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首页> 外文期刊>Methods of information in medicine >Simulation of range imaging-based estimation of respiratory lung motion: Influence of noise, signal dimensionality and sampling patterns
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Simulation of range imaging-based estimation of respiratory lung motion: Influence of noise, signal dimensionality and sampling patterns

机译:基于距离成像的呼吸肺运动估计的仿真:噪声,信号维数和采样模式的影响

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摘要

Objectives: A major problem associated with the irradiation of thoracic and abdominal tumors is respiratory motion. In clinical practice, motion compensation approaches are frequently steered by low-dimensional breathing signals (e.g., spirometry) and patient-specific correspondence models, which are used to estimate the sought internal motion given a signal measurement. Recently, the use of multidimensional signals derived from range images of the moving skin surface has been proposed to better account for complex motion patterns. In this work, a simulation study is carried out to investigate the motion estimation accuracy of such multidimensional signals and the influence of noise, the signal dimensionality, and different sampling patterns (points, lines, regions). Methods: A diffeomorphic correspondence modeling framework is employed to relate multidimensional breathing signals derived from simulated range images to internal motion patterns represented by diffeomorphic non-linear transformations. Furthermore, an automatic approach for the selection of optimal signal combinations/patterns within this framework is presented. Results: This simulation study focuses on lung motion estimation and is based on 28 4D CT data sets. The results show that the use of multidimensional signals instead of one-dimensional signals significantly improves the motion estimation accuracy, which is, however, highly affected by noise. Only small differences exist between different multidimensional sampling patterns (lines and regions). Automatically determined optimal combinations of points and lines do not lead to accuracy improvements compared to results obtained by using all points or lines. Conclusions: Our results show the potential of multidimensional breathing signals derived from range images for the model-based estimation of respiratory motion in radiation therapy.
机译:目的:与胸部和腹部肿瘤照射相关的主要问题是呼吸运动。在临床实践中,运动补偿方法经常由低维呼吸信号(例如,肺量计)和患者特定的对应模型控制,这些模型用于在给定信号测量值的情况下估计所寻求的内部运动。近来,已经提出使用从运动的皮肤表面的范围图像得到的多维信号来更好地解决复杂的运动模式。在这项工作中,进行了仿真研究,以研究此类多维信号的运动估计精度以及噪声,信号维数和不同采样模式(点,线,区域)的影响。方法:采用微分形对应建模框架,将模拟距离图像导出的多维呼吸信号与由微分形非线性变换表示的内部运动模式相关。此外,提出了在该框架内选择最佳信号组合/模式的自动方法。结果:该模拟研究集中于肺运动估计,并且基于28个4D CT数据集。结果表明,使用多维信号代替一维信号可以显着提高运动估计精度,但是,运动估计精度受噪声的影响很大。在不同的多维采样模式(线和区域)之间仅存在很小的差异。与通过使用所有点或线获得的结果相比,自动确定的点和线的最佳组合不会导致准确性的提高。结论:我们的结果表明,从范围图像得出的多维呼吸信号对于放射治疗中基于模型的呼吸运动估计具有潜在的潜力。

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