Wittenberg Thomas, Raithel Martin
Fraunhofer Institute for Integrated Circuits IIS, Erlangen, Germany.
Malteser Waldkrankenhaus St. Marien, Erlangen, Germany.
Visc Med. 2020 Dec;36(6):428-438. doi: 10.1159/000512438. Epub 2020 Nov 12.
In the past, image-based computer-assisted diagnosis and detection systems have been driven mainly from the field of radiology, and more specifically mammography. Nevertheless, with the availability of large image data collections (known as the "Big Data" phenomenon) in correlation with developments from the domain of artificial intelligence (AI) and particularly so-called deep convolutional neural networks, computer-assisted detection of adenomas and polyps in real-time during screening colonoscopy has become feasible.
With respect to these developments, the scope of this contribution is to provide a brief overview about the evolution of AI-based detection of adenomas and polyps during colonoscopy of the past 35 years, starting with the age of "handcrafted geometrical features" together with simple classification schemes, over the development and use of "texture-based features" and machine learning approaches, and ending with current developments in the field of deep learning using convolutional neural networks. In parallel, the need and necessity of large-scale clinical data will be discussed in order to develop such methods, up to commercially available AI products for automated detection of polyps (adenoma and benign neoplastic lesions). Finally, a short view into the future is made regarding further possibilities of AI methods within colonoscopy.
Research of image-based lesion detection in colonoscopy data has a 35-year-old history. Milestones such as the Paris nomenclature, texture features, big data, and deep learning were essential for the development and availability of commercial AI-based systems for polyp detection.
过去,基于图像的计算机辅助诊断和检测系统主要由放射学领域推动,尤其是乳腺X线摄影。然而,随着与人工智能(AI)领域发展相关的大型图像数据集(即所谓的“大数据”现象)的出现,特别是所谓的深度卷积神经网络的发展,在结肠镜检查筛查过程中实时计算机辅助检测腺瘤和息肉已变得可行。
关于这些发展,本论文的范围是简要概述过去35年中基于人工智能的结肠镜检查腺瘤和息肉检测的发展历程,从“手工制作的几何特征”时代以及简单分类方案开始,到“基于纹理的特征”和机器学习方法的发展与应用,再到使用卷积神经网络的深度学习领域的当前发展。同时,将讨论开发此类方法所需的大规模临床数据的必要性,直至用于息肉(腺瘤和良性肿瘤性病变)自动检测的商用人工智能产品。最后,对人工智能方法在结肠镜检查中的进一步可能性进行了简要展望。
结肠镜检查数据中基于图像的病变检测研究已有35年历史。诸如巴黎分类法、纹理特征、大数据和深度学习等里程碑对于基于人工智能的息肉检测商用系统的开发和可用性至关重要。