Literature DB >> 32767704

Artificial intelligence for non-polypoid colorectal neoplasms.

Cesare Hassan1, Pradeep Bhandari2, Giulio Antonelli1, Alessandro Repici3.   

Abstract

The miss rate of flat advanced colorectal neoplasia is still unacceptably high, especially in the Western setting, notwithstanding the widespread implementation of quality improvement programs and training. It is well known that flat morphology is associated with miss rate of colorectal neoplasia, and that this subset of lesions often shows a more aggressive biological behaviour. Artificial intelligence (AI) applied to the detection of colorectal neoplasia has been shown to increase adenoma detection rate, consistently across all lesion sizes and locations in the colon. However, there is still uncertainty whether AI can reduce the miss rate of flat advanced neoplasia, mainly because all published trials report a low number of flat colorectal lesions in their training sets, and this could reduce AI accuracy for this subset of lesions. In addition, flat lesions have different morphologies with variable prevalence and potentially different accuracy in their detection. For example, the subtle appearance and rarer frequency of a non-granular laterally spreading tumor (LST) could be much harder to identify than a granular mixed LST. In this review, we present a summary of the evidence on the role of AI in the identification of colorectal flat neoplasia, with a focus on data regarding presence of LSTs in the training/validation sets of the AI systems currently available on the market.
© 2020 Japan Gastroenterological Endoscopy Society.

Entities:  

Keywords:  CADe; artificial intelligence; colonoscopy; detection; non-polypoid neoplasia

Mesh:

Year:  2020        PMID: 32767704     DOI: 10.1111/den.13807

Source DB:  PubMed          Journal:  Dig Endosc        ISSN: 0915-5635            Impact factor:   7.559


  4 in total

Review 1.  Artificial intelligence-aided colonoscopy: Recent developments and future perspectives.

Authors:  Giulio Antonelli; Paraskevas Gkolfakis; Georgios Tziatzios; Ioannis S Papanikolaou; Konstantinos Triantafyllou; Cesare Hassan
Journal:  World J Gastroenterol       Date:  2020-12-21       Impact factor: 5.742

2.  Colonoscopic image synthesis with generative adversarial network for enhanced detection of sessile serrated lesions using convolutional neural network.

Authors:  Dan Yoon; Hyoun-Joong Kong; Byeong Soo Kim; Woo Sang Cho; Jung Chan Lee; Minwoo Cho; Min Hyuk Lim; Sun Young Yang; Seon Hee Lim; Jooyoung Lee; Ji Hyun Song; Goh Eun Chung; Ji Min Choi; Hae Yeon Kang; Jung Ho Bae; Sungwan Kim
Journal:  Sci Rep       Date:  2022-01-07       Impact factor: 4.379

3.  Efficacy of international web-based educational intervention in the detection of high-risk flat and depressed colorectal lesions higher (CATCH project) with a video: Randomized trial.

Authors:  Mineo Iwatate; Daizen Hirata; Carlos Paolo D Francisco; Jonard Tan Co; Jeong-Sik Byeon; Neeraj Joshi; Rupa Banerjee; Duc Trong Quach; Than Than Aye; Han-Mo Chiu; Louis H S Lau; Siew C Ng; Tiing Leong Ang; Supakij Khomvilai; Xiao-Bo Li; Shiaw-Hooi Ho; Wataru Sano; Santa Hattori; Mikio Fujita; Yoshitaka Murakami; Masaaki Shimatani; Yuzo Kodama; Yasushi Sano
Journal:  Dig Endosc       Date:  2022-03-14       Impact factor: 6.337

4.  Establishing key research questions for the implementation of artificial intelligence in colonoscopy: a modified Delphi method.

Authors:  Omer F Ahmad; Yuichi Mori; Masashi Misawa; Shin-Ei Kudo; John T Anderson; Jorge Bernal; Tyler M Berzin; Raf Bisschops; Michael F Byrne; Peng-Jen Chen; James E East; Tom Eelbode; Daniel S Elson; Suryakanth R Gurudu; Aymeric Histace; William E Karnes; Alessandro Repici; Rajvinder Singh; Pietro Valdastri; Michael B Wallace; Pu Wang; Danail Stoyanov; Laurence B Lovat
Journal:  Endoscopy       Date:  2021-01-13       Impact factor: 9.776

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.