Over the last 20 years, a body of techniques known as high resolution EEG has allowed precise estimation of cortical activity from non-invasive EEG measurements. The availability of cortical waveforms from non-invasive EEG recordings allows to have not only the level of activation within a single region of interest (ROI) during a particular task, but also to estimate the causal relationships among activities of several cortical regions. However, interpreting resulting connectivity patterns is still an open issue, due to the difficulty to provide an objective measure of their properties across different subjects or groups. A novel approach addressed to solve this difficulty consists in manipulating these functional brain networks as graph objects for which a large body of indexes and tools are available in literature and already tested for complex networks at different levels of scale (Social, WorldWide-Web and Proteomics). In the present work, we would like to show the suitability of such approach, showing results obtained comparing separately two groups of subjects during the same motor task and two different motor tasks performed by the same group. In the first experiment two groups of subjects (healthy and spinal cord injured patients) were compared when they moved and attempted to move simultaneously their right foot and lips, respectively. The contrast between the foot-lips movement and the simple foot movement was addressed in the second experiment for the population of the healthy subjects. For both the experiments, the main question is whether the "architecture" of the functional connectivity networks obtained could show properties that are different in the two groups or in the two tasks. All the functional connectivity networks gathered in the two experiments showed ordered properties and significant differences from "random" networks having the same characteristic sizes. The proposed approach, based on the use of indexes derived from graph theory, can apply to cerebral connectivity patterns estimated not only from the EEG signals but also from different brain imaging methods.

Extracting information from cortical connectivity patterns estimated from high resolution EEG recordings: A theoretical graph approach / DE VICO FALLANI, Fabrizio; Astolfi, Laura; Cincotti, Febo; Donatella, Mattia; Andrea, Tocci; Maria Grazia, Marciani; Colosimo, Alfredo; Salinari, Serenella; Shangkai, Gao; Andrzej, Cichocki; Babiloni, Fabio. - In: BRAIN TOPOGRAPHY. - ISSN 0896-0267. - 19:3(2007), pp. 125-136. [10.1007/s10548-007-0019-0]

Extracting information from cortical connectivity patterns estimated from high resolution EEG recordings: A theoretical graph approach

DE VICO FALLANI, FABRIZIO;ASTOLFI, LAURA;CINCOTTI, FEBO;COLOSIMO, Alfredo;SALINARI, Serenella;BABILONI, Fabio
2007

Abstract

Over the last 20 years, a body of techniques known as high resolution EEG has allowed precise estimation of cortical activity from non-invasive EEG measurements. The availability of cortical waveforms from non-invasive EEG recordings allows to have not only the level of activation within a single region of interest (ROI) during a particular task, but also to estimate the causal relationships among activities of several cortical regions. However, interpreting resulting connectivity patterns is still an open issue, due to the difficulty to provide an objective measure of their properties across different subjects or groups. A novel approach addressed to solve this difficulty consists in manipulating these functional brain networks as graph objects for which a large body of indexes and tools are available in literature and already tested for complex networks at different levels of scale (Social, WorldWide-Web and Proteomics). In the present work, we would like to show the suitability of such approach, showing results obtained comparing separately two groups of subjects during the same motor task and two different motor tasks performed by the same group. In the first experiment two groups of subjects (healthy and spinal cord injured patients) were compared when they moved and attempted to move simultaneously their right foot and lips, respectively. The contrast between the foot-lips movement and the simple foot movement was addressed in the second experiment for the population of the healthy subjects. For both the experiments, the main question is whether the "architecture" of the functional connectivity networks obtained could show properties that are different in the two groups or in the two tasks. All the functional connectivity networks gathered in the two experiments showed ordered properties and significant differences from "random" networks having the same characteristic sizes. The proposed approach, based on the use of indexes derived from graph theory, can apply to cerebral connectivity patterns estimated not only from the EEG signals but also from different brain imaging methods.
2007
degree distributions; digraph; dtf; efficiency; foot movement; high resolution eeg; small-world; spinal cord injured
01 Pubblicazione su rivista::01a Articolo in rivista
Extracting information from cortical connectivity patterns estimated from high resolution EEG recordings: A theoretical graph approach / DE VICO FALLANI, Fabrizio; Astolfi, Laura; Cincotti, Febo; Donatella, Mattia; Andrea, Tocci; Maria Grazia, Marciani; Colosimo, Alfredo; Salinari, Serenella; Shangkai, Gao; Andrzej, Cichocki; Babiloni, Fabio. - In: BRAIN TOPOGRAPHY. - ISSN 0896-0267. - 19:3(2007), pp. 125-136. [10.1007/s10548-007-0019-0]
File allegati a questo prodotto
File Dimensione Formato  
VE_2007_11573-357886.pdf

solo gestori archivio

Tipologia: Versione editoriale (versione pubblicata con il layout dell'editore)
Licenza: Tutti i diritti riservati (All rights reserved)
Dimensione 460 kB
Formato Adobe PDF
460 kB Adobe PDF   Contatta l'autore

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/357886
 Attenzione

Attenzione! I dati visualizzati non sono stati sottoposti a validazione da parte dell'ateneo

Citazioni
  • ???jsp.display-item.citation.pmc??? 10
  • Scopus 34
  • ???jsp.display-item.citation.isi??? 33
social impact