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Brain Connectivity and Information-Flow Breakdown Revealed by a Minimum Spanning Tree-Based Analysis of MRI Data in Behavioral Variant Frontotemporal Dementia

机译:行为变异额颞痴呆的MRI数据基于最小生成树的MRI分析揭示了大脑的连通性和信息流分解

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Brain functional disruption and cognitive shortfalls as consequences of neurodegeneration are among the most investigated aspects in current clinical research. Traditionally, specific anatomical and behavioral traits have been associated with neurodegeneration, thus directly translatable in clinical terms. However, these qualitative traits, do not account for the extensive information flow breakdown within the functional brain network that deeply affect cognitive skills. Behavioural variant Frontotemporal Dementia (bvFTD) is a neurodegenerative disorder characterized by behavioral and executive functions disturbances. Deviations from the physiological cognitive functioning can be accurately inferred and modeled from functional connectivity alterations. Although the need for unbiased metrics is still an open issue in imaging studies, the graph-theory approach applied to neuroimaging techniques is becoming popular in the study of brain dysfunction. In this work, we assessed the global connectivity and topological alterations among brain regions in bvFTD patients using a minimum spanning tree (MST) based analysis of resting state functional MRI (rs-fMRI) data. Whilst several graph theoretical methods require arbitrary criteria (including the choice of network construction thresholds and weight normalization methods), MST is an unambiguous modeling solution, ensuring accuracy, robustness, and reproducibility. MST networks of 116 regions of interest (ROIs) were built on wavelet correlation matrices, extracted from 41 bvFTD patients and 39 healthy controls (HC). We observed a global fragmentation of the functional network backbone with severe disruption of information-flow highways. Frontotemporal areas were less compact, more isolated, and concentrated in less integrated structures, respect to healthy subjects. Our results reflected such complex breakdown of the frontal and temporal areas at both intra-regional and long-range connections. Our findings highlighted that MST, in conjunction with rs-fMRI data, was an effective method for quantifying and detecting functional brain network impairments, leading to characteristic bvFTD cognitive, social, and executive functions disorders.
机译:脑功能破坏和认知不足是神经退行性变的后果,是当前临床研究中研究最多的方面。传统上,特定的解剖和行为特征已经与神经退行性疾病相关联,因此在临床上可以直接翻译。但是,这些定性特征不能解释功能性大脑网络中广泛影响深层认知能力的信息流故障。行为变异额颞叶痴呆(bvFTD)是一种神经退行性疾病,其特征在于行为和执行功能障碍。可以从功能连接性更改中准确推断出与生理认知功能的偏差并建立模型。尽管对无偏度量的需求仍然是影像学研究中的一个未解决的问题,但是应用于神经影像技术的图论方法在脑功能障碍研究中正变得越来越流行。在这项工作中,我们使用基于最小静止树(MST)的静息状态功能MRI(rs-fMRI)数据分析,评估了bvFTD患者大脑区域之间的整体连通性和拓扑变化。尽管几种图论方法需要任意准则(包括网络构建阈值和权重归一化方法的选择),但MST是一种明确的建模解决方案,可确保准确性,鲁棒性和可重复性。从41个bvFTD患者和39个健康对照(HC)中提取的小波相关矩阵建立了116个感兴趣区域(ROI)的MST网络。我们观察到功能性网络骨干的全球碎片化,严重破坏了信息流高速公路。相对于健康受试者,额颞区的紧凑性较低,更孤立,并且集中在较少整合的结构中。我们的结果反映了区域内和远程连接的额叶和颞叶区域的复杂分解。我们的研究结果强调,MST与rs-fMRI数据相结合,是一种量化和检测功能性脑网络障碍的有效方法,可导致特征性bvFTD认知,社交和执行功能障碍。

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