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Longitudinal Analysis of Brain Recovery after Mild Traumatic Brain Injury Based on Groupwise Consistent Brain Network Clusters

机译:基于Grouply致力于脑网络集群的轻度创伤性脑损伤后大脑恢复的纵向分析

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Traumatic brain injury (TBI) affects over 1.5 million Americans each year, and more than 75% of TBI cases are classified as mild (mTBI). Several functional network alternations have been reported after mTBI; however, the network alterations on a large scale, particularly on connectome scale, are still unknown. To analyze brain network, in a previous work, 358 landmarks named dense individualized common connectivity based cortical landmarks (DICCCOL) were identified on cortical surface. These landmarks preserve structural connection consistency and maintain functional correspondence across subjects. Hence DICCCOLs have been shown powerful in identifying connectivity signatures in affected brains. However, on such fine scales, the longitudinal changes in brain network of mTBI patients were complicated by the noise embedded in the systems as well as the normal variability of individuals at different times. Faced with such problems, we proposed a novel framework to analyze longitudinal changes from the perspective of network clusters. Specifically, multiview spectral clustering algorithm was applied to cluster brain networks based on DICCCOLs. And both structural and functional networks were analyzed. Our results showed that significant longitudinal changes were identified from mTBI patients that can be related to the neurocognitive recovery and the brain's effort to compensate the effect of injury.
机译:创伤性脑损伤(TBI)每年影响超过150万美国人,超过75%的TBI病例被归类为轻度(MTBI)。 MTBI后报告了几个功能网络交替;但是,网络改变大规模,特别是在连接尺度上,仍然未知。为了分析脑网络,在先前的工作中,在皮质表面上鉴定了358名命名密集的个性化共同连通性的皮质地标(Dicccol)的地标。这些地标保持结构连接一致性并维持跨对象的功能对应。因此,DICCOLS已被强大识别受影响的大脑中的连接签名。然而,在这种精细尺度上,MTBI患者脑网络的纵向变化被系统中嵌入的噪声以及不同时间的个体的正常变异复杂。面对这些问题,我们提出了一种新颖的框架,从网络集群的角度分析纵向变化。具体地,基于DICCOLS应用了多视图谱聚类算法对群集脑网络。并分析了结构和功能网络。我们的研究结果表明,从MTBI患者鉴定了与神经认知恢复和大脑努力有关的MTBI患者鉴定了显着的纵向变化,以补偿伤害的影响。

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