Bani-Ahmad M, England A, McLaughlin L, Hadi Y H, McEntee M
The Discipline of Medical Imaging and Radiation Therapy, University College Cork, College Road, T12 K8AF Cork, Ireland; Faculty of Applied Medical Sciences, Department of Medical Imaging, The Hashemite University, Zarqa, Jordan.
The Discipline of Medical Imaging and Radiation Therapy, University College Cork, College Road, T12 K8AF Cork, Ireland.
Radiography (Lond). 2025 Jul;31(4):102968. doi: 10.1016/j.radi.2025.102968. Epub 2025 May 7.
Artificial intelligence (AI) is now transforming medical imaging, with extensive ramifications for nearly every aspect of diagnostic imaging, including computed tomography (CT). This current work aims to review, evaluate, and summarise the role of AI in radiation dose optimisation across three fundamental domains in CT: patient positioning, scan range determination, and image reconstruction.
A comprehensive scoping review of the literature was performed. Electronic databases including Scopus, Ovid, EBSCOhost and PubMed were searched between January 2018 and December 2024. Relevant articles were identified from their titles had their abstracts evaluated, and those deemed relevant had their full text reviewed. Extracted data from selected studies included the application of AI, radiation dose, anatomical part, and any relevant evaluation metrics based on the CT parameter in which AI is applied.
90 articles met the selection criteria. Included studies evaluated the performance of AI for dose optimisation through patient positioning, scan range determination, and reconstruction across various CT scans, including the abdomen, chest, head, neck, and pelvis, as well as CT angiography. A concise overview of the present state of AI in these three domains, emphasising benefits, limitations, and impact on the transformation of dose reduction in CT scanning, is provided.
AI methods can help minimise positioning offsets and over-scanning caused by manual errors and helped to overcome the limitation associated with low-dose CT settings through deep learning image reconstruction algorithms. Further clinical integration of AI will continue to allow for improvements in optimising CT scan protocols and radiation dose.
This review underscores the significance of AI in optimizing radiation doses in CT imaging, focusing on three key areas: patient positioning, scan range determination, and image reconstruction.
人工智能(AI)正在改变医学成像,对诊断成像的几乎每个方面都产生了广泛影响,包括计算机断层扫描(CT)。本研究旨在回顾、评估和总结人工智能在CT三个基本领域的辐射剂量优化中的作用:患者定位、扫描范围确定和图像重建。
对文献进行了全面的范围综述。在2018年1月至2024年12月期间搜索了包括Scopus、Ovid、EBSCOhost和PubMed在内的电子数据库。从标题中识别出相关文章,评估其摘要,认为相关的文章则进行全文审查。从选定研究中提取的数据包括人工智能的应用、辐射剂量、解剖部位以及基于应用人工智能的CT参数的任何相关评估指标。
90篇文章符合入选标准。纳入的研究评估了人工智能在各种CT扫描(包括腹部、胸部、头部、颈部和骨盆以及CT血管造影)中的患者定位、扫描范围确定和重建方面进行剂量优化的性能。提供了人工智能在这三个领域的当前状态的简要概述,强调了其益处、局限性以及对CT扫描剂量降低转变的影响。
人工智能方法有助于最大限度地减少因人为错误导致的定位偏移和过度扫描,并通过深度学习图像重建算法帮助克服与低剂量CT设置相关的局限性。人工智能的进一步临床整合将继续有助于改进CT扫描方案和辐射剂量的优化。
本综述强调了人工智能在优化CT成像辐射剂量方面的重要性,重点关注三个关键领域:患者定位、扫描范围确定和图像重建。