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Riemannian Metric Optimization on Surfaces (RMOS) for Intrinsic Brain Mapping in the Laplace-Beltrami Embedding Space

机译:Laplace-Beltrami嵌入空间中用于固有大脑映射的表面黎曼度量优化(RMOS)

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摘要

Surface mapping methods play an important role in various brain imaging studies from tracking the maturation of adolescent brains to mapping gray matter atrophy patterns in Alzheimer’s disease. Popular surface mapping approaches based on spherical registration, however, have inherent numerical limitations when severe metric distortions are present during the spherical parameterization step. In this paper, we propose a novel computational framework for intrinsic surface mapping in the Laplace-Beltrami (LB) embedding space based on Riemannian metric optimization on surfaces (RMOS). Given a diffeomorphism between two surfaces, an isometry can be defined using the pullback metric, which in turn results in identical LB embeddings from the two surfaces. The proposed RMOS approach builds upon this mathematical foundation and achieves general feature-driven surface mapping in the LB embedding space by iteratively optimizing the Riemannian metric defined on the edges of triangular meshes. At the core of our framework is an optimization engine that converts an energy function for surface mapping into a distance measure in the LB embedding space, which can be effectively optimized using gradients of the LB eigen-system with respect to the Riemannian metrics. In the experimental results, we compare the RMOS algorithm with spherical registration using large-scale brain imaging data, and show that RMOS achieves superior performance in the prediction of hippocampal subfields and cortical gyral labels, and the holistic mapping of striatal surfaces for the construction of a striatal connectivity atlas from substantia nigra.
机译:从追踪青春期大脑的成熟到绘制阿尔茨海默氏病的灰质萎缩模式,表面映射方法在各种大脑成像研究中都发挥着重要作用。但是,当在球形参数化步骤中出现严重的度量失真时,基于球形配准的流行表面贴图方法具有固有的数值限制。在本文中,我们提出了一种基于表面上黎曼度量优化(RMOS)的Laplace-Beltrami(LB)嵌入空间中固有表面映射的新计算框架。给定两个表面之间的微分同构,可以使用回拉度量定义等轴测图,这反过来会导致两个表面的LB嵌入相同。所提出的RMOS方法建立在此数学基础之上,并通过迭代优化定义在三角形网格边缘上的黎曼度量,在LB嵌入空间中实现了一般特征驱动的曲面映射。我们框架的核心是一个优化引擎,该引擎将用于表面映射的能量函数转换为LB嵌入空间中的距离度量,可以使用LB本征系统相对于黎曼度量的梯度来有效地对其进行优化。在实验结果中,我们将RMOS算法与使用大规模脑成像数据进行的球形配准进行了比较,结果表明RMOS在预测海马亚区和皮质回旋标记以及纹状体表面整体映射以构建脑结构方面取得了卓越的性能。来自黑质的纹状体连接图集。

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