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In Gastroenterology report

BACKGROUND : In colonoscopy screening for colorectal cancer, human vision limitations may lead to higher miss rate of lesions; artificial intelligence (AI) assistance has been demonstrated to improve polyp detection. However, there still lacks direct evidence to demonstrate whether AI is superior to trainees or experienced nurses as a second observer to increase adenoma detection during colonoscopy. In this study, we aimed to compare the effectiveness of assistance from AI and human observer during colonoscopy.

METHODS : A prospective multicenter randomized study was conducted from 2 September 2019 to 29 May 2020 at four endoscopy centers in China. Eligible patients were randomized to either computer-aided detection (CADe)-assisted group or observer-assisted group. The primary outcome was adenoma per colonoscopy (APC). Secondary outcomes included polyp per colonoscopy (PPC), adenoma detection rate (ADR), and polyp detection rate (PDR). We compared continuous variables and categorical variables by using R studio (version 3.4.4).

RESULTS : A total of 1,261 (636 in the CADe-assisted group and 625 in the observer-assisted group) eligible patients were analysed. APC (0.42 vs 0.35, P =0.034), PPC (1.13 vs 0.81, P <0.001), PDR (47.5% vs 37.4%, P <0.001), ADR (25.8% vs 24.0%, P =0.464), the number of detected sessile polyps (683 vs 464, P <0.001), and sessile adenomas (244 vs 182, P =0.005) were significantly higher in the CADe-assisted group than in the observer-assisted group. False detections of the CADe system were lower than those of the human observer (122 vs 191, P <0.001).

CONCLUSIONS : Compared with the human observer, the CADe system may improve the clinical outcome of colonoscopy and reduce disturbance to routine practice (Chictr.org.cn No.: ChiCTR1900025235).

Wang Pu, Liu Xiao-Gang, Kang Min, Peng Xue, Shu Mei-Ling, Zhou Guan-Yu, Liu Pei-Xi, Xiong Fei, Deng Ming-Ming, Xia Hong-Fen, Li Jian-Jun, Long Xiao-Qi, Song Yan, Li Liang-Ping

2023

adenoma, artificial intelligence, colon cancer screening, computer-aided detection, early detection