Artificial intelligence in capsule endoscopy: development status and future expectations

Ashwin A. George, Jin Lin Tan, J. Kovoor, Alvin Lee, Brandon Stretton, Aashray K. Gupta, Stephen Bacchi, Biju George, Rajvinder Singh
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Abstract

In this review, we aim to illustrate the state-of-the-art artificial intelligence (AI) applications in the field of capsule endoscopy. AI has made significant strides in gastrointestinal imaging, particularly in capsule endoscopy - a non-invasive procedure for capturing gastrointestinal tract images. However, manual analysis of capsule endoscopy videos is labour-intensive and error-prone, prompting the development of automated computational algorithms and AI models. While currently serving as a supplementary observer, AI has the capacity to evolve into an autonomous, integrated reading system, potentially significantly reducing capsule reading time while surpassing human accuracy. We searched Embase, Pubmed, Medline, and Cochrane databases from inception to 06 Jul 2023 for studies investigating the use of AI for capsule endoscopy and screened retrieved records for eligibility. Quantitative and qualitative data were extracted and synthesised to identify current themes. In the search, 824 articles were collected, and 291 duplicates and 31 abstracts were deleted. After a double-screening process and full-text review, 106 publications were included in the review. Themes pertaining to AI for capsule endoscopy included active gastrointestinal bleeding, erosions and ulcers, vascular lesions and angiodysplasias, polyps and tumours, inflammatory bowel disease, coeliac disease, hookworms, bowel prep assessment, and multiple lesion detection. This review provides current insights into the impact of AI on capsule endoscopy as of 2023. AI holds the potential for faster and precise readings and the prospect of autonomous image analysis. However, careful consideration of diagnostic requirements and potential challenges is crucial. The untapped potential within vision transformer technology hints at further evolution and even greater patient benefit.
人工智能在胶囊内镜检查中的应用:发展现状与未来展望
在这篇综述中,我们旨在说明人工智能(AI)在胶囊内镜领域的最新应用。人工智能在胃肠道成像领域取得了长足进步,尤其是在胶囊内窥镜检查领域--这是一种捕捉胃肠道图像的非侵入性程序。然而,胶囊内窥镜视频的人工分析既耗费人力又容易出错,这促使人们开发自动计算算法和人工智能模型。虽然人工智能目前只是辅助观察者,但它有能力发展成为一个自主、综合的阅读系统,有可能大大缩短胶囊阅读时间,同时超越人类的准确性。我们检索了Embase、Pubmed、Medline和Cochrane数据库中从开始到2023年7月6日有关胶囊内镜使用人工智能的研究,并对检索到的记录进行了资格筛选。对定量和定性数据进行提取和综合,以确定当前的主题。搜索共收集到 824 篇文章,删除了 291 篇重复文章和 31 篇摘要。经过双重筛选和全文审阅后,106 篇出版物被纳入综述。与胶囊内镜检查人工智能相关的主题包括活动性消化道出血、糜烂和溃疡、血管病变和血管增生、息肉和肿瘤、炎症性肠病、腹腔疾病、钩虫、肠道准备评估和多病灶检测。本综述提供了截至 2023 年人工智能对胶囊内镜影响的最新见解。人工智能有望实现更快、更精确的读数,并有望实现自主图像分析。然而,仔细考虑诊断要求和潜在挑战至关重要。视觉转换器技术尚未开发的潜力预示着它将进一步发展,为患者带来更大的益处。
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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