Department of Radiology, University of California San Diego.
Arterys Inc., San Francisco, CA.
J Thorac Imaging. 2019 May;34(3):192-201. doi: 10.1097/RTI.0000000000000385.
Advances in technology have always had the potential and opportunity to shape the practice of medicine, and in no medical specialty has technology been more rapidly embraced and adopted than radiology. Machine learning and deep neural networks promise to transform the practice of medicine, and, in particular, the practice of diagnostic radiology. These technologies are evolving at a rapid pace due to innovations in computational hardware and novel neural network architectures. Several cutting-edge postprocessing analysis applications are actively being developed in the fields of thoracic and cardiovascular imaging, including applications for lesion detection and characterization, lung parenchymal characterization, coronary artery assessment, cardiac volumetry and function, and anatomic localization. Cardiothoracic and cardiovascular imaging lies at the technological forefront of radiology due to a confluence of technical advances. Enhanced equipment has enabled computed tomography and magnetic resonance imaging scanners that can safely capture images that freeze the motion of the heart to exquisitely delineate fine anatomic structures. Computing hardware developments have enabled an explosion in computational capabilities and in data storage. Progress in software and fluid mechanical models is enabling complex 3D and 4D reconstructions to not only visualize and assess the dynamic motion of the heart, but also quantify its blood flow and hemodynamics. And now, innovations in machine learning, particularly in the form of deep neural networks, are enabling us to leverage the increasingly massive data repositories that are prevalent in the field. Here, we discuss developments in machine learning techniques and deep neural networks to highlight their likely role in future radiologic practice, both in and outside of image interpretation and analysis. We discuss the concepts of validation, generalizability, and clinical utility, as they pertain to this and other new technologies, and we reflect upon the opportunities and challenges of bringing these into daily use.
技术进步一直有潜力和机会来塑造医学实践,而在没有哪个医学专业比放射科更迅速地接受和采用技术。机器学习和深度神经网络有望改变医学实践,特别是诊断放射学的实践。由于计算硬件和新的神经网络架构的创新,这些技术正在快速发展。一些前沿的后处理分析应用程序正在胸部和心血管成像领域积极开发,包括用于检测和特征描述病变、肺实质特征描述、冠状动脉评估、心脏容积和功能以及解剖定位的应用程序。由于技术进步的融合,心胸和心血管成像处于放射学的技术前沿。增强的设备使计算机断层扫描和磁共振成像扫描仪能够安全地捕获冻结心脏运动的图像,以精细描绘精细的解剖结构。计算硬件的发展使计算能力和数据存储呈爆炸式增长。软件和流体力学模型的进步使复杂的 3D 和 4D 重建不仅能够可视化和评估心脏的动态运动,还能够量化其血流和血液动力学。现在,机器学习的创新,特别是深度神经网络的形式,使我们能够利用该领域普遍存在的日益庞大的数据存储库。在这里,我们讨论机器学习技术和深度神经网络的发展,以突出它们在未来放射学实践中的可能作用,包括在图像解释和分析内外。我们讨论了验证、可泛化性和临床实用性的概念,因为它们与这项技术和其他新技术有关,我们还反思了将这些技术引入日常使用的机会和挑战。