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Exploratory factor analysis of brain networks reveals sub-networks related to cognitive performance

机译:脑网络的探索性因素分析揭示了与认知表现有关的子网络

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Properties of the brain's structural networks can be analyzed by applying fiber-tracking techniques and network analysis to diffusion MRI. Here we applied exploratory factor analysis (EFA) to anatomical connectivity matrices, to identify brain networks whose properties predicted higher-order cognitive function. Using diffusion MRI scans from 104 healthy young adults, we computed connectivity matrices based on deterministic and probabilistic tractography (with the FACT and Hough transform methods). Both sets of matrices were submitted to factor analysis, to identify sub-networks relevant for predicting cognitive function. The Kaiser-Meyer-Olkin measure and Bartlett's sphericity test were used to recover latent factors from the connectivity matrices, and only the Hough method yielded factorable outputs. Factor scores were related to fluid, crystallized, and spatial intelligence, and processing speed. Middle temporal and lateral prefrontal connectivity measures predicted all cognitive scores, except spatial intelligence. Cognitive performance was not predictable from global connectivity measures, which depended on the tractography method.
机译:可以通过将纤维跟踪技术和网络分析应用于扩散MRI来分析大脑结构网络的属性。在这里,我们将探索性因子分析(EFA)应用于解剖学连通性矩阵,以识别其特性可预测更高阶认知功能的大脑网络。使用来自104位健康的年轻人的弥散MRI扫描,我们基于确定性和概率性的体层摄影术(使用FACT和Hough变换方法)计算了连通性矩阵。两组矩阵都提交给因子分析,以识别与预测认知功能相关的子网。使用Kaiser-Meyer-Olkin测度和Bartlett的球形度测试从连通性矩阵中恢复潜在因子,只有Hough方法产生可分解的输出。因子得分与流体,结晶和空间智能以及处理速度有关。颞中部和外侧额叶前额连接性指标可预测除空间智力以外的所有认知得分。认知能力无法通过全球连接性测度来预测,该测度依赖于影像学方法。

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