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首页> 外文期刊>Frontiers in Computational Neuroscience >The “Hub Disruption Index,” a Reliable Index Sensitive to the Brain Networks Reorganization. A Study of the Contralesional Hemisphere in Stroke
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The “Hub Disruption Index,” a Reliable Index Sensitive to the Brain Networks Reorganization. A Study of the Contralesional Hemisphere in Stroke

机译:“枢纽破坏指数”是对大脑网络重组敏感的可靠指数。脑卒中的半球形研究

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Stroke, resulting in focal structural damage, induces changes in brain function at both local and global levels. Following stroke, cerebral networks present structural, and functional reorganization to compensate for the dysfunctioning provoked by the lesion itself and its remote effects. As some recent studies underlined the role of the contralesional hemisphere during recovery, we studied its role in the reorganization of brain function of stroke patients using resting state fMRI and graph theory. We explored this reorganization using the “hub disruption index” (κ), a global index sensitive to the reorganization of nodes within the graph. For a given graph metric, κ of a subject corresponds to the slope of the linear regression model between the mean local network measures of a reference group, and the difference between that reference and the subject under study. In order to translate the use of κ in clinical context, a prerequisite to achieve meaningful results is to investigate the reliability of this index. In a preliminary part, we studied the reliability of κ by computing the intraclass correlation coefficient in a cohort of 100 subjects from the Human Connectome Project. Then, we measured intra-hemispheric κ index in the contralesional hemisphere of 20 subacute stroke patients compared to 20 age-matched healthy controls. Finally, due to the small number of patients, we tested the robustness of our results repeating the experiment 1000 times by bootstrapping on the Human Connectome Project database. Statistical analysis showed a significant reduction of κ for the contralesional hemisphere of right stroke patients compared to healthy controls. Similar results were observed for the right contralesional hemisphere of left stroke patients. We showed that κ, is more reliable than global graph metrics and more sensitive to detect differences between groups of patients as compared to healthy controls. Using new graph metrics as κ allows us to show that stroke induces a network-wide pattern of reorganization in the contralesional hemisphere whatever the side of the lesion. Graph modeling combined with measure of reorganization at the level of large-scale networks can become a useful tool in clinic.
机译:中风会导致局灶性结构损伤,从而在局部和整体水平上引起大脑功能的变化。脑卒中后,脑网络呈现结构和功能重组,以弥补病变本身及其远程影响引起的功能障碍。由于最近的一些研究强调了对侧半球在恢复过程中的作用,我们使用静止状态功能磁共振成像和图论研究了其在中风患者脑功能重组中的作用。我们使用“集线器破坏指数”(κ)探索了这种重组,该指数对图形中节点的重组非常敏感。对于给定的图形度量,对象的κ对应于参考组的平均局部网络度量与该参考与正在研究的对象之间的差异之间的线性回归模型的斜率。为了在临床环境中翻译κ的使用,获得有意义结果的前提是研究该指标的可靠性。在初步部分中,我们通过计算来自人类连接套项目的100名受试者的组内相关系数,研究了κ的可靠性。然后,我们与20位年龄相匹配的健康对照组相比,测量了20位亚急性脑卒中患者对侧半球的半球内κ指数。最后,由于患者人数少,我们通过在Human Connectome Project数据库上自举,重复了1000次实验,测试了结果的稳健性。统计分析表明,与健康对照组相比,右卒中患者对侧半球的κ显着降低。左中风患者的右对侧半球观察到相似的结果。我们显示,与健康对照组相比,κ比全局图指标更可靠,并且对检测两组患者之间的差异更敏感。使用新的图形度量作为κ可以使我们证明中风在对侧半球中无论病变的侧面如何都引起了整个网络的重组模式。图建模与大规模网络级别的重组度量相结合可以成为临床上的有用工具。

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