[放射诊断学中用于剂量管理的人工智能 :以计算机断层扫描为例的进展与展望]。

Radiologie (Heidelberg, Germany) Pub Date : 2024-10-01 Epub Date: 2024-06-14 DOI:10.1007/s00117-024-01330-z
Laura Garajová, Stephan Garbe, Alois M Sprinkart
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引用次数: 0

摘要

临床方法学问题:使用电离辐射的成像程序需要遵守欧洲指令和国家法规,以保护患者。每次照射都必须进行说明、个别调整和记录。必须检测并报告不可接受的超标剂量。这些工作都非常耗时,需要一丝不苟:计算机断层扫描(CT)是造成医疗辐射的最重要因素。因此,必须优化病人的剂量。使用现代技术和重建算法已经减少了辐射量。检查适应症、计划和执行检查是辐射防护方面更重要的流程步骤。患者受到的辐射通常由剂量管理系统(DMS)进行监控。在特殊情况下,需要通过计算器官剂量进行风险评估:人工智能(AI)辅助技术越来越多地应用于流程的各个步骤:它们支持检查规划、改善患者定位并实现扫描长度的自动调整。它们还能实时估算单个器官的剂量:事实证明,将人工智能融入医学成像,在放射工作流程的各个领域(从重建到检查规划和执行检查)优化剂量方面是成功的。然而,尚未考虑大规模将人工智能与 DMS 结合使用:人工智能流程为支持剂量管理提供了前景广阔的工具。实用建议:人工智能流程为剂量管理提供了前景广阔的支持工具,但其在临床环境中的应用还需要进一步研究、广泛验证和持续监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Artificial intelligence in diagnostic radiology for dose management : Advances and perspectives using the example of computed tomography].

Clinical-methodological problem: Imaging procedures employing ionizing radiation require compliance with European directives and national regulations in order to protect patients. Each exposure must be indicated, individually adapted, and documented. Unacceptable dose exceedances must be detected and reported. These tasks are time-consuming and require meticulous diligence.

Standard radiological methods: Computed tomography (CT) is the most important contributor to medical radiation exposure. Optimizing the patient's dose is therefore mandatory. Use of modern technology and reconstruction algorithms already reduces exposure. Checking the indication, planning, and performing the examination are further important process steps with regard to radiation protection. Patient exposure is usually monitored by dose management systems (DMS). In special cases, a risk assessment is required by calculating the organ doses.

Methodological innovations: Artificial intelligence (AI)-assisted techniques are increasingly used in various steps of the process: they support examination planning, improve patient positioning, and enable automated scan length adjustments. They also provide real-time estimates of individual organ doses.

Evaluation: The integration of AI into medical imaging is proving successful in terms of dose optimization in various areas of the radiological workflow, from reconstruction to examination planning and performing exams. However, the use of AI in conjunction with DMS has not yet been considered on a large scale.

Practical recommendation: AI processes offer promising tools to support dose management. However, their implementation in the clinical setting requires further research, extensive validation, and continuous monitoring.

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