Jiang Bin, Pham Nancy, van Staalduinen Eric K, Liu Yongkai, Nazari-Farsani Sanaz, Sanaat Amirhossein, van Voorst Henk, Fettahoglu Ates, Kim Donghoon, Ouyang Jiahong, Kumar Ashwin, Srivatsan Aditya, Hussein Ramy, Lansberg Maarten G, Boada Fernando, Zaharchuk Greg
Department of Radiology, Stanford University School of Medicine, 1201 Welch Rd, Stanford, CA 94305.
Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, Geneva, Switzerland.
Radiology. 2025 Apr;315(1):e240775. doi: 10.1148/radiol.240775.
Background Acute ischemic stroke (AIS) is a major cause of morbidity and mortality, requiring swift and precise clinical decisions based on neuroimaging. Recent advances in deep learning-based computer vision and language artificial intelligence (AI) models have demonstrated transformative performance for several stroke-related applications. Purpose To evaluate deep learning applications for imaging in AIS in adult patients, providing a comprehensive overview of the current state of the technology and identifying opportunities for advancement. Materials and Methods A systematic literature review was conducted following Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines. A comprehensive search of four databases from January 2016 to January 2024 was performed, targeting deep learning applications for imaging of AIS, including automated detection of large vessel occlusion and measurement of Alberta Stroke Program Early CT Score. Articles were selected based on predefined inclusion and exclusion criteria, focusing on convolutional neural networks and transformers. The top-represented areas were addressed, and the relevant information was extracted and summarized. Results Of 380 studies included, 171 (45.0%) focused on stroke lesion segmentation, 129 (33.9%) on classification and triage, 31 (8.2%) on outcome prediction, 15 (3.9%) on generative AI and large language models, and 11 (2.9%) on rapid or low-dose imaging specific to stroke applications. Detailed data extraction was performed for 68 studies. Public AIS datasets are also highlighted, for researchers developing AI models for stroke imaging. Conclusion Deep learning applications have permeated AIS imaging, particularly for stroke lesion segmentation. However, challenges remain, including the need for standardized protocols and test sets, larger public datasets, and performance validation in real-world settings. © RSNA, 2025
急性缺血性卒中(AIS)是发病和死亡的主要原因,需要基于神经影像学做出迅速而精确的临床决策。基于深度学习的计算机视觉和语言人工智能(AI)模型的最新进展已在多个与卒中相关的应用中展现出变革性的性能。目的:评估深度学习在成年AIS患者成像中的应用,全面概述该技术的现状并确定其改进机会。材料与方法:按照系统评价和Meta分析的首选报告项目指南进行系统文献综述。对2016年1月至2024年1月期间的四个数据库进行全面检索,目标是AIS成像的深度学习应用,包括大血管闭塞的自动检测和阿尔伯塔卒中项目早期CT评分的测量。根据预定义的纳入和排除标准选择文章,重点关注卷积神经网络和变换器。对代表性最强的领域进行探讨,并提取和总结相关信息。结果:在纳入的380项研究中,171项(45.0%)专注于卒中病变分割,129项(33.9%)专注于分类和分诊,31项(8.2%)专注于结局预测,15项(3.9%)专注于生成式AI和大语言模型,11项(2.9%)专注于卒中应用特有的快速或低剂量成像。对68项研究进行了详细的数据提取。还突出介绍了公共AIS数据集,供开发卒中成像AI模型的研究人员使用。结论:深度学习应用已渗透到AIS成像中,尤其是在卒中病变分割方面。然而,挑战依然存在,包括需要标准化方案和测试集、更大的公共数据集以及在真实环境中的性能验证。© RSNA,2025