Literature DB >> 34216598

Detection of elusive polyps using a large-scale artificial intelligence system (with videos).

Dan M Livovsky1, Danny Veikherman2, Tomer Golany2, Amit Aides2, Valentin Dashinsky2, Nadav Rabani2, David Ben Shimol3, Yochai Blau2, Liran Katzir2, Ilan Shimshoni4, Yun Liu3, Ori Segol5, Eran Goldin1, Greg Corrado3, Jesse Lachter6, Yossi Matias2, Ehud Rivlin2, Daniel Freedman2.   

Abstract

BACKGROUND AND AIMS: Colorectal cancer is a leading cause of death. Colonoscopy is the criterion standard for detection and removal of precancerous lesions and has been shown to reduce mortality. The polyp miss rate during colonoscopies is 22% to 28%. DEEP DEtection of Elusive Polyps (DEEP2) is a new polyp detection system based on deep learning that alerts the operator in real time to the presence and location of polyps. The primary outcome was the performance of DEEP2 on the detection of elusive polyps.
METHODS: The DEEP2 system was trained on 3611 hours of colonoscopy videos derived from 2 sources and was validated on a set comprising 1393 hours from a third unrelated source. Ground truth labeling was provided by offline gastroenterologist annotators who were able to watch the video in slow motion and pause and rewind as required. To assess applicability, stability, and user experience and to obtain some preliminary data on performance in a real-life scenario, a preliminary prospective clinical validation study was performed comprising 100 procedures.
RESULTS: DEEP2 achieved a sensitivity of 97.1% at 4.6 false alarms per video for all polyps and of 88.5% and 84.9% for polyps in the field of view for less than 5 and 2 seconds, respectively. DEEP2 was able to detect polyps not seen by live real-time endoscopists or offline annotators in an average of .22 polyps per sequence. In the clinical validation study, the system detected an average of .89 additional polyps per procedure. No adverse events occurred.
CONCLUSIONS: DEEP2 has a high sensitivity for polyp detection and was effective in increasing the detection of polyps both in colonoscopy videos and in real procedures with a low number of false alarms. (Clinical trial registration number: NCT04693078.).
Copyright © 2021 American Society for Gastrointestinal Endoscopy. Published by Elsevier Inc. All rights reserved.

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Year:  2021        PMID: 34216598     DOI: 10.1016/j.gie.2021.06.021

Source DB:  PubMed          Journal:  Gastrointest Endosc        ISSN: 0016-5107            Impact factor:   9.427


  2 in total

Review 1.  Artificial intelligence-assisted colonoscopy: a narrative review of current data and clinical applications.

Authors:  James Weiquan Li; Lai Mun Wang; Tiing Leong Ang
Journal:  Singapore Med J       Date:  2022-03       Impact factor: 3.331

2.  Challenges in artificial intelligence for polyp detection.

Authors:  Yuichi Mori; Masashi Misawa; Shin-Ei Kudo
Journal:  Dig Endosc       Date:  2022-03-22       Impact factor: 6.337

  2 in total

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