Carolina Health Informatics Program, University of North Carolina, Chapel Hill, North Carolina.
Department of Radiation Oncology, University of North Carolina, Chapel Hill, North Carolina.
J Am Coll Radiol. 2019 Sep;16(9 Pt B):1267-1272. doi: 10.1016/j.jacr.2019.06.001.
Within artificial intelligence, machine learning (ML) efforts in radiation oncology have augmented the transition from generalized to personalized treatment delivery. Although their impact on quality and safety of radiation therapy has been limited, they are increasingly being used throughout radiation therapy workflows. Various data-driven approaches have been used for outcome prediction, CT simulation, clinical decision support, knowledge-based planning, adaptive radiation therapy, plan validation, machine quality assurance, and process quality assurance; however, there are many challenges that need to be addressed with the creation and usage of ML algorithms as well as the interpretation and dissemination of findings. In this review, the authors present current applications of ML in radiation oncology quality and safety initiatives, discuss challenges faced by the radiation oncology community, and suggest future directions.
在人工智能领域,机器学习(ML)在放射肿瘤学中的应用促进了从通用治疗向个性化治疗的转变。尽管它们对放射治疗的质量和安全性的影响有限,但它们在放射治疗工作流程中越来越多地被使用。各种数据驱动的方法已被用于预测结果、CT 模拟、临床决策支持、基于知识的计划、自适应放射治疗、计划验证、机器质量保证和过程质量保证;然而,在创建和使用 ML 算法以及解释和传播结果方面,还存在许多需要解决的挑战。在这篇综述中,作者介绍了 ML 在放射肿瘤学质量和安全计划中的当前应用,讨论了放射肿瘤学界面临的挑战,并提出了未来的方向。