Applications of artificial intelligence for machine- and patient-specific quality assurance in radiation therapy: current status and future directions.

IF 1.9 4区 医学 Q2 BIOLOGY Journal of Radiation Research Pub Date : 2024-07-22 DOI:10.1093/jrr/rrae033
Tomohiro Ono, Hiraku Iramina, Hideaki Hirashima, Takanori Adachi, Mitsuhiro Nakamura, Takashi Mizowaki
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Abstract

Machine- and patient-specific quality assurance (QA) is essential to ensure the safety and accuracy of radiotherapy. QA methods have become complex, especially in high-precision radiotherapy such as intensity-modulated radiation therapy (IMRT) and volumetric modulated arc therapy (VMAT), and various recommendations have been reported by AAPM Task Groups. With the widespread use of IMRT and VMAT, there is an emerging demand for increased operational efficiency. Artificial intelligence (AI) technology is quickly growing in various fields owing to advancements in computers and technology. In the radiotherapy treatment process, AI has led to the development of various techniques for automated segmentation and planning, thereby significantly enhancing treatment efficiency. Many new applications using AI have been reported for machine- and patient-specific QA, such as predicting machine beam data or gamma passing rates for IMRT or VMAT plans. Additionally, these applied technologies are being developed for multicenter studies. In the current review article, AI application techniques in machine- and patient-specific QA have been organized and future directions are discussed. This review presents the learning process and the latest knowledge on machine- and patient-specific QA. Moreover, it contributes to the understanding of the current status and discusses the future directions of machine- and patient-specific QA.

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人工智能在放射治疗的机器和患者质量保证中的应用:现状和未来方向。
针对机器和患者的质量保证(QA)对于确保放射治疗的安全性和准确性至关重要。质量保证方法已变得十分复杂,尤其是在高精度放射治疗中,如调强放射治疗(IMRT)和体调弧放射治疗(VMAT),AAPM 工作组已提出了各种建议。随着 IMRT 和 VMAT 的广泛使用,对提高操作效率的需求也在不断出现。由于计算机和技术的进步,人工智能(AI)技术在各个领域迅速发展。在放射治疗过程中,人工智能促进了各种自动分割和规划技术的发展,从而显著提高了治疗效率。据报道,许多使用人工智能的新应用都是针对特定机器和患者的质量保证,如预测 IMRT 或 VMAT 计划的机器射束数据或伽马通过率。此外,这些应用技术正被开发用于多中心研究。在本综述文章中,对机器和患者特定质量保证中的人工智能应用技术进行了整理,并讨论了未来的发展方向。这篇综述介绍了机器和患者特异性质量评估的学习过程和最新知识。此外,它还有助于了解机器和患者特异性质量保证的现状并讨论其未来发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.60
自引率
5.00%
发文量
86
审稿时长
4-8 weeks
期刊介绍: The Journal of Radiation Research (JRR) is an official journal of The Japanese Radiation Research Society (JRRS), and the Japanese Society for Radiation Oncology (JASTRO). Since its launch in 1960 as the official journal of the JRRS, the journal has published scientific articles in radiation science in biology, chemistry, physics, epidemiology, and environmental sciences. JRR broadened its scope to include oncology in 2009, when JASTRO partnered with the JRRS to publish the journal. Articles considered fall into two broad categories: Oncology & Medicine - including all aspects of research with patients that impacts on the treatment of cancer using radiation. Papers which cover related radiation therapies, radiation dosimetry, and those describing the basis for treatment methods including techniques, are also welcomed. Clinical case reports are not acceptable. Radiation Research - basic science studies of radiation effects on livings in the area of physics, chemistry, biology, epidemiology and environmental sciences. Please be advised that JRR does not accept any papers of pure physics or chemistry. The journal is bimonthly, and is edited and published by the JRR Editorial Committee.
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