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Segmentation and Quantification of Blood Vessels in 3D Images using a Right Generalized Cylinder State Model

机译:右侧广义圆柱状态模型的3D图像中血管的分割和定量

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We present a vascular segmentation and quantification method based on the right generalized cylinder state model (RGC-sm). The RGC-sm model includes a curvilinear axis associated to a stack of contours. The axis is described by a state vector (local curvature, torsion and rotation). The contours are described by a Fourier series decomposition. The challenge is to automatically adjust this model to 3D vascular data (segmentation). By fitting the synthetic model to the actual medical data, it is possible to get the state model parameters and quantification measures. We present quantitative results on a set of calibrated phantoms and qualitative results on clinical datasets (carotid 3D-CTA and aortic 3D-MRA)
机译:我们提出了一种基于右侧广义汽缸状态模型(RGC-SM)的血管分割和量化方法。 RGC-SM模型包括与轮廓堆叠相关联的曲线轴。 轴由状态向量(局部曲率,扭转和旋转)描述。 轮廓由傅里叶串联分解描述。 挑战是自动将该模型调整为3D血管数据(分段)。 通过将合成模型拟合到实际的医疗数据,可以获得状态模型参数和量化措施。 我们对临床数据集(颈动脉3D-CTA和主动脉3D-MRA)的一组校准的幽灵和定性结果呈现定量结果

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