多图谱多层脑网络,神经退行性疾病的一种新的多模式方法

Vincent Le Du, Charley Presigny, Arabella Bouzigues, V. Godefroy, B. Batrancourt, R. Levy, F. De Vico Fallani, R. Migliaccio
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引用次数: 1

摘要

多层网络(MNs)构成了一个优雅而富有洞察力的多维或多模态框架。从神经成像模式提取的脑功能和结构网络制成的双峰神经网络通常为真正的紧急多模态分析奠定了基础。到目前为止,它们是使用相同的图集对两层进行计算的。然而,不同的地图集需要特定的成像方式。根据为特定模式选择的图谱,这可能导致来自其他模式的信息受到损害。在本文中,我们提出了一种新的方法来构建这种网络,使用适合每种模式的特定地图集。新技术是基于计算每个可用模态的不同区域之间的空间重叠。我们推广了用于区分核心和外周大脑区域的多重核心-外周方法,将其应用于此类神经网络,并对该方法进行了评估,并将其与以前的版本进行了比较。我们将这种新方法应用于行为变异性额颞叶痴呆(bvFTD)患者和健康对照组。首先,我们选择了两个特定的地图集,AAL2和Schaefer100-Yeo17,分别用于DWI和fMRI数据。随后,我们计算了每个主题的丰富度和密集度。最后,我们对结果进行基准测试,以评估该技术。在重复先前发现的条件下,我们获得了比先前方法更高的显著性峰和fisher标准。这突出了我们的多图谱mnns的潜力以及它们在MN分析中的有用性。
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Multi-atlas Multilayer Brain Networks, a new multimodal approach to neurodegenerative disease
Multilayer networks (MNs) constitute an elegant and insightful multidimensional or multimodal framework. Bimodal MNs made from brain functional and structural networks extracted from neuroimaging modalities commonly lay the ground for truly emergent multimodal analysis. Thus far, they are computed using the same atlas for both layers. However, different atlases are required for specific imaging modalities. Depending on which atlas is chosen for a specific modality, this can lead to information from the other modalities being compromised. In this paper, we propose a new way to build such networks using specific atlases suited to each modality. The new technique is based on the computation of spatial overlaps between regions from different parcellations used for each available modality. We generalized the multiplex core-periphery method used to distinguish core and peripheral brain regions to apply it to such MNs, and to evaluate the approach and compare it to previous versions. We applied this new method in behavioral variant frontotemporal dementia (bvFTD) patients and healthy controls. First, we chose two specific atlases, the AAL2 and Schaefer100-Yeo17, for our DWI and fMRI data respectively. Subsequently, we computed richness and coreness for each subject. Finally, we benchmarked our results to evaluate the technique. We obtained higher peaks of significance and Fishers Criterion than with the previous method in the conditions that replicates previous findings. This highlights the potential of our multi-atlas MNs as well as their usefulness in MN analysis.
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