Optical Diagnosis in the Era or Artificial Intelligence.

IF 8 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Roupen Djinbachian, Douglas K Rex, Daniel von Renteln
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引用次数: 0

Abstract

The development of new image enhancement modalities and improved endoscopic imaging quality have not led to increased adoption of resect-and-discard in routine practice. Studies have shown that endoscopists have the capacity to achieve quality thresholds to perform optical diagnosis, however, this has not led to acceptance of optical diagnosis as a replacement for pathology for diminutive (1-5mm) polyps. In recent years, Artificial Intelligence (AI)-based Computer Assisted Characterisation (CADx) of diminutive polyps has recently emerged as a strategy that could potentially represent a breakthrough technology to enable widespread adoption of resect-and-discard. Recent evidence suggests that pathology-based diagnosis is suboptimal, as polyp non-retrieval, fragmentation, sectioning errors, incorrect diagnosis as 'normal mucosa', and inter-pathologist variability limit the efficacy of pathology for the diagnosis of 1-5mm polyps. New paradigms in performing polyp diagnosis with or without AI have emerged to compete with pathology in terms of efficacy. Strategies, such as Autonomous AI, AI-assisted human diagnosis, AI-unassisted human diagnosis, and combined strategies have been proposed as potential paradigms for resect-and-discard, although further research is still required to determine the optimal strategy. Implementation studies with high patient acceptance, where polyps are truly being discarded without histologic diagnosis are paving the way towards normalizing resect-and-discard in routine clinical practice. Ultimately the largest challenges for CADx remain liability perceptions from endoscopists. The potential benefits of AI-based resect-and-discard are many, with very little potential harm. Real world implementation studies are therefore required to pave the way for the acceptability of such strategies in routine practice.

人工智能时代的光学诊断。
新图像增强模式的开发和内窥镜成像质量的提高并没有导致常规实践中更多地采用切除-剥离法。研究表明,内镜医师有能力达到进行光学诊断的质量阈值,但这并没有导致人们接受用光学诊断替代病理学检查微小(1-5 毫米)息肉。近年来,基于人工智能(AI)的微小息肉计算机辅助特征描述(CADx)作为一种策略崭露头角,有可能成为一项突破性技术,使切除即弃技术得到广泛应用。最近的证据表明,基于病理的诊断效果并不理想,因为息肉无法取出、碎裂、切片错误、被误诊为 "正常粘膜 "以及病理学家之间的差异都限制了病理诊断 1-5 毫米息肉的效果。在有人工智能或无人工智能的情况下进行息肉诊断的新模式已经出现,在疗效方面与病理诊断形成竞争。自主人工智能、人工智能辅助人类诊断、人工智能不辅助人类诊断和组合策略等策略已被提出作为切除--再切除的潜在范例,但确定最佳策略仍需进一步研究。患者接受度高的实施研究表明,息肉确实在未经组织学诊断的情况下被丢弃,这为在常规临床实践中实现切除即丢弃的正常化铺平了道路。最终,CADx 面临的最大挑战仍然是内镜医师的责任感。基于人工智能的切除即丢弃技术的潜在优势很多,潜在危害却很小。因此,需要进行真实世界的实施研究,为此类策略在常规实践中的可接受性铺平道路。
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
American Journal of Gastroenterology
American Journal of Gastroenterology 医学-胃肠肝病学
CiteScore
11.40
自引率
5.10%
发文量
458
审稿时长
12 months
期刊介绍: Published on behalf of the American College of Gastroenterology (ACG), The American Journal of Gastroenterology (AJG) stands as the foremost clinical journal in the fields of gastroenterology and hepatology. AJG offers practical and professional support to clinicians addressing the most prevalent gastroenterological disorders in patients.
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