Colorectal Polyp Localization: From Image Restoration to Real-time Detection with Deep Learning

Mahsa Dehghan Manshadi, Milad Mousavi, Arian Golzarian, M. Soltani, Amir H. Mosavi
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Abstract

Increasing demands for artificial intelligence tools in the medical sector show the huge interest of physicians. In recent years, one of the most effective assistant systems in this field is the real-time detection of early-stage colorectal polyps during colonoscopy. Since even experienced physicians may miss polyps during colonoscopy, the real-time assistance system is designed to prevent this and hence contributes to diminish the number of missed critical cases. One challenge in this field is the detection of false positives. These systems are prone to mistake artifacts for colorectal polyps. This review provides an overview over current quality assessment and restoration techniques to make a high-quality training dataset for training deep neural network algorithms. Furthermore, four of the latest, fastest, and most accurate methods are introduced and analyzed in the rest of the review. Our main contribution is to provide an analysis of current methods used to detect colorectal polyps. We present a list of available datasets and present a range of challenges colorectal cancer detection systems face.
结直肠息肉定位:从图像恢复到深度学习实时检测
医疗领域对人工智能工具日益增长的需求显示出医生们的巨大兴趣。近年来,该领域最有效的辅助系统之一是结肠镜检查中早期结肠息肉的实时检测。由于即使是经验丰富的医生也可能在结肠镜检查中遗漏息肉,因此实时辅助系统旨在防止这种情况的发生,从而有助于减少遗漏的危重病例的数量。该领域的一个挑战是检测假阳性。这些系统很容易将人工制品误认为结直肠息肉。本文综述了当前的质量评估和恢复技术,以获得用于训练深度神经网络算法的高质量训练数据集。此外,本文还介绍并分析了四种最新、最快、最准确的方法。我们的主要贡献是对目前用于检测结肠直肠息肉的方法进行分析。我们提出了一份可用数据集的清单,并提出了结直肠癌检测系统面临的一系列挑战。
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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