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A kernel-based framework for intra-fractional respiratory motion estimation in radiation therapy

机译:基于内核的放射治疗中分数内呼吸运动估计框架

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In radiation therapy, tumor tracking allows to adjust the beam such that it follows the respiration-induced tumor motion. However, most clinical approaches rely on implanted fiducial markers to locate the tumor and, thus, only provide sparse information. Motion models have been investigated to estimate dense internal displacement fields from an external surrogate signal, such as range imaging. With increasing surrogate complexity, we propose a respiratory motion estimation framework based on kernel ridge regression to cope with high-dimensional domains. This approach was validated on five patient datasets, consisting of a planning 4DCT and a follow-up 4DCT for each patient. Mean residual error was at best 2.73 ± 0.25 mm, but varied greatly between patients.
机译:在放射治疗中,肿瘤跟踪允许调整光束,使其跟随呼吸诱导的肿瘤运动。但是,大多数临床方法依靠植入的基准标记来定位肿瘤,因此仅提供稀疏信息。已经研究了运动模型以从外部替代信号(例如范围成像)估计密集的内部位移场。随着代理复杂度的增加,我们提出了一种基于核脊回归的呼吸运动估计框架,以应对高维域。该方法在五个患者数据集上得到了验证,包括每个患者的计划4DCT和后续4DCT。平均残留误差最大为2.73±0.25 mm,但患者之间差异很大。

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