A Novel Brain Decoding Method: a Correlation Network Framework for Revealing Brain Connections

12/01/2017
by   Siyu Yu, et al.
0

Brain decoding is a hot spot in cognitive science, which focuses on reconstructing perceptual images from brain activities. Analyzing the correlations of collected data from human brain activities and representing activity patterns are two problems in brain decoding based on functional magnetic resonance imaging (fMRI) signals. However, existing correlation analysis methods mainly focus on the strength information of voxel, which reveals functional connectivity in the cerebral cortex. They tend to neglect the structural information that implies the intracortical or intrinsic connections; that is, structural connectivity. Hence, the effective connectivity inferred by these methods is relatively unilateral. Therefore, we proposed a correlation network (CorrNet) framework that could be flexibly combined with diverse pattern representation models. In the CorrNet framework, the topological correlation was introduced to reveal structural information. Rich correlations were obtained, which contributed to specifying the underlying effective connectivity. We also combined the CorrNet framework with a linear support vector machine (SVM) and a dynamic evolving spike neuron network (SNN) for pattern representation separately, thus providing a novel method for decoding cognitive activity patterns. Experimental results verified the reliability and robustness of our CorrNet framework and demonstrated that the new method achieved significant improvement in brain decoding over comparable methods.

READ FULL TEXT

page 2

page 4

page 8

page 9

research
07/22/2018

Modeling Brain Networks with Artificial Neural Networks

In this study, we propose a neural network approach to capture the funct...
research
04/15/2019

Critical elements for connectivity analysis of brain networks

In recent years, new and important perspectives were introduced in the f...
research
12/15/2019

Generalized reliability based on distances

The intraclass correlation coefficient (ICC) is a classical index of mea...
research
05/10/2012

Mesh Learning for Classifying Cognitive Processes

A relatively recent advance in cognitive neuroscience has been multi-vox...
research
05/17/2023

Dynamic Structural Brain Network Construction by Hierarchical Prototype Embedding GCN using T1-MRI

Constructing structural brain networks using T1-weighted magnetic resona...
research
02/23/2014

Discriminative Functional Connectivity Measures for Brain Decoding

We propose a statistical learning model for classifying cognitive proces...
research
11/07/2019

Dynamic Connectivity without Sliding Windows

Objective: Sliding and tapered sliding window methods are the most often...

Please sign up or login with your details

Forgot password? Click here to reset