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Quality assurance of computer-aided detection and diagnosis in colonoscopy

机译:计算机辅助检测和结肠镜检查的质量保证

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Recent breakthroughs in artificial intelligence (AI), specifically via its emerging sub-field "deep learning," have direct implications for computer-aided detection and diagnosis (CADe and/or CADx) for colonoscopy. AI is expected to have at least 2 major roles in colonoscopy practicedpolyp detection (CADe) and polyp characterization (CADx). CADe has the potential to decrease the polyp miss rate, contributing to improving adenoma detection, whereas CADx can improve the accuracy of colorectal polyp optical diagnosis, leading to reduction of unnecessary polypectomy of non-neoplastic lesions, potential implementation of a resect-and-discard paradigm, and proper application of advanced resection techniques. A growing number of medical-engineering researchers are developing both CADe and CADx systems, some of which allow real-time recognition of polyps or in vivo identification of adenomas, with over 90% accuracy. However, the quality of the developed AI systems as well as that of the study designs vary significantly, hence raising some concerns regarding the generalization of the proposed AI systems. Initial studies were conducted in an exploratory or retrospective fashion by using stored images and likely overestimating the results. These drawbacks potentially hinder smooth implementation of this novel technology into colonoscopy practice. The aim of this article is to review both contributions and limitations in recent machine-learning-based CADe and/or CADx colonoscopy studies and propose some principles that should underlie system development and clinical testing.
机译:最近在人工智能(AI)中的突破,具体通过其新兴的子场“深度学习”,对计算机辅助检测和诊断(CADE和/或CADX)具有直接影响进行结肠镜检查。预计AI将在结肠镜检查实践Polypolyp检测(CADE)和息肉表征(CADX)中具有至少2个主要作用。 CADE有可能降低息肉未命中率,有助于改善腺瘤检测,而CADX可以提高结肠直肠息肉光学诊断的准确性,从而降低了非肿瘤病变的不必要的果切除术,潜在的丢弃和丢弃的潜在实施范式,适当应用高级切除技术。越来越多的医学工程研究人员正在开发CADE和CADX系统,其中一些是允许实时识别息肉或体内鉴定腺瘤,精度超过90%。然而,发达的AI系统的质量以及研究设计的质量显着变化,因此提高了关于所提出的AI系统的概括的一些担忧。通过使用存储的图像并可能高估结果,以探索性或回顾性的方式进行初步研究。这些缺点可能妨碍这种新技术的平滑实施成为结肠镜检查实践。本文的目的是审查最近基于机器学习的CADE和/或CADX结肠镜检查研究的贡献和局限性,并提出了一些应利于系统开发和临床测试的原则。

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