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A Statistical Shape and Motion Model for the Prediction of Respiratory Lung Motion

机译:用于预测肺运动的统计形状和运动模型

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We propose a method to compute a 4D statistical model of respiratory lung motion which consists of a 3D shape atlas, a 4D mean motion model and a 4D motion variability model. Symmetric diffeomorphic image registration is used to estimate subject-specific motion models, to generate an average shape and intensity atlas of the lung as anatomical reference frame and to establish inter-subject correspondence. The Log-Euclidean framework allows to perform statistics on diffeomorphic transformations via vectorial statistics on their logarithms. We apply this framework to compute the mean motion and motion variations by performing a Principal Component Analysis (PCA) on diffeomorphisms. Furthermore, we present methods to adapt the generated statistical 4D motion model to a patient-specific lung geometry and the individual organ motion.The prediction performance is evaluated with respect to motion field differences and with respect to landmark-based target registration errors. The quantitative analysis results in a mean target registration error of 3,2 ± 1,8 mm. The results show that the new method is able to provide valuable knowledge in many fields of application.
机译:我们提出了一种计算呼吸肺运动的4D统计模型的方法,该模型由3D形状图集,4D平均运动模型和4D运动变异性模型组成。对称衍射图像配准用于估计特定对象的运动模型,以生成肺部的平均形状和强度图谱作为解剖参考系,并建立受试者之间的对应关系。 Log-Euclidean框架允许通过对数对数的矢量统计来对微分变换进行统计。我们通过对变态进行主成分分析(PCA),将此框架应用于计算平均运动和运动变化。此外,我们提出了使生成的统计4D运动模型适应于特定于患者的肺部几何形状和单个器官运动的方法。 关于运动场差和关于基于界标的目标配准误差,评估预测性能。定量分析得出的平均目标配准误差为3.2±1.8 mm。结果表明,该新方法能够在许多应用领域提供有价值的知识。

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