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Modeling Voxel Connectivity for Brain Decoding

机译:为大脑解码建模Voxel连接性

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The massively dynamic nature of human brain cannot be represented by considering only a collection of voxel intensity values obtained from fMRI measurements. It has been observed that the degree of connectivity among voxels provide important information for modeling cognitive activities. Moreover, spatially close voxels act together to generate similar BOLD responses to the same stimuli. In this study, we propose a local mesh model, called Local Mesh Model with Temporal Measurements (LMM-TM), to first estimate spatial relationship among a set of voxels using spatial and temporal data measured at each voxel, and then employ the relationship for the construction of a connectivity model for brain decoding. For this purpose, we first construct a local mesh around each voxel (called seed voxel) by connecting it to its spatially nearest neighbors. Then, we represent the BOLD response of each seed voxel in terms of linear combination of the BOLD responses of its p-nearest neighbors. The relationship between a seed voxel and its neighbors is estimated by solving a linear regression problem. The estimated mesh arc weights are used to model local connectivity among the voxels that reside in a spatial neighborhood. Using these weights as features, we train Support Vector Machines and k-Nearest Neighbor classifiers. We test our model on a visual object recognition experiment. In the experimental analysis, we observe that classifiers that employ our features perform better than classifiers that employ raw voxel intensity values, local mesh model weights and features extracted using distance metrics such as Euclidean distance, cosine similarity and Pearson correlation.
机译:无法仅考虑从fMRI测量获得的体素强度值的集合来表示人脑的大规模动态性质。已经观察到,体素之间的连通度为建模认知活动提供了重要信息。而且,空间上接近的体素共同作用以对相同的刺激产生相似的BOLD响应。在这项研究中,我们提出了一个称为局部网格模型的局部网格模型,该模型带有时间测量值(LMM-TM),首先使用在每个体素处测量的空间和时间数据来估计一组体素之间的空间关系,然后将这种关系用于用于大脑解码的连接模型的构建。为此,我们首先在每个体素(称为种子体素)周围构建一个局部网格,方法是将其连接到其空间上最近的邻居。然后,我们用它的p最近邻居的BOLD响应的线性组合来表示每个种子体素的BOLD响应。通过解决线性回归问题,可以估计种子体素及其邻居之间的关系。估计的网格弧权重用于对驻留在空间邻域中的体素之间的局部连通性进行建模。使用这些权重作为特征,我们训练支持向量机和k最近邻分类器。我们在视觉对象识别实验上测试我们的模型。在实验分析中,我们观察到利用我们特征的分类器比利用原始体素强度值,局部网格模型权重和使用距离度量(例如欧几里得距离,余弦相似度和皮尔逊相关性)提取的特征的分类器性能更好。

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