从弥散核磁共振成像中追踪形状和方位的乘积芒弗(Product Manifold of Shape and Orientation for Tractography from Diffusion MRI)。

Yuanxiang Wang, Hesamoddin Salehian, Guang Cheng, Baba C Vemuri
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引用次数: 0

摘要

神经纤维束描是指从体内或体外获得的弥散磁共振成像(dMRI)数据中描出神经纤维束的过程。在扩散核磁共振成像分析领域,神经纤维束描法是一个成熟的研究课题,然而,由于该问题尚未完全解决,一些新方法也在不断被提出,从而证明了这一需求的合理性。迹线分析法通常应用于从采集数据中重建的模型(用于表示弥散 MR 信号或衍生量)。之前的研究表明,在无处不在的插值问题中,分离这些模型的形状和方向可近似保留扩散各向异性(一种有用的生物标记)。然而,迄今为止,文献中还没有进一步利用这一框架的内在几何特性。在本文中,我们在形状和方向的乘积流形上提出了一种新的内在递归滤波器。这种递归滤波器被称为 IUKFPro,是无特征卡尔曼滤波器(UKF)在该乘积流形上的泛化。这项工作的突出贡献是(1) 针对形状和方向的乘积流形设计了一种新的本征卡尔曼滤波器(UKF)。(2) 对积流形的黎曼几何进行推导。(3) 在各种牵引成像挑战赛的合成和真实数据集上测试 IUKFPro。从实验结果来看,IUKFPro 在比赛中使用的一些误差测量指标方面的表现优于文献中的几种竞争方案,而在其他方面则具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Tracking on the Product Manifold of Shape and Orientation for Tractography from Diffusion MRI.

Tracking on the Product Manifold of Shape and Orientation for Tractography from Diffusion MRI.

Tracking on the Product Manifold of Shape and Orientation for Tractography from Diffusion MRI.

Tracking on the Product Manifold of Shape and Orientation for Tractography from Diffusion MRI.

Tractography refers to the process of tracing out the nerve fiber bundles from diffusion Magnetic Resonance Images (dMRI) data acquired either in vivo or ex-vivo. Tractography is a mature research topic within the field of diffusion MRI analysis, nevertheless, several new methods are being proposed on a regular basis thereby justifying the need, as the problem is not fully solved. Tractography is usually applied to the model (used to represent the diffusion MR signal or a derived quantity) reconstructed from the acquired data. Separating shape and orientation of these models was previously shown to approximately preserve diffusion anisotropy (a useful bio-marker) in the ubiquitous problem of interpolation. However, no further intrinsic geometric properties of this framework were exploited to date in literature. In this paper, we propose a new intrinsic recursive filter on the product manifold of shape and orientation. The recursive filter, dubbed IUKFPro, is a generalization of the unscented Kalman filter (UKF) to this product manifold. The salient contributions of this work are: (1) A new intrinsic UKF for the product manifold of shape and orientation. (2) Derivation of the Riemannian geometry of the product manifold. (3) IUKFPro is tested on synthetic and real data sets from various tractography challenge competitions. From the experimental results, it is evident that IUKFPro performs better than several competing schemes in literature with regards to some of the error measures used in the competitions and is competitive with respect to others.

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