ASTRA:用于放射治疗质量保证的原子表面变换。

Amith Kamath, Robert Poel, Jonas Willmann, Ekin Ermis, Nicolaus Andratschke, Mauricio Reyes
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引用次数: 0

摘要

胶质母细胞瘤是一种侵袭性脑肿瘤,其治疗通常依靠放射治疗。这就需要规划如何实现理想的放射剂量分布,也就是所谓的治疗规划。人为错误、专家之间在分割(或勾画)肿瘤目标和危险器官方面的差异以及分割方案的不同都会影响治疗计划。错误的分割会导致错误的剂量分布,进而产生次优的临床结果。审查分割需要大量时间,大大降低了肿瘤放疗团队的工作效率,从而限制了为限制肿瘤生长而进行的及时放疗干预。此外,迄今为止,放射肿瘤学家在审查和校正分割时,并不了解潜在的校正可能对辐射剂量分布产生怎样的影响,从而导致分割校正工作流程效率低下,达不到最佳效果。在本文中,我们介绍了一种基于深度学习的自动方法:用于放疗质量保证的原子表面变换(ASTRA),它能预测局部分割变化对放疗剂量预测的潜在影响,从而作为一种有效的剂量感知分割变化敏感度图。在 100 名胶质母细胞瘤患者的数据集上,我们展示了所提出的方法如何评估和可视化最易受剂量变化影响的风险器官区域,为临床医生提供了一种剂量知情机制,用于审查和纠正放疗计划的分割。这些初步结果表明,在放射治疗计划工作流程中,在更广泛的自动质量保证系统中采用这种方法具有很大的潜力。转载代码请访问 https://github.com/amithjkamath/astraClinical 相关性:ASTRA显示了在显示OAR中哪些区域更有可能影响辐射剂量分布方面的前景。
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ASTRA: Atomic Surface Transformations for Radiotherapy Quality Assurance.

Treatment for glioblastoma, an aggressive brain tumour usually relies on radiotherapy. This involves planning how to achieve the desired radiation dose distribution, which is known as treatment planning. Treatment planning is impacted by human errors, inter-expert variability in segmenting (or outlining) the tumor target and organs-at-risk, and differences in segmentation protocols. Erroneous segmentations translate to erroneous dose distributions, and hence sub-optimal clinical outcomes. Reviewing segmentations is time-intensive, significantly reduces the efficiency of radiation oncology teams, and hence restricts timely radiotherapy interventions to limit tumor growth. Moreover, to date, radiation oncologists review and correct segmentations without information on how potential corrections might affect radiation dose distributions, leading to an ineffective and suboptimal segmentation correction workflow. In this paper, we introduce an automated deep-learning based method: atomic surface transformations for radiotherapy quality assurance (ASTRA), that predicts the potential impact of local segmentation variations on radiotherapy dose predictions, thereby serving as an effective dose-aware sensitivity map of segmentation variations. On a dataset of 100 glioblastoma patients, we show how the proposed approach enables assessment and visualization of areas of organs-at-risk being most susceptible to dose changes, providing clinicians with a dose-informed mechanism to review and correct segmentations for radiation therapy planning. These initial results suggest strong potential for employing such methods within a broader automated quality assurance system in the radiotherapy planning workflow. Code to reproduce this is available at https://github.com/amithjkamath/astraClinical Relevance: ASTRA shows promise in indicating what regions of the OARs are more likely to impact the distribution of radiation dose.

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