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Enhancing Diffusion MRI Measures By Integrating Grey and White Matter Morphometry With Hyperbolic Wasserstein Distance

机译:通过将灰色和白色物质形态学与双曲线Wasserstein距离相结合来增强扩散MRI测量

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摘要

In order to improve the preclinical diagnose of Alzheimer's disease (AD), there is a great deal of interest in analyzing the AD related brain structural changes with magnetic resonance image (MRI) analyses. As the major features, variation of the structural connectivity and the cortical surface morphometry provide different views of structural changes to determine whether AD is present on presymptomatic patients. However, the large scale tensor-valued information and relatively low imaging resolution in diffusion MRI (dMRI) have created huge challenges for analysis. In this paper, we propose a novel framework that improves dMRI analysis power by fusing cortical surface morphometry features from structural MRI (sMRI). We first compute the hyperbolic harmonic maps between cortical surfaces with the landmark constraints thus to precisely evaluate surface tensor-based morphometry. Meanwhile, the graph-based analysis of structural connectivity derived from dMRI is conducted. Next, we fuse these two features via the optimal mass transportation (OMT) and eventually the Wasserstein distance (WD) based single image index is computed as a potential clinical multimodality imaging score. We apply our framework to brain images of 20 AD patients and 20 matched healthy controls, randomly chosen from the Alzheimer's Disease Neuroimaging Initiative (AD-NI2) dataset. Our preliminary experimental results of group classification outperformed those of some other single dMRI-based features, such as regional hippocampal volume, mean scores of fractional anisotropy (FA) and mean axial (MD). The novel image fusion pipeline and simple imaging score of structural changes may benefit the preclinical AD and AD prevention research.
机译:为了改善阿尔茨海默氏病(AD)的临床前诊断,通过磁共振成像(MRI)分析分析与AD相关的大脑结构变化,引起了人们的极大兴趣。作为主要特征,结构连接性的变化和皮质表面形态的变化提供了结构变化的不同观点,从而可以确定症状前患者是否存在AD。但是,弥散MRI(dMRI)中的大规模张量值信息和较低的成像分辨率为分析带来了巨大挑战。在本文中,我们提出了一种新颖的框架,该框架通过融合结构性MRI(sMRI)的皮质表面形态特征来提高dMRI的分析能力。我们首先计算具有界标约束的皮质表面之间的双曲谐波映射,从而精确评估基于表面张量的形态。同时,对基于dMRI的结构连通性进行了基于图的分析。接下来,我们通过最佳质量传输(OMT)融合这两个功能,最终将基于Wasserstein距离(WD)的单个图像指数计算为潜在的临床多模态成像评分。我们将我们的框架应用于20例AD患者和20例匹配的健康对照者的大脑图像,这些图像是从阿尔茨海默氏病神经成像计划(AD-NI2)数据集中随机选择的。我们的初步分组分类实验结果优于其他基于dMRI的其他特征,例如区域海马体积,平均分数分数(FA)和平均轴向(MD)。新颖的图像融合管道和简单的结构变化成像评分可能有益于临床前AD和AD预防研究。

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