The D-Lab, Department of Precision Medicine, GROW - School for Oncology and Developmental Biology, Maastricht University, Maastricht, The Netherlands; Department of Radiology and Nuclear Medicine, GROW - School for Oncology and Developmental Biology, Maastricht University Medical Centre+, Maastricht, The Netherlands; Division of Nuclear Medicine and Oncological Imaging, Department of Medical Physics, Hospital Center Universitaire De Liege, Liege, Belgium; Department of Nuclear Medicine and Comprehensive Diagnostic Center Aachen (CDCA), University Hospital RWTH Aachen University, Aachen, Germany.
The D-Lab, Department of Precision Medicine, GROW - School for Oncology and Developmental Biology, Maastricht University, Maastricht, The Netherlands; Department of Nuclear Medicine and Comprehensive Diagnostic Center Aachen (CDCA), University Hospital RWTH Aachen University, Aachen, Germany.
Methods. 2021 Apr;188:20-29. doi: 10.1016/j.ymeth.2020.05.022. Epub 2020 Jun 3.
The advancement of artificial intelligence concurrent with the development of medical imaging techniques provided a unique opportunity to turn medical imaging from mostly qualitative, to further quantitative and mineable data that can be explored for the development of clinical decision support systems (cDSS). Radiomics, a method for the high throughput extraction of hand-crafted features from medical images, and deep learning -the data driven modeling techniques based on the principles of simplified brain neuron interactions, are the most researched quantitative imaging techniques. Many studies reported on the potential of such techniques in the context of cDSS. Such techniques could be highly appealing due to the reuse of existing data, automation of clinical workflows, minimal invasiveness, three-dimensional volumetric characterization, and the promise of high accuracy and reproducibility of results and cost-effectiveness. Nevertheless, there are several challenges that quantitative imaging techniques face, and need to be addressed before the translation to clinical use. These challenges include, but are not limited to, the explainability of the models, the reproducibility of the quantitative imaging features, and their sensitivity to variations in image acquisition and reconstruction parameters. In this narrative review, we report on the status of quantitative medical image analysis using radiomics and deep learning, the challenges the field is facing, propose a framework for robust radiomics analysis, and discuss future prospects.
人工智能的进步与医学成像技术的发展相结合,为将医学成像从主要是定性的方法,进一步发展为可以挖掘和利用的定量数据,从而为临床决策支持系统 (cDSS) 的开发提供了独特的机会。放射组学是一种从医学图像中提取手工特征的高通量方法,深度学习是基于简化大脑神经元相互作用原理的数据驱动建模技术,是研究最多的定量成像技术。许多研究报告了这些技术在 cDSS 背景下的潜力。由于可以重复使用现有数据、自动化临床工作流程、微创性、三维体积特征描述以及高精度和可重复性结果的承诺以及成本效益,这些技术可能非常有吸引力。然而,定量成像技术在转化为临床应用之前,还面临着一些挑战,需要加以解决。这些挑战包括但不限于模型的可解释性、定量成像特征的可重复性以及它们对图像采集和重建参数变化的敏感性。在这篇叙述性综述中,我们报告了使用放射组学和深度学习进行定量医学图像分析的现状、该领域面临的挑战、提出了一个稳健的放射组学分析框架,并讨论了未来的前景。