Artificial intelligence in luminal endoscopy.

IF 3 Q2 GASTROENTEROLOGY & HEPATOLOGY Therapeutic Advances in Gastrointestinal Endoscopy Pub Date : 2020-06-23 eCollection Date: 2020-01-01 DOI:10.1177/2631774520935220
Shraddha Gulati, Andrew Emmanuel, Mehul Patel, Sophie Williams, Amyn Haji, Bu'Hussain Hayee, Helmut Neumann
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引用次数: 10

Abstract

Artificial intelligence is a strong focus of interest for global health development. Diagnostic endoscopy is an attractive substrate for artificial intelligence with a real potential to improve patient care through standardisation of endoscopic diagnosis and to serve as an adjunct to enhanced imaging diagnosis. The possibility to amass large data to refine algorithms makes adoption of artificial intelligence into global practice a potential reality. Initial studies in luminal endoscopy involve machine learning and are retrospective. Improvement in diagnostic performance is appreciable through the adoption of deep learning. Research foci in the upper gastrointestinal tract include the diagnosis of neoplasia, including Barrett's, squamous cell and gastric where prospective and real-time artificial intelligence studies have been completed demonstrating a benefit of artificial intelligence-augmented endoscopy. Deep learning applied to small bowel capsule endoscopy also appears to enhance pathology detection and reduce capsule reading time. Prospective evaluation including the first randomised trial has been performed in the colon, demonstrating improved polyp and adenoma detection rates; however, these appear to be relevant to small polyps. There are potential additional roles of artificial intelligence relevant to improving the quality of endoscopic examinations, training and triaging of referrals. Further large-scale, multicentre and cross-platform validation studies are required for the robust incorporation of artificial intelligence-augmented diagnostic luminal endoscopy into our routine clinical practice.

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人工智能在腔内内镜检查中的应用。
人工智能是全球卫生发展的一个重要关注焦点。诊断内窥镜是人工智能的一个有吸引力的基础,具有通过内窥镜诊断标准化来改善患者护理的真正潜力,并可作为增强成像诊断的辅助手段。积累大数据以完善算法的可能性,使人工智能应用于全球实践成为可能。腔内内镜的初步研究涉及机器学习,并且是回顾性的。通过采用深度学习,诊断性能的改善是明显的。上消化道的研究重点包括肿瘤的诊断,包括巴雷特、鳞状细胞和胃,其中已经完成了前瞻性和实时人工智能研究,证明了人工智能增强内窥镜的好处。将深度学习应用于小肠胶囊内窥镜也能增强病理检测,缩短胶囊阅读时间。前瞻性评估包括在结肠中进行的第一个随机试验,显示息肉和腺瘤的检出率有所提高;然而,这些似乎与小息肉有关。人工智能在提高内窥镜检查质量、培训和转诊分诊方面还有潜在的其他作用。为了将人工智能增强诊断腔镜纳入我们的常规临床实践,需要进一步的大规模、多中心和跨平台的验证研究。
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来源期刊
CiteScore
4.80
自引率
0.00%
发文量
8
审稿时长
13 weeks
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