Artificial intelligence in colonoscopy: from detection to diagnosis.

IF 2.2 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL
Korean Journal of Internal Medicine Pub Date : 2024-07-01 Epub Date: 2024-05-02 DOI:10.3904/kjim.2023.332
Eun Sun Kim, Kwang-Sig Lee
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引用次数: 0

Abstract

This study reviews the recent progress of artificial intelligence for colonoscopy from detection to diagnosis. The source of data was 27 original studies in PubMed. The search terms were "colonoscopy" (title) and "deep learning" (abstract). The eligibility criteria were: (1) the dependent variable of gastrointestinal disease; (2) the interventions of deep learning for classification, detection and/or segmentation for colonoscopy; (3) the outcomes of accuracy, sensitivity, specificity, area under the curve (AUC), precision, F1, intersection of union (IOU), Dice and/or inference frames per second (FPS); (3) the publication year of 2021 or later; (4) the publication language of English. Based on the results of this study, different deep learning methods would be appropriate for different tasks for colonoscopy, e.g., Efficientnet with neural architecture search (AUC 99.8%) in the case of classification, You Only Look Once with the instance tracking head (F1 96.3%) in the case of detection, and Unet with dense-dilation-residual blocks (Dice 97.3%) in the case of segmentation. Their performance measures reported varied within 74.0-95.0% for accuracy, 60.0-93.0% for sensitivity, 60.0-100.0% for specificity, 71.0-99.8% for the AUC, 70.1-93.3% for precision, 81.0-96.3% for F1, 57.2-89.5% for the IOU, 75.1-97.3% for Dice and 66-182 for FPS. In conclusion, artificial intelligence provides an effective, non-invasive decision support system for colonoscopy from detection to diagnosis.

结肠镜检查中的人工智能:从检测到诊断。
本研究回顾了人工智能结肠镜检查从检测到诊断的最新进展。数据来源是 PubMed 上的 27 项原始研究。检索词为 "结肠镜检查"(标题)和 "深度学习"(摘要)。合格标准为(1) 因变量为胃肠道疾病;(2) 深度学习对结肠镜检查的分类、检测和/或分割的干预;(3) 结果为准确性、灵敏度、特异性、曲线下面积(AUC)、精确度、F1、联合交集(IOU)、Dice 和/或每秒推理帧数(FPS);(3) 发表年份为 2021 年或之后;(4) 发表语言为英语。根据这项研究的结果,不同的深度学习方法适用于结肠镜检查的不同任务,例如,使用神经架构搜索的 Efficientnet(AUC 99.8%)适用于分类,使用实例跟踪头的 You Only Look Once(F1 96.3%)适用于检测,使用密集-扩张-残留块的 Unet(Dice 97.3%)适用于分割。它们报告的性能指标变化范围如下:准确度 74.0-95.0%,灵敏度 60.0-93.0%,特异度 60.0-100.0%,AUC 71.0-99.8%,精确度 70.1-93.3%,F1 81.0-96.3%,IOU 57.2-89.5%,Dice 75.1-97.3%,FPS 66-182。总之,人工智能为结肠镜检查提供了一个从检测到诊断的有效、无创的决策支持系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Korean Journal of Internal Medicine
Korean Journal of Internal Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
5.10
自引率
4.20%
发文量
129
审稿时长
20 weeks
期刊介绍: The Korean Journal of Internal Medicine is an international medical journal published in English by the Korean Association of Internal Medicine. The Journal publishes peer-reviewed original articles, reviews, and editorials on all aspects of medicine, including clinical investigations and basic research. Both human and experimental animal studies are welcome, as are new findings on the epidemiology, pathogenesis, diagnosis, and treatment of diseases. Case reports will be published only in exceptional circumstances, when they illustrate a rare occurrence of clinical importance. Letters to the editor are encouraged for specific comments on published articles and general viewpoints.
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