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A Tetrahedron-Based Heat Flux Signature for Cortical Thickness Morphometry Analysis

机译:基于四面体的热通量签名,用于皮层厚度形态分析

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Cortical thickness analysis of brain magnetic resonance images is an important technique in neuroimaging research. There are two main computational paradigms, namely voxel-based and surface-based methods. Recently, a tetrahedron-based volumetric morphometry (TBVM) approach involving proper discretization methods was proposed. The multi-scale and physics-based geometric features generated through such methods may yield stronger statistical power. However, several challenges, such as the lack of well-defined thickness statistics and the difficulty in filling tetrahedrons into the thin and curvy cortex structure, impede the broad application of TBVM. In this paper, we present a universal cortical thickness morphometry analysis approach called tetrahedron-based Heat Flux Signature (tHFS) to address these challenges. We define the tetrahedron-based weak form heat equation and Laplace-Beltrami eigen decomposition and give an explicit FEM-based discretization formulation to compute the tHFS. We further show a tHFS metric space with which cortical morphometric distances can be directly visualized. Additionally, we optimize the cortical tetrahedral mesh generation pipeline and fill dense high-quality tetrahedra in the grey matters without sacrificing data integrity. Compared with existing cortical thickness analysis approaches, our experimental results of distinguishing among Alzheimer's disease (AD), cognitively normal (CN) and mild cognitive impairment (MCI) subjects shows that tHFS yields a more accurate representation of cortical thickness morphometry. The tHFS metric experiment provides a more vivid visualization of tHFS's power in separating different clinical groups.
机译:脑磁共振图像的皮层厚度分析是神经成像研究中的一项重要技术。有两种主要的计算范例,即基于体素的方法和基于表面的方法。最近,提出了一种基于四面体的体积形态学(TBVM)方法,其中涉及适当的离散化方法。通过此类方法生成的多尺度和基于物理的几何特征可能会产生更强的统计能力。但是,一些挑战,例如缺乏明确的厚度统计数据以及难以将四面体填充到薄而弯曲的皮质结构中,阻碍了TBVM的广泛应用。在本文中,我们提出了一种通用的皮质厚度形态分析方法,称为基于四面体的热通量签名(tHFS),以应对这些挑战。我们定义了基于四面体的弱形式热方程和Laplace-Beltrami本征分解,并给出了一个基于FEM的显式离散化公式来计算tHFS。我们进一步展示了一个tHFS度量空间,通过该空间可以直接显示皮层形态距离。此外,我们优化了皮质四面体网格生成管道,并在不牺牲数据完整性的情况下,在灰质中填充了密集的高质量四面体。与现有的皮层厚度分析方法相比,我们区分阿尔茨海默氏病(AD),认知正常(CN)和轻度认知障碍(MCI)受试者的实验结果表明,tHFS可以更准确地表示皮层厚度形态。 tHFS度量标准实验可以更生动地显示tHFS在分离不同临床组中的功能。

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