endoscopists’ characteristics, only the number of annual colonoscopies, hospital type, and number of yearly T1 CRCs seen showed statistically significant differences in 1 or more of the diagnostic performance measures.CONCLUSIONThe COMET (COMputer-aidEd characTerization) CADx system for early CRC diagnosis showed higher diagnostic accuracy and specificity but lower sensitivity than the mean of endoscopists. Endoscopists with various characteristics could benefit from using AI. To further guide CADx system development, clear optical diagnosis thresholds for early CRC recognition could be helpful and could be informed by endoscopists with high exposure to early CRCs.
AB - ABSTRACTBACKGROUND AND AIMSEarly colorectal carcinomas (CRCs) are poorly recognized during colonoscopy. In this study, we compared early CRC diagnosis of a computer-aided diagnosis (CADx) system based on artificial intelligence (AI) with the optical diagnosis of endoscopists.METHODSA large training dataset with images and videos of colorectal lesions (≥10 mm or <10 mm with a suspicion of CRC) for CADx system development and a testing dataset of 50 videos from 13 centers were collected. Colonoscopists were invited to also diagnose these 50 videos online. Primary outcomes were diagnostic performance of AI and endoscopists to predict presence of CRC. Endoscopist characteristics such as sex and endoscopy experience were collected and tested for association with diagnostic performance.RESULTSSeventy-eight international endoscopists participated. AI and endoscopists reached sensitivities of 78.6% (95% CI, 48.8%-94.3%) and 89.2% (95% CI, 87.2%-90.9%), specificities of 83.3% (95% CI, 66.5%-93.0%) and 68.2% (95% CI, 66.4%-69.9%), and diagnostic accuracies of 82.0% (95% CI, 68.1%-91.0%) and 74.1% (95% CI, 72.7%-75.4%), respectively. Out of all endoscopists’ characteristics, only the number of annual colonoscopies, hospital type, and number of yearly T1 CRCs seen showed statistically significant differences in 1 or more of the diagnostic performance measures.CONCLUSIONThe COMET (COMputer-aidEd characTerization) CADx system for early CRC diagnosis showed higher diagnostic accuracy and specificity but lower sensitivity than the mean of endoscopists. Endoscopists with various characteristics could benefit from using AI. To further guide CADx system development, clear optical diagnosis thresholds for early CRC recognition could be helpful and could be informed by endoscopists with high exposure to early CRCs.
KW - Colorectal cancer
KW - Colorectal polyps
KW - Computer-assisted diagnosis
KW - Expert
UR - https://www.scopus.com/pages/publications/105034636510
U2 - 10.1016/j.tige.2026.250968
DO - 10.1016/j.tige.2026.250968
M3 - Article
AN - SCOPUS:105034636510
SN - 2590-0307
VL - 28
JO - Techniques and Innovations in Gastrointestinal Endoscopy
JF - Techniques and Innovations in Gastrointestinal Endoscopy
IS - 2
M1 - 250968
ER -