LGAICVMar 3, 2016

Modeling the Sequence of Brain Volumes by Local Mesh Models for Brain Decoding

arXiv:1603.01067v11 citations
Originality Incremental advance
AI Analysis

This work addresses brain decoding for cognitive neuroscience, offering an incremental improvement over existing methods.

The authors tackled the problem of decoding cognitive tasks from fMRI brain volumes by representing sequences as graphs of local meshes, using linear regression to estimate edge weights from spatial and functional neighborhoods, and achieved better performance than state-of-the-art models in visual object recognition and emotional memory retrieval experiments.

We represent the sequence of fMRI (Functional Magnetic Resonance Imaging) brain volumes recorded during a cognitive stimulus by a graph which consists of a set of local meshes. The corresponding cognitive process, encoded in the brain, is then represented by these meshes each of which is estimated assuming a linear relationship among the voxel time series in a predefined locality. First, we define the concept of locality in two neighborhood systems, namely, the spatial and functional neighborhoods. Then, we construct spatially and functionally local meshes around each voxel, called seed voxel, by connecting it either to its spatial or functional p-nearest neighbors. The mesh formed around a voxel is a directed sub-graph with a star topology, where the direction of the edges is taken towards the seed voxel at the center of the mesh. We represent the time series recorded at each seed voxel in terms of linear combination of the time series of its p-nearest neighbors in the mesh. The relationships between a seed voxel and its neighbors are represented by the edge weights of each mesh, and are estimated by solving a linear regression equation. The estimated mesh edge weights lead to a better representation of information in the brain for encoding and decoding of the cognitive tasks. We test our model on a visual object recognition and emotional memory retrieval experiments using Support Vector Machines that are trained using the mesh edge weights as features. In the experimental analysis, we observe that the edge weights of the spatial and functional meshes perform better than the state-of-the-art brain decoding models.

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