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Applications and limitations of machine learning in radiation oncology

机译:机器学习在放射肿瘤学中的应用和局限性

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摘要

Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation oncology is no exception. With the burgeoning interest in machine learning comes the significant risk of misaligned expectations as to what it can and cannot accomplish. This paper evaluates the role of machine learning and the problems it solves within the context of current clinical challenges in radiation oncology. The role of learning algorithms within the workflow for external beam radiation therapy are surveyed, considering simulation imaging, multimodal fusion, image segmentation, treatment planning, quality assurance, and treatment delivery and adaptation. For each aspect, the clinical challenges faced, the learning algorithms proposed, and the successes and limitations of various approaches are analyzed. It is observed that machine learning has largely thrived on reproducibly mimicking conventional human-driven solutions with more efficiency and consistency. On the other hand, since algorithms are generally trained using expert opinion as ground truth, machine learning is of limited utility where problems or ground truths are not well-defined, or if suitable measures of correctness are not available. As a result, machines may excel at replicating, automating and standardizing human behaviour on manual chores, meanwhile the conceptual clinical challenges relating to definition, evaluation, and judgement remain in the realm of human intelligence and insight.
机译:解决问题的机器学习方法在医疗保健领域正在迅速发展,放射肿瘤学也不例外。随着人们对机器学习的兴趣日益浓厚,随之而来的巨大挑战是人们对机器学习可以实现和无法实现的期望不一致。本文评估了机器学习的作用及其在当前放射肿瘤学临床挑战的背景下解决的问题。考察了学习算法在外部束放射治疗工作流程中的作用,并考虑了模拟成像,多峰融合,图像分割,治疗计划,质量保证以及治疗的提供和适应。对于每个方面,分析了面临的临床挑战,提出的学习算法以及各种方法的成功与局限。可以看出,机器学习在可复制地模仿传统的人类驱动解决方案方面取得了长足的进步,该解决方案具有更高的效率和一致性。另一方面,由于通常使用专家意见作为基础事实来训练算法,因此在问题或基础事实没有得到很好定义或没有合适的正确性度量的情况下,机器学习的用途有限。结果,机器可能擅长复制,自动化和标准化人为琐事上的人类行为,与此同时,与定义,评估和判断有关的概念性临床挑战仍然存在于人类智能和洞察力领域。

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