Nair Arun, Ong Wilson, Lee Aric, Leow Naomi Wenxin, Makmur Andrew, Ting Yong Han, Lee You Jun, Ong Shao Jin, Tan Jonathan Jiong Hao, Kumar Naresh, Hallinan James Thomas Patrick Decourcy
Department of Diagnostic Imaging, National University Hospital, 5 Lower Kent Ridge Rd, Singapore 119074, Singapore.
AIO Innovation Office, National University Health System, 3 Research Link, #02-04 Innovation 4.0, Singapore 117602, Singapore.
Diagnostics (Basel). 2025 Apr 30;15(9):1146. doi: 10.3390/diagnostics15091146.
Artificial intelligence (AI) shows promise in streamlining MRI workflows by reducing radiologists' workload and improving diagnostic accuracy. Despite MRI's extensive clinical use, systematic evaluation of AI-driven productivity gains in MRI remains limited. This review addresses that gap by synthesizing evidence on how AI can shorten scanning and reading times, optimize worklist triage, and automate segmentation. On 15 November 2024, we searched PubMed, EMBASE, MEDLINE, Web of Science, Google Scholar, and Cochrane Library for English-language studies published between 2000 and 15 November 2024, focusing on AI applications in MRI. Additional searches of grey literature were conducted. After screening for relevance and full-text review, 67 studies met inclusion criteria. Extracted data included study design, AI techniques, and productivity-related outcomes such as time savings and diagnostic accuracy. The included studies were categorized into five themes: reducing scan times, automating segmentation, optimizing workflow, decreasing reading times, and general time-saving or workload reduction. Convolutional neural networks (CNNs), especially architectures like ResNet and U-Net, were commonly used for tasks ranging from segmentation to automated reporting. A few studies also explored machine learning-based automation software and, more recently, large language models. Although most demonstrated gains in efficiency and accuracy, limited external validation and dataset heterogeneity could reduce broader adoption. AI applications in MRI offer potential to enhance radiologist productivity, mainly through accelerated scans, automated segmentation, and streamlined workflows. Further research, including prospective validation and standardized metrics, is needed to enable safe, efficient, and equitable deployment of AI tools in clinical MRI practice.
人工智能(AI)在简化磁共振成像(MRI)工作流程方面展现出前景,它能够减轻放射科医生的工作量并提高诊断准确性。尽管MRI在临床中广泛应用,但对AI驱动的MRI生产率提升的系统评估仍然有限。本综述通过综合关于AI如何缩短扫描和读取时间、优化工作列表分诊以及自动分割的证据来填补这一空白。2024年11月15日,我们在PubMed、EMBASE、MEDLINE、Web of Science、谷歌学术和Cochrane图书馆中搜索了2000年至2024年11月15日发表的英文研究,重点关注AI在MRI中的应用。还对灰色文献进行了额外搜索。在筛选相关性并进行全文审查后,有67项研究符合纳入标准。提取的数据包括研究设计、AI技术以及与生产率相关的结果,如节省时间和诊断准确性。纳入的研究分为五个主题:缩短扫描时间、自动分割、优化工作流程、减少读取时间以及总体节省时间或减少工作量。卷积神经网络(CNN),特别是像ResNet和U-Net这样的架构,常用于从分割到自动报告等各种任务。一些研究还探索了基于机器学习的自动化软件,以及最近的大语言模型。尽管大多数研究都证明了效率和准确性的提高,但有限的外部验证和数据集异质性可能会减少更广泛的采用。AI在MRI中的应用具有提高放射科医生生产率的潜力,主要通过加速扫描、自动分割和简化工作流程来实现。需要进一步的研究,包括前瞻性验证和标准化指标,以在临床MRI实践中安全、高效且公平地部署AI工具。