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Non-polypoid Colorectal Lesions Detection and False Positive Detection by Artificial Intelligence under Blue Laser Imaging and Linked Color Imaging

Authors :
Satoshi Sugino
Naohisa Yoshida
Zhe Guo
Ruiyao Zhang
Ken Inoue
Ryohei Hirose
Osamu Dohi
Yoshito Itoh
Daiki Nemoto
Kazutomo Togashi
Hironori Yamamoto
Xin Zhu
Source :
Journal of the Anus, Rectum and Colon, Vol 8, Iss 3, Pp 212-220 (2024)
Publication Year :
2024
Publisher :
The Japan Society of Coloproctology, 2024.

Abstract

Objectives: Artificial intelligence (AI) with white light imaging (WLI) is not enough for detecting non-polypoid colorectal polyps and it still has high false positive rate (FPR). We developed AIs using blue laser imaging (BLI) and linked color imaging (LCI) to detect them with specific learning sets (LS). Methods: The contents of LS were as follows, LS (WLI): 1991 WLI images of lesion of 2-10 mm, LS (IEE): 5920 WLI, BLI, and LCI images of non-polypoid and small lesions of 2-20 mm. LS (IEE) was extracted from videos and included both in-focus and out-of-focus images. We designed three AIs as follows: AI (WLI) finetuned by LS (WLI), AI (IEE) finetuned by LS (WLI)+LS (IEE), and AI (HQ) finetuned by LS (WLI)+LS (IEE) only with images in focus. Polyp detection using a test set of WLI, BLI, and LCI videos of 100 non-polypoid or non-reddish lesions of 2-20 mm and FPR using movies of 15 total colonoscopy were analyzed, compared to 2 experts and 2 trainees. Results: The sensitivity for LCI in AI (IEE) (83%) was compared to that for WLI in AI (IEE) (76%: p=0.02), WLI in AI (WLI) (57%: p

Details

Language :
English
ISSN :
24323853
Volume :
8
Issue :
3
Database :
Directory of Open Access Journals
Journal :
Journal of the Anus, Rectum and Colon
Publication Type :
Academic Journal
Accession number :
edsdoj.941bc375f269460daa159531ea972c57
Document Type :
article
Full Text :
https://doi.org/10.23922/jarc.2023-070