Journal Article10.1007/S10548-007-0019-0
Extracting Information from Cortical Connectivity Patterns Estimated from High Resolution EEG Recordings: A Theoretical Graph Approach
Fabrizio De Vico Fallani,Laura Astolfi,Febo Cincotti,Donatella Mattia,A. Tocci,Maria Grazia Marciani,Alfredo Colosimo,Serenella Salinari,Shangkai Gao,Andrzej Cichocki,Fabio Babiloni +10 more
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TL;DR: In this article, a novel approach addressed to solve the 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, World Wide Web and Proteomics).
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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, WorldWideWeb 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.
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Citations
Social neuroscience and hyperscanning techniques: past, present and future.
Fabio Babiloni,Laura Astolfi +1 more
TL;DR: This paper describes how different brain recording devices have been employed in different experimental paradigms to gain information about the subtle nature of human interactions through hyperscanning methodologies using hemodynamic or neuro-electric modalities.
511
Spectral EEG frontal asymmetries correlate with the experienced pleasantness of TV commercial advertisements.
Giovanni Vecchiato,Jlenia Toppi,Laura Astolfi,Fabrizio De Vico Fallani,Febo Cincotti,Donatella Mattia,Francesco Bez,Fabio Babiloni +7 more
TL;DR: A correlation analysis revealed that the increase of PSD at left frontal sites is negatively correlated with the degree of pleasantness perceived, and the de-synchronization of left alpha frontal activity is positively correlated with judgments of high pleasantness.
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On the use of EEG or MEG brain imaging tools in neuromarketing research
Giovanni Vecchiato,Laura Astolfi,Fabrizio De Vico Fallani,Jlenia Toppi,Fabio Aloise,Francesco Bez,Daming Wei,Wanzeng Kong,Jounging Dai,Febo Cincotti,Donatella Mattia,Fabio Babiloni +11 more
TL;DR: It is noted that temporal and frequency patterns of brain signals are able to provide possible descriptors conveying information about the cognitive and emotional processes in subjects observing commercial advertisements that could be unobtainable through common tools used in standard marketing research.
Defecting or Not Defecting: How to “Read” Human Behavior during Cooperative Games by EEG Measurements
Fabrizio De Vico Fallani,Vincenzo Nicosia,Roberta Sinatra,Laura Astolfi,Febo Cincotti,Donatella Mattia,Christopher Wilke,A. Doud,Vito Latora,Bin He,Fabio Babiloni +10 more
TL;DR: Graph analysis of hyper-brain networks constructed from the EEG scanning of 26 couples of individuals playing the Iterated Prisoner's Dilemma reveals the possibility to predict non-cooperative interactions during the decision-making phase.
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Neuroelectrical Hyperscanning Measures Simultaneous Brain Activity in Humans
Laura Astolfi,Jlenia Toppi,Fabrizio De Vico Fallani,Giovanni Vecchiato,Serenella Salinari,Donatella Mattia,Febo Cincotti,Fabio Babiloni +7 more
TL;DR: Functional connectivity estimated from the couple of brains could suggest, in statistical and mathematical terms, the modelled cortical areas that are correlated in Granger-sense during the solution of a particular task.
184
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