A method based on the granger causality and graph kernels for discriminating resting state from attentional task
Date
2012-02-27Author
Danesh Shahnazian
Fatemeh, Mokhtari
Hossein-Zadeh, Gholam-Ali
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Show full item recordAbstract
Exploring the directional connections between brain
regions is of great importance in understanding the brain
function. As a method of this exploration, Granger causality is
defined in terms of the amount of improvement in the estimation
of a signal by past samples of another signal (cause). This method
produced reliable results in various applications. In current
study, we use connections of directed graphs as the features for
discriminating two brain states, rest and attentional cueing task,
in a block design fMRI dataset. We apply a support vector
machine (SVM) which is enriched by graph kernels like random
walk, graphlet and sub-tree kernels on directed graphs of
different brain states. Graph kernel methods are a branch of
graph matching methods and have recently been proposed as a
theoretically sound and promising approach to the problem of
graph comparison. They measure the inexact similarity between
graphs. For the first time, we apply graph kernels on graphs of
brain’s effective connectivity. We achieved classification
accuracy of 100% in discrimination of resting state from
attentional task. We also obtain one graph for each brain state
representing causal connections between brain regions. From the
networks obtained for each state, we can infer that caudate is the
source of information in both states and Left ventromedial
prefrontal is the sink of information in the resting state.
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http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=6178960http://dspace.unimap.edu.my/123456789/20724
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