4th order tensors for multi-fiber resolution and segmentation in white matter

Temesgen Bihonegn, Avinash Bansal, J. Slovák, Sumit Kaushik
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引用次数: 2

Abstract

Since its inception, DTI modality has become an essential tool in the clinical scenario. In principle, it is rooted in the emergence of symmetric positive definite (SPD) second-order tensors modelling the difusion. The inability of DTI to model regions of white matter with fibers crossing/merging leads to the emergence of higher order tensors. In this work, we compare various approaches how to use 4th order tensors to model such regions. There are three different projections of these 3D 4th order tensors to the 2nd order tensors of dimensions either three or six. Two of these projections are consistent in terms of preserving mean diffusivity and isometry. The images of all three projections are SPD, so they belong to a Riemannian symmetric space. Following previous work of the authors, we use the standard k-means segmentation method after dimension reduction with affinity matrix based on reasonable similarity measures, with the goal to compare the various projections to 2nd order tensors. We are using the natural affine and log-Euclidean (LogE) metrics. The segmentation of curved structures and fiber crossing regions is performed under the presence of several levels of Rician noise. The experiments provide evidence that 3D 2nd order reduction works much better than the 6D one, while diagonal components (DC) projections are able to reveal the maximum diffusion direction.
四阶张量在白质多纤维分辨和分割中的应用
自成立以来,DTI模式已成为临床场景中的重要工具。原则上,它的根源是对称正定(SPD)二阶张量模拟扩散的出现。DTI无法模拟具有纤维交叉/合并的白质区域,导致出现高阶张量。在这项工作中,我们比较了如何使用四阶张量来模拟这些区域的各种方法。这些三维四阶张量到三维或六维的二阶张量有三种不同的投影。其中两个投影在保持平均扩散率和等距方面是一致的。这三个投影的图像都是SPD,因此它们属于黎曼对称空间。根据作者之前的工作,我们使用基于合理相似性度量的亲和矩阵降维后的标准k-means分割方法,目的是将各种投影与二阶张量进行比较。我们使用自然仿射和对数欧几里得(LogE)度量。曲线结构和光纤交叉区域的分割是在若干等级的噪声存在下进行的。实验结果表明,三维二阶约简效果明显优于6D二阶约简,而对角分量(DC)投影更能显示最大扩散方向。
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