首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention;MICCAI 2008 >Automatic Deformable Diffusion Tensor Registration for Fiber Population Analysis
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Automatic Deformable Diffusion Tensor Registration for Fiber Population Analysis

机译:自动可变形扩散张量配准,用于纤维分布分析

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In this work, we propose a novel method for deformable tensor-to-tensor registration of Diffusion Tensor Images. Our registration method models the distances in between the tensors with Geode-sic-Loxodromes and employs a version of Multi-Dimensional Scaling (MDS) algorithm to unfold the manifold described with this metric. Defining the same shape properties as tensors, the vector images obtained through MDS are fed into a multi-step vector-image registration scheme and the resulting deformation fields are used to reorient the tensor fields. Results on brain DTI indicate that the proposed method is very suitable for deformable fiber-to-fiber correspondence and DTI-atlas construction.
机译:在这项工作中,我们提出了一种用于扩散张量图像的可变形张量到张量配准的新方法。我们的配准方法使用Geode-sic-Loxodromes模拟了张量之间的距离,并采用了多维缩放(MDS)算法版本来展开用该度量描述的流形。通过定义与张量相同的形状特性,将通过MDS获得的矢量图像输入到多步矢量图像配准方案中,并将所得的变形场用于重新定向张量场。脑DTI的结果表明,该方法非常适用于可变形的纤维与纤维之间的对应关系以及DTI-图集的构建。

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