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人工智能在乳腺成像中的应用。

Artificial intelligence in breast imaging.

机构信息

University of Cambridge School of Clinical Medicine, Cambridge Biomedical Campus, Hills Road, Cambridge CB2 0QQ, UK; EPSRC Centre for Mathematical and Statistical Analysis of Multimodal Clinical Imaging, University of Cambridge, Cambridge CB3 0WA, UK.

EPSRC Centre for Mathematical and Statistical Analysis of Multimodal Clinical Imaging, University of Cambridge, Cambridge CB3 0WA, UK.

出版信息

Clin Radiol. 2019 May;74(5):357-366. doi: 10.1016/j.crad.2019.02.006. Epub 2019 Mar 18.

Abstract

This article reviews current limitations and future opportunities for the application of computer-aided detection (CAD) systems and artificial intelligence in breast imaging. Traditional CAD systems in mammography screening have followed a rules-based approach, incorporating domain knowledge into hand-crafted features before using classical machine learning techniques as a classifier. The first commercial CAD system, ImageChecker M1000, relies on computer vision techniques for pattern recognition. Unfortunately, CAD systems have been shown to adversely affect some radiologists' performance and increase recall rates. The Digital Mammography DREAM Challenge was a multidisciplinary collaboration that provided 640,000 mammography images for teams to help decrease false-positive rates in breast cancer screening. Winning solutions leveraged deep learning's (DL) automatic hierarchical feature learning capabilities and used convolutional neural networks. Start-ups Therapixel and Kheiron Medical Technologies are using DL for breast cancer screening. With increasing use of digital breast tomosynthesis, specific artificial intelligence (AI)-CAD systems are emerging to include iCAD's PowerLook Tomo Detection and ScreenPoint Medical's Transpara. Other AI-CAD systems are focusing on breast diagnostic techniques such as ultrasound and magnetic resonance imaging (MRI). There is a gap in the market for contrast-enhanced spectral mammography AI-CAD tools. Clinical implementation of AI-CAD tools requires testing in scenarios mimicking real life to prove its usefulness in the clinical environment. This requires a large and representative dataset for testing and assessment of the reader's interaction with the tools. A cost-effectiveness assessment should be undertaken, with a large feasibility study carried out to ensure there are no unintended consequences. AI-CAD systems should incorporate explainable AI in accordance with the European Union General Data Protection Regulation (GDPR).

摘要

这篇文章回顾了计算机辅助检测(CAD)系统和人工智能在乳腺成像中的应用的当前局限性和未来机遇。传统的乳腺 X 线摄影筛查中的 CAD 系统采用基于规则的方法,在使用经典机器学习技术作为分类器之前,将领域知识纳入手工制作的特征中。第一个商业 CAD 系统,ImageChecker M1000,依赖于计算机视觉技术进行模式识别。不幸的是,CAD 系统已被证明会对一些放射科医生的表现产生不利影响,并增加召回率。数字乳腺 DREAM 挑战赛是一个多学科合作,为团队提供了 64 万张乳腺 X 线照片,以帮助降低乳腺癌筛查中的假阳性率。获奖解决方案利用了深度学习(DL)的自动分层特征学习能力,并使用了卷积神经网络。初创公司 Therapixel 和 Kheiron Medical Technologies 正在使用 DL 进行乳腺癌筛查。随着数字乳腺断层合成术的广泛应用,专门的人工智能(AI)-CAD 系统也开始出现,包括 iCAD 的 PowerLook Tomo Detection 和 ScreenPoint Medical 的 Transpara。其他 AI-CAD 系统专注于乳腺诊断技术,如超声和磁共振成像(MRI)。在对比增强光谱乳腺 X 线摄影 AI-CAD 工具市场存在空白。AI-CAD 工具的临床实施需要在模拟现实生活场景中进行测试,以证明其在临床环境中的有用性。这需要一个大型且具有代表性的数据集来进行测试和评估读者与工具的交互。应该进行成本效益评估,并进行大型可行性研究,以确保没有意外后果。AI-CAD 系统应根据欧盟通用数据保护条例(GDPR)纳入可解释 AI。

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