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Fusion of Resampled 3D MR Images for Geometric Modeling of Blood Vessels

机译:重采样3D MR图像的融合,用于血管几何建模

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Accurate quantitative information about blood vasculature depicted in 3D MR images has a great importance in diagnosis of many vascular diseases. In this work, the accuracy of vessel lumen walls reconstruction is studied. A 3D printed model of two MRI time-of-flight arterial branches is manufactured. Next, it is submerged in water and T2-weighted MR images are acquired in coronal, transversal and sagittal thick slice orientation. Then, MR anisotropic and fused (resampled and averaged) images are segmented with the use of Level-Set (LS) and centerline-radius (CR) algorithms. Surfaces of 3D branch models are constructed, and errors of their estimated radii are evaluated. We have demonstrated that LS approach may not be capable of segmenting thin vascular branches in anisotropic-voxel images. After image resampling, the LS segmentation restores the object surface, but with significant staircase distortion. Thanks to the knowledge about the assumed vessel shape, incorporated with the CR method, it produces accurate estimates of the branch radius and smooth model surface, even in the case of anisotropic voxel images.
机译:关于3D MR图像中描绘血管系统准确的定量信息在许多血管疾病的诊断具有重要意义。在这项工作中,血管腔管壁重建的准确性进行了研究。的MRI时间飞行2动脉分支的三维印刷模型制造。接着,它浸没在水和T2加权的MR图像在冠状,横向和矢状切片厚取向获取。然后,MR各向异性和稠合(重采样并取平均值)图像被分段与使用水平集(LS)和中心线半径(CR)算法。 3D模型分支的表面构造,和他们的估计半径的误差进行评估。我们已经证明,LS方法可能不能够在各向异性体素的图像分割薄血管分支。图像重新采样之后,LS分割恢复对象表面,但与显著楼梯失真。由于关于假设的容器形状的知识,与CR结合的方法,它产生的分支半径的准确估计及平滑模型表面,即使在各向异性体素图像的情况下。

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