Robust Tensor Splines for Approximation of Diffusion Tensor MRI Data.

Angelos Barmpoutis, Baba C Vemuri, John R Forder
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Abstract

In this paper, we present a novel and robust spline approximation algorithm given a noisy symmetric positive definite (SPD) tensor field. Such tensor fields commonly arise in the field of Medical Imaging in the form of Diffusion Tensor (DT) MRI data sets. We develop a statistically robust algorithm for constructing a tensor product of B-splines - for approximating and interpolating these data - using the Riemannian metric of the manifold of SPD tensors. Our method involves a two step procedure wherein the first step uses Riemannian distances in order to evaluate a tensor spline by computing a weighted intrinsic average of diffusion tensors and the second step involves minimization of the Riemannian distance between the evaluated spline curve and the given data. These two steps are alternated to achieve the desired tensor spline approximation to the given tensor field. We present comparisons of our algorithm with four existing methods of tensor interpolation applied to DT-MRI data from fixed heart slices of a rabbit, and show significantly improved results in the presence of noise and outliers. We also present validation results for our algorithm using synthetically generated noisy tensor field data with outliers. This interpolation work has many applications e.g., in DT-MRI registration, in DT-MRI Atlas construction etc. This research was in part funded by the NIH ROI NS42075 and the Department of Radiology, University of Florida.

用于逼近扩散张量核磁共振成像数据的稳健张量样条。
在本文中,我们提出了一种给定噪声对称正定(SPD)张量场的新颖、稳健的样条近似算法。这种张量场通常以扩散张量(DT)核磁共振成像数据集的形式出现在医学成像领域。我们利用 SPD 张量流形的黎曼度量,开发了一种稳健的统计算法,用于构建 B 样条的张量乘积,以逼近和插值这些数据。我们的方法包括两个步骤,第一步使用黎曼距离,通过计算扩散张量的加权本征平均值来评估张量样条曲线;第二步是最小化评估样条曲线与给定数据之间的黎曼距离。这两个步骤交替进行,以实现对给定张量场的张量样条近似。我们将我们的算法与现有的四种张量插值方法进行了比较,并将其应用于来自兔子固定心脏切片的 DT-MRI 数据,结果表明,在存在噪声和异常值的情况下,我们的算法显著改善了结果。我们还展示了使用合成生成的带异常值的高噪声张量场数据对我们算法的验证结果。这项插值工作有很多应用领域,如 DT-MRI 注册、DT-MRI 图集构建等。本研究部分经费来自美国国立卫生研究院(NIH)ROI NS42075 和佛罗里达大学放射学系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
43.50
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0.00%
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