Stanford University, Department of Radiology, Division of Neuroradiology and Neurointervention, 300 Pasteur Drive, Room S047, Stanford, CA 94305, United States of America; Johns Hopkins Hospital, Department of Radiological Sciences, 600 N. Wolfe St. B 112-D, Baltimore, MD 21287, United States of America.
Stanford University, Department of Radiology, Division of Neuroradiology and Neurointervention, 300 Pasteur Drive, Room S031, Stanford, CA 94305, United States of America.
Clin Imaging. 2021 Jan;69:246-254. doi: 10.1016/j.clinimag.2020.09.005. Epub 2020 Sep 21.
Artificial intelligence (AI) is a fast-growing research area in computer science that aims to mimic cognitive processes through a number of techniques. Supervised machine learning, a subfield of AI, includes methods that can identify patterns in high-dimensional data using labeled 'ground truth' data and apply these learnt patterns to analyze, interpret, or make predictions on new datasets. Supervised machine learning has become a significant area of interest within the medical community. Radiology and neuroradiology in particular are especially well suited for application of machine learning due to the vast amount of data that is generated. One devastating disease for which neuroimaging plays a significant role in the clinical management is stroke. Within this context, AI techniques can play pivotal roles for image-based diagnosis and management of stroke. This overview focuses on the recent advances of artificial intelligence methods - particularly supervised machine learning and deep learning - with respect to workflow, image acquisition and reconstruction, and image interpretation in patients with acute stroke, while also discussing potential pitfalls and future applications.
人工智能(AI)是计算机科学中一个快速发展的研究领域,旨在通过多种技术模拟认知过程。监督机器学习是人工智能的一个分支,它包括使用标记的“真实数据”识别高维数据中的模式,并将这些学习到的模式应用于分析、解释或对新数据集进行预测的方法。监督机器学习已成为医学界关注的一个重要领域。放射学和神经放射学尤其适合应用机器学习,因为它们产生了大量的数据。神经影像学在临床管理中起着重要作用的一种破坏性疾病是中风。在这种情况下,人工智能技术可以在基于图像的中风诊断和管理中发挥关键作用。本篇综述重点介绍了人工智能方法——特别是监督机器学习和深度学习——在急性中风患者的工作流程、图像采集和重建以及图像解释方面的最新进展,同时还讨论了潜在的陷阱和未来的应用。