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Bilişsel durum analizi i~in beyin Aği modeli

机译:用于认知状态分析的脑网络模型

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We suggest a new approach to estimate a brain network to model cognitive tasks and explore the node degree distribution of this network in anatomic regions. Functional Magnetic Resonance Images are used to estimate the relationship among the voxels. First, a local mesh is formed around each voxel in a predefined neighborhood system. Then, the edge weights of meshes, called Mesh Arc Descriptors (MAD) are estimated using a linear regression model. In order to estimate the optimal mesh size for voxels, the error term obtained during the estimation of Mesh Arc Descriptors are employed to optimize Akaike's Information Criterion. Finally, the brain network is constructed for each class by the estimated MAD. During experiments, we analyze how the degree of nodes varies across the anatomic brain regions for different cognitive states. Our results indicate that some anatomic regions make dense connections for all cognitive tasks whereas some of them have relatively sparse connections. This observation is consistent with the previously reported findings of anatomic regions. Although the degree distributions look similar for all classes, there are slight variations among classes. Therefore, the statistics of node degree distribution may be used to discriminate the anatomic regions related to cognitive tasks.
机译:我们建议一种估计大脑网络以建模认知任务并探索解剖区域中该网络的节点度分布的新方法。功能磁共振图像用于估计体素之间的关系。首先,在预定义的邻域系统中,在每个体素周围形成局部网格。然后,使用线性回归模型估算被称为网格弧描述符(MAD)的网格的边缘权重。为了估计体素的最佳网格大小,在估计网格弧描述符的过程中获得的误差项用于优化Akaike的信息准则。最后,通过估计的MAD为每个类别构建大脑网络。在实验过程中,我们分析了不同认知状态下解剖脑区域的结节程度如何变化。我们的结果表明,某些解剖区域对所有认知任务都具有密集的连接,而其中一些解剖区域则相对稀疏。该观察结果与先前报道的解剖区域的发现是一致的。尽管所有班级的学位分布看起来都相似,但各班级之间仍存在细微差异。因此,节点度分布的统计可以用于区分与认知任务有关的解剖区域。

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