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头颈部癌症中危及器官和靶区自动勾画的快速进展。

Rapid advances in auto-segmentation of organs at risk and target volumes in head and neck cancer.

机构信息

University College London Hospitals NHS Foundation Trust, UK.

DeepMind Technologies, London, UK.

出版信息

Radiother Oncol. 2019 Jun;135:130-140. doi: 10.1016/j.radonc.2019.03.004. Epub 2019 Mar 22.

DOI:10.1016/j.radonc.2019.03.004
PMID:31015159
Abstract

Advances in technical radiotherapy have resulted in significant sparing of organs at risk (OARs), reducing radiation-related toxicities for patients with cancer of the head and neck (HNC). Accurate delineation of target volumes (TVs) and OARs is critical for maximising tumour control and minimising radiation toxicities. When performed manually, variability in TV and OAR delineation has been shown to have significant dosimetric impacts for patients on treatment. Auto-segmentation (AS) techniques have shown promise in reducing both inter-practitioner variability and the time taken in TV and OAR delineation in HNC. Ultimately, this may reduce treatment planning and clinical waiting times for patients. Adaptation of radiation treatment for biological or anatomical changes during therapy will also require rapid re-planning; indeed, the time taken for manual delineation currently prevents adaptive radiotherapy from being implemented optimally. We are therefore standing on the threshold of a transformation of routine radiotherapy planning via the use of artificial intelligence. In this article, we outline the current state-of-the-art for AS for HNC radiotherapy in order to predict how this will rapidly change with the introduction of artificial intelligence. We specifically focus on delineation accuracy and time saving. We argue that, if such technologies are implemented correctly, AS should result in better standardisation of treatment for patients and significantly reduce the time taken to plan radiotherapy.

摘要

技术放疗的进步导致了危险器官(OARs)的显著保护,降低了头颈部癌症(HNC)患者的放射相关毒性。准确勾画靶区(TVs)和 OARs 对于最大限度地控制肿瘤和最小化放射毒性至关重要。当手动进行时,已显示 TV 和 OAR 勾画的可变性对治疗中的患者具有显著的剂量学影响。自动分割(AS)技术已显示出在减少头颈部癌症中医生之间的可变性和 TV 和 OAR 勾画所需时间方面的潜力。最终,这可能会减少治疗计划和患者的临床等待时间。在治疗过程中针对生物学或解剖学变化进行放射治疗的调整也将需要快速重新规划;实际上,目前手动勾画所需的时间阻止了自适应放疗的最佳实施。因此,我们正站在通过使用人工智能改变常规放疗计划的门槛上。在本文中,我们概述了头颈部癌症放疗中 AS 的最新现状,以预测人工智能引入后这将如何迅速改变。我们特别关注勾画准确性和节省时间。我们认为,如果正确实施这些技术,AS 应该会导致患者治疗的更好标准化,并大大减少放疗计划的时间。

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