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放射学中用于优化成像、准确性及未来创新的进阶曝光指数

Advancing Exposure Index in Radiology for Optimized Imaging, Accuracy, and Future Innovations.

作者信息

Soulis Petros I, Papavasileiou Periklis, Bakas Athanasios, Lavdas Eleftherios, Stogiannos Nikolaos

机构信息

Department of Biomedical Sciences, University of West Attica, Athens, GRC.

Department of Radiology, General Hospital of West Attica, Athens, GRC.

出版信息

Cureus. 2025 Mar 19;17(3):e80819. doi: 10.7759/cureus.80819. eCollection 2025 Mar.

Abstract

Exposure index (EI) is a critical parameter in digital radiography, providing a quantitative measure of the radiation dose received by the detector. This review examines the significance of EI, methods for its determination, influencing factors, and clinical implications. Additionally, it explores challenges in standardization efforts and the role of emerging technologies, particularly artificial intelligence (AI), in optimizing exposure management. A comprehensive review of literature published over the last two decades was conducted using databases such as PubMed, ScienceDirect, and Google Scholar. Studies addressing EI measurement, clinical applications, and advancements in exposure monitoring technology were analyzed. Guidelines from the International Electrotechnical Commission (IEC), the American Association of Physicists in Medicine (AAPM), and the European Federation of Organizations for Medical Physics (EFOMP) were also reviewed to assess standardization efforts and best practices. Findings highlight the importance of EI in radiation dose optimization and quality control. Despite standardization initiatives, variations persist across manufacturers and imaging systems due to factors such as patient characteristics, beam energy, detector sensitivity, and post-processing algorithms. Artificial intelligence-driven exposure monitoring systems have shown promise in enhancing EI accuracy and enabling real-time dose adjustments. Artificial intelligence technologies have the potential to revolutionize EI utilization by enabling automated exposure optimization, real-time monitoring, and predictive analytics. Future efforts should focus on refining AI algorithms, ensuring cross-platform standardization, and enhancing radiographer training to fully integrate AI into EI-based radiation safety protocols.

摘要

曝光指数(EI)是数字放射摄影中的一个关键参数,它提供了探测器所接收辐射剂量的定量测量。本综述探讨了EI的重要性、其测定方法、影响因素及临床意义。此外,还探讨了标准化工作中的挑战以及新兴技术,特别是人工智能(AI)在优化曝光管理中的作用。使用PubMed、ScienceDirect和谷歌学术等数据库对过去二十年发表的文献进行了全面综述。分析了涉及EI测量、临床应用和曝光监测技术进展的研究。还审查了国际电工委员会(IEC)、美国医学物理学家协会(AAPM)和欧洲医学物理组织联合会(EFOMP)的指南,以评估标准化工作和最佳实践。研究结果突出了EI在辐射剂量优化和质量控制中的重要性。尽管有标准化举措,但由于患者特征、束能量、探测器灵敏度和后处理算法等因素,不同制造商和成像系统之间仍存在差异。人工智能驱动的曝光监测系统在提高EI准确性和实现实时剂量调整方面显示出了前景。人工智能技术有可能通过实现自动曝光优化、实时监测和预测分析来彻底改变EI的应用。未来应致力于完善人工智能算法、确保跨平台标准化,并加强放射技师培训以将人工智能全面整合到基于EI的辐射安全协议中。

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