Artificial intelligence in radiation oncology treatment planning: a brief overview

Kendall J. Kiser, C. Fuller, V. Reed
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引用次数: 18

Abstract

Among medical specialties, radiation oncology has long been an innovator and early adopter of therapeutic technologies. This specialty is now situated in prime position to be revolutionized by advances in artificial intelligence (AI), especially machine and deep learning. AI has been investigated by radiation oncologists and physicists in both general and niche radiotherapy planning tasks and has often demonstrated performance that is indistinguishable from human experts, while substantially shortening the time required to complete these tasks. We sought to review applications of AI to domains germane to radiation oncology, namely: image segmentation, treatment plan generation and optimization, normal tissue complication probability modeling, quality assurance (QA), and adaptive re-planning. We sought likewise to consider obstacles to AI adoption in the radiotherapy clinic, now primarily political, legal, and ethical rather than technical in nature.
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人工智能在放射肿瘤学治疗计划中的应用综述
在医学专业中,放射肿瘤学长期以来一直是治疗技术的创新者和早期采用者。由于人工智能(AI)的进步,特别是机器和深度学习,这一专业现在处于革命性的地位。放射肿瘤学家和物理学家已经在一般和小众放疗计划任务中对人工智能进行了研究,并且经常显示出与人类专家无法区分的表现,同时大大缩短了完成这些任务所需的时间。我们试图回顾人工智能在放射肿瘤学相关领域的应用,即:图像分割,治疗计划生成和优化,正常组织并发症概率建模,质量保证(QA)和自适应重新规划。同样,我们也试图考虑人工智能在放射治疗诊所应用的障碍,现在主要是政治、法律和道德方面的障碍,而不是技术上的障碍。
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