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Dive into the research topics where Diego Cosmelli is active.

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Featured researches published by Diego Cosmelli.


NeuroImage | 2004

Evaluation of different measures of functional connectivity using a neural mass model

Olivier David; Diego Cosmelli; K. J. Friston

We use a neural mass model to address some important issues in characterising functional integration among remote cortical areas using magnetoencephalography or electroencephalography (MEG or EEG). In a previous paper [Neuroimage (in press)], we showed how the coupling among cortical areas can modulate the MEG or EEG spectrum and synchronise oscillatory dynamics. In this work, we exploit the model further by evaluating different measures of statistical dependencies (i.e., functional connectivity) among MEG or EEG signals that are mediated by neuronal coupling. We have examined linear and nonlinear methods, including phase synchronisation. Our results show that each method can detect coupling but with different sensitivity profiles that depended on (i) the frequency specificity of the interaction (broad vs. narrow band) and (ii) the nature of the coupling (linear vs. nonlinear). Our analyses suggest that methods based on the concept of generalised synchronisation are the most sensitive when interactions encompass different frequencies (broadband analyses). In the context of narrow-band analyses, mutual information was found to be the most sensitive way to disclose frequency-specific couplings. Measures based on generalised synchronisation and phase synchronisation are the most sensitive to nonlinear coupling. These different sensitivity profiles mean that the choice of coupling measures can have dramatic effects on the cortical networks identified. We illustrate this using a single-subject MEG study of binocular rivalry and highlight the greater recovery of statistical dependencies among cortical areas in the beta band when mutual information is used.


NeuroImage | 2004

Waves of consciousness: ongoing cortical patterns during binocular rivalry

Diego Cosmelli; Olivier David; Jean-Philippe Lachaux; Jacques Martinerie; Line Garnero; Bernard Renault; Francisco J. Varela

We present here ongoing patterns of distributed brain synchronous activity that correlate with the spontaneous flow of perceptual dominance during binocular rivalry. Specific modulation of the magnetoencephalographic (MEG) response evoked during conscious perception of a frequency-tagged stimulus was evidenced throughout rivalry. Estimation of the underlying cortical sources revealed, in addition to strong bilateral striate and extrastriate visual cortex activation, parietal, temporal pole and frontal contributions. Cortical activity was significantly modulated concomitantly to perceptual alternations in visual cortex, medial parietal and left frontal regions. Upon dominance, coactivation of occipital and frontal regions, including anterior cingulate and medial frontal areas, was established. This distributed cortical network, as measured by phase synchrony in the frequency tag band, was dynamically modulated in concert with the perceptual dominance of the tagged stimulus. While the anteroposterior pattern was recurrent through subjects, individual variations in the extension of the network were apparent.


IEEE Transactions on Biomedical Engineering | 2002

Estimation of neural dynamics from MEG/EEG cortical current density maps: application to the reconstruction of large-scale cortical synchrony

Olivier David; Line Garnero; Diego Cosmelli; Francisco J. Varela

There is a growing interest in elucidating the role of specific patterns of neural dynamics-such as transient synchronization between distant cell assemblies-in brain functions. Magnetoencephalography (MEG)/electroencephalography (EEG) recordings consist in the spatial integration of the activity from large and multiple remotely located populations of neurons. Massive diffusive effects and poor signal-to-noise ratio (SNR) preclude the proper estimation of indices related to cortical dynamics from nonaveraged MEG/EEG surface recordings. Source localization from MEG/EEG surface recordings with its excellent time resolution could contribute to a better understanding of the working brain. We propose a robust and original approach to the MEG/EEG distributed inverse problem to better estimate neural dynamics of cortical sources. For this, the surrogate data method is introduced in the MEG/EEG inverse problem framework. We apply this approach on nonaveraged data with poor SNR using the minimum norm estimator and find source localization results weakly sensitive to noise. Surrogates allow the reduction of the source space in order to reconstruct MEG/EEG data with reduced biases in both source localization and time-series dynamics. Monte Carlo simulations and results obtained from real MEG data indicate it is possible to estimate noninvasively an important part of cortical source locations and dynamic and, therefore, to reveal brain functional networks.


