International audienceGraph theory is a powerful mathematical tool recently introduced in neuroscience field for quantitatively describing the main properties of investigated connectivity networks. Despite the technical advancements provided in the last few years, further investigations are needed for overcoming actual limitations in the field. In fact, the absence of a common procedure currently applied for the extraction of the adjacency matrix from a connectivity pattern has been leading to low consistency and reliability of ghaph indexes among the investigated population. In this paper we proposed a new approach for adjacency matrix extraction based on a statistical threshold as valid alternative to empirical approaches, extensively use...
The identification of the organization principles on the basis of the brain connectivity can be perf...
International audienceFinding the common structural brain connectivity network for a given populatio...
We study an adaptive statistical approach to analyze brain networks represented by brain connection ...
International audienceGraph theory is a powerful mathematical tool recently introduced in neuroscien...
Graph theory is a powerful mathematical tool recently introduced in neuroscience field for quantitat...
Copyright © 2012 J. Toppi et al. This is an open access article distributed under the Creative Commo...
International audienceThe application of Graph Theory to the brain connectivity patterns obtained fr...
The application of Graph Theory to the brain connectivity patterns obtained from the analysis of neu...
The application of Graph Theory to the brain connectivity patterns obtained from the analysis of neu...
International audienceNetwork analysis provides a rich framework to model complex phenomena, such as...
Graph theory deterministically models networks as sets of vertices, which are linked by connections....
Graph theory deterministically models networks as sets of vertices, which are linked by connections....
<div><p>Graph theory deterministically models networks as sets of vertices, which are linked by conn...
The goal of many neuroimaging studies is to better understand how the functional connectivity struct...
The identification of the organization principles on the basis of the brain connectivity can be perf...
International audienceFinding the common structural brain connectivity network for a given populatio...
We study an adaptive statistical approach to analyze brain networks represented by brain connection ...
International audienceGraph theory is a powerful mathematical tool recently introduced in neuroscien...
Graph theory is a powerful mathematical tool recently introduced in neuroscience field for quantitat...
Copyright © 2012 J. Toppi et al. This is an open access article distributed under the Creative Commo...
International audienceThe application of Graph Theory to the brain connectivity patterns obtained fr...
The application of Graph Theory to the brain connectivity patterns obtained from the analysis of neu...
The application of Graph Theory to the brain connectivity patterns obtained from the analysis of neu...
International audienceNetwork analysis provides a rich framework to model complex phenomena, such as...
Graph theory deterministically models networks as sets of vertices, which are linked by connections....
Graph theory deterministically models networks as sets of vertices, which are linked by connections....
<div><p>Graph theory deterministically models networks as sets of vertices, which are linked by conn...
The goal of many neuroimaging studies is to better understand how the functional connectivity struct...
The identification of the organization principles on the basis of the brain connectivity can be perf...
International audienceFinding the common structural brain connectivity network for a given populatio...
We study an adaptive statistical approach to analyze brain networks represented by brain connection ...