How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network

The application of Graph Theory to the brain connectivity patterns obtained from the analysis of neuroelectrical signals has provided an important step to the interpretation and statistical analysis of such functional networks. The properties of a network are derived from the adjacency matrix descri...

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Main Authors: J. Toppi, F. De Vico Fallani, G. Vecchiato, A. G. Maglione, F. Cincotti, D. Mattia, S. Salinari, F. Babiloni, L. Astolfi
Format: Article
Language:English
Published: Hindawi Limited 2012-01-01
Series:Computational and Mathematical Methods in Medicine
Online Access:http://dx.doi.org/10.1155/2012/130985
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spelling doaj-7b61d841b67c40c49b4f5c5aafca385e2020-11-25T00:36:25ZengHindawi LimitedComputational and Mathematical Methods in Medicine1748-670X1748-67182012-01-01201210.1155/2012/130985130985How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity NetworkJ. Toppi0F. De Vico Fallani1G. Vecchiato2A. G. Maglione3F. Cincotti4D. Mattia5S. Salinari6F. Babiloni7L. Astolfi8Department of Computer, Control, and Management Engineering, Sapienza University of Rome, 00185 Rome, ItalyNeuroelectrical Imaging and BCI Laboratory, Fondazione Santa Lucia Hospital, 00179 Rome, ItalyNeuroelectrical Imaging and BCI Laboratory, Fondazione Santa Lucia Hospital, 00179 Rome, ItalyNeuroelectrical Imaging and BCI Laboratory, Fondazione Santa Lucia Hospital, 00179 Rome, ItalyDepartment of Computer, Control, and Management Engineering, Sapienza University of Rome, 00185 Rome, ItalyNeuroelectrical Imaging and BCI Laboratory, Fondazione Santa Lucia Hospital, 00179 Rome, ItalyDepartment of Computer, Control, and Management Engineering, Sapienza University of Rome, 00185 Rome, ItalyNeuroelectrical Imaging and BCI Laboratory, Fondazione Santa Lucia Hospital, 00179 Rome, ItalyDepartment of Computer, Control, and Management Engineering, Sapienza University of Rome, 00185 Rome, ItalyThe application of Graph Theory to the brain connectivity patterns obtained from the analysis of neuroelectrical signals has provided an important step to the interpretation and statistical analysis of such functional networks. The properties of a network are derived from the adjacency matrix describing a connectivity pattern obtained by one of the available functional connectivity methods. However, no common procedure is currently applied for extracting the adjacency matrix from a connectivity pattern. To understand how the topographical properties of a network inferred by means of graph indices can be affected by this procedure, we compared one of the methods extensively used in Neuroscience applications (i.e. fixing the edge density) with an approach based on the statistical validation of achieved connectivity patterns. The comparison was performed on the basis of simulated data and of signals acquired on a polystyrene head used as a phantom. The results showed (i) the importance of the assessing process in discarding the occurrence of spurious links and in the definition of the real topographical properties of the network, and (ii) a dependence of the small world properties obtained for the phantom networks from the spatial correlation of the neighboring electrodes.http://dx.doi.org/10.1155/2012/130985
collection DOAJ
language English
format Article
sources DOAJ
author J. Toppi
F. De Vico Fallani
G. Vecchiato
A. G. Maglione
F. Cincotti
D. Mattia
S. Salinari
F. Babiloni
L. Astolfi
spellingShingle J. Toppi
F. De Vico Fallani
G. Vecchiato
A. G. Maglione
F. Cincotti
D. Mattia
S. Salinari
F. Babiloni
L. Astolfi
How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network
Computational and Mathematical Methods in Medicine
author_facet J. Toppi
F. De Vico Fallani
G. Vecchiato
A. G. Maglione
F. Cincotti
D. Mattia
S. Salinari
F. Babiloni
L. Astolfi
author_sort J. Toppi
title How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network
title_short How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network
title_full How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network
title_fullStr How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network
title_full_unstemmed How the Statistical Validation of Functional Connectivity Patterns Can Prevent Erroneous Definition of Small-World Properties of a Brain Connectivity Network
title_sort how the statistical validation of functional connectivity patterns can prevent erroneous definition of small-world properties of a brain connectivity network
publisher Hindawi Limited
series Computational and Mathematical Methods in Medicine
issn 1748-670X
1748-6718
publishDate 2012-01-01
description The application of Graph Theory to the brain connectivity patterns obtained from the analysis of neuroelectrical signals has provided an important step to the interpretation and statistical analysis of such functional networks. The properties of a network are derived from the adjacency matrix describing a connectivity pattern obtained by one of the available functional connectivity methods. However, no common procedure is currently applied for extracting the adjacency matrix from a connectivity pattern. To understand how the topographical properties of a network inferred by means of graph indices can be affected by this procedure, we compared one of the methods extensively used in Neuroscience applications (i.e. fixing the edge density) with an approach based on the statistical validation of achieved connectivity patterns. The comparison was performed on the basis of simulated data and of signals acquired on a polystyrene head used as a phantom. The results showed (i) the importance of the assessing process in discarding the occurrence of spurious links and in the definition of the real topographical properties of the network, and (ii) a dependence of the small world properties obtained for the phantom networks from the spatial correlation of the neighboring electrodes.
url http://dx.doi.org/10.1155/2012/130985
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