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Quantifying motor recovery after stroke using independent vector analysis and graph-theoretical analysis

机译:使用独立的矢量分析和图论分析量化中风后的运动恢复

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摘要

The assessment of neuroplasticity after stroke through functional magnetic resonance imaging (fMRI) analysis is a developing field where the objective is to better understand the neural process of recovery and to better target rehabilitation interventions. The challenge in this population stems from the large amount of individual spatial variability and the need to summarize entire brain maps by generating simple, yet discriminating features to highlight differences in functional connectivity. Independent vector analysis (IVA) has been shown to provide superior performance in preserving subject variability when compared with widely used methods such as group independent component analysis. Hence, in this paper, graph-theoretical (GT) analysis is applied to IVA-generated components to effectively exploit the individual subjects' connectivity to produce discriminative features. The analysis is performed on fMRI data collected from individuals with chronic stroke both before and after a 6-week arm and hand rehabilitation intervention. Resulting GT features are shown to capture connectivity changes that are not evident through direct comparison of the group t-maps. The GT features revealed increased small worldness across components and greater centrality in key motor networks as a result of the intervention, suggesting improved efficiency in neural communication. Clinically, these results bring forth new possibilities as a means to observe the neural processes underlying improvements in motor function.
机译:通过功能磁共振成像(fMRI)分析评估中风后的神经可塑性是一个正在发展的领域,其目的是更好地了解恢复的神经过程并更好地针对康复干预措施。该人群面临的挑战来自大量的个体空间变异性,以及需要通过生成简单而可区分的特征以突出功能连接性差异来汇总整个大脑图的需求。与广泛使用的方法(如组独立成分分析)相比,独立向量分析(IVA)已显示出在保留受试者变异性方面的出色性能。因此,在本文中,将图论(GT)分析应用于IVA生成的组件,以有效利用各个主体的连通性以产生判别特征。在6周手臂和手部康复干预之前和之后,对从慢性卒中患者收集的fMRI数据进行分析。显示的结果GT功能可以捕获通过直接比较组t映射而看不到的连通性变化。通过干预,GT的功能揭示了组件之间较小的通用性和关键运动网络的更大集中性,这表明神经通讯效率得到了提高。在临床上,这些结果带来了新的可能性,可作为观察运动功能改善基础的神经过程的手段。

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