Arimura Hidetaka, Nakamoto Takahiro
Division of Medical Quantum Science, Department of Health Sciences, Faculty of Medical Sciences, Kyushu University.
Division of Medical Quantum Science, Department of Health Sciences, Graduate School of Medical Sciences, Kyushu University.
Igaku Butsuri. 2016;36(1):35-38. doi: 10.11323/jjmp.36.1_35.
Radiation therapy has been highly advanced as image guided radiation therapy (IGRT) by making advantage of image engineering technologies. Recently, novel frameworks based on image engineering technologies as well as machine learning technologies have been studied for sophisticating the radiation therapy. In this review paper, the author introduces several researches of applications of machine learning for radiation therapy. For examples, a method to determine the threshold values for standardized uptake value (SUV) for estimation of gross tumor volume (GTV) in positron emission tomography (PET) images, an approach to estimate the multileaf collimator (MLC) position errors between treatment plans and radiation delivery time, and prediction frameworks for esophageal stenosis and radiation pneumonitis risk after radiation therapy are described. Finally, the author introduces seven issues that one should consider when applying machine learning models to radiation therapy.
通过利用图像工程技术,放射治疗已高度发展为图像引导放射治疗(IGRT)。最近,基于图像工程技术以及机器学习技术的新型框架已被研究用于使放射治疗更加精细。在这篇综述论文中,作者介绍了机器学习在放射治疗中的若干应用研究。例如,描述了一种确定正电子发射断层扫描(PET)图像中用于估计大体肿瘤体积(GTV)的标准化摄取值(SUV)阈值的方法,一种估计治疗计划与放射治疗时间之间多叶准直器(MLC)位置误差的方法,以及放射治疗后食管狭窄和放射性肺炎风险的预测框架。最后,作者介绍了将机器学习模型应用于放射治疗时应考虑的七个问题。