Archive | 2005

Cognition and the Brain: Neurophenomenology: An Introduction for Neurophilosophers

Evan Thompson; Antoine Lutz; Diego Cosmelli

Introduction One of the major challenges facing neuroscience today is to provide an explanatory framework that accounts for both the subjectivity and neurobiology of consciousness. Although neuroscientists have supplied neural models of various aspects of consciousness, and have uncovered evidence about the neural correlates of consciousness (or NCCs), there nonetheless remains an ‘explanatory gap’ in our understanding of how to relate neurobiological and phenomenological features of consciousness. This explanatory gap is conceptual, epistemological, and methodological: An adequate conceptual framework is still needed to account for phenomena that (ⅰ) have a first-person, subjective-experiential or phenomenal character; (ⅱ) are (usually) reportable and describable (in humans); and (ⅲ) are neurobiologically realized. The conscious subject plays an unavoidable epistemological role in characterizing the explanandum of consciousness through first-person descriptive reports. The experimentalist is then able to link first-person data and third-person data. Yet the generation of first-person data raises difficult epistemological issues about the relation of second-order awareness or meta-awareness to first-order experience (e.g., whether second-order attention to first-order experience inevitably affects the intentional content and/or phenomenal character of first-order experience). The need for first-person data also raises methodological issues (e.g., whether subjects should be naive or phenomenologically trained). Neurophenomenology is a neuroscientific research program whose aim is to make progress on these issues associated with the explanatory gap. In this chapter we give an overview of the neurophenomenological approach to the study of consciousness.


NeuroImage | 2003

A multitrial analysis for revealing significant corticocortical networks in magnetoencephalography and electroencephalography

Olivier David; Diego Cosmelli; Line Garnero

We present an MEG/EEG framework to reveal statistically significant brain areas engaged in the same cognitive process across trials without resort to averaging procedures. The variability of neuronal responses is assumed to take place only in the reconstructed time series of cortical sources and not in their positions. This hypothesis allows the use of the surrogate data method to detect recurrently active brain areas across trials adjusted with any cortically constrained focal MEEG inverse solution. Results obtained from synthetic data show that considering several trials enhances the accuracy of the source localisation. We apply this approach on MEG data recorded during a simple visual stimulation. The considered stimulus is frequency tagged in order to reveal the neural network correlated to its perception using phase synchronisation analysis. The results show consistent patterns of distributed synchronous networks centred on occipital areas.


IEEE Transactions on Biomedical Engineering | 2008

Multivariate Reconstruction of Functional Networks From Cortical Sources Dynamics in MEG/EEG

Anael Dossevi; Diego Cosmelli; Line Garnero; Habib Ammari

In this paper, we present a simple method to find networks of time-correlated brain sources, using a singular value decomposition (SVD) analysis of the source matrix estimated after any linear distributed inverse problem in magnetoencephalography (MEG) and electroencephalography (EEG). Despite the high dimension of the source space, our method allows for the rapid computation of the source matrix. In order to do this, we use the linear relationship between sensors and sources, and show that the SVD can be calculated through a simple and fast computation. We show that this method allows the estimation of one or several global networks of correlated sources without calculating a coupling coefficient between all pairs of sources. A series of simulations studies were performed to estimate the efficiency of the method. In order to illustrate the validity of this approach in experimental conditions, we used real MEG data from a visual stimulation task on one test subject and estimated, in different time windows of interest, functional networks of correlated sources.


Neurophysiologie Clinique-clinical Neurophysiology | 2002

Estimating the time-course of coherence between single-trial brain signals: an introduction to wavelet coherence.

Jean-Philippe Lachaux; Antoine Lutz; David Rudrauf; Diego Cosmelli; Michel Le Van Quyen; Jacques Martinerie; Francisco J. Varela


Biological Research | 2003

From autopoiesis to neurophenomenology: Francisco Varela's exploration of the biophysics of being

David Rudrauf; Antoine Lutz; Diego Cosmelli; Jean-Philippe Lachaux; Michel Le Van Quyen


Archive | 2007

The Cambridge Handbook of Consciousness: Neurodynamical Approaches to Consciousness

Diego Cosmelli; Jean-Philippe Lachaux; Evan Thompson


Archive | 2007

Neurodynamics of consciousness

Diego Cosmelli; Jean-Philippe Lachaux; Evan Thompson

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Line Garnero

Centre national de la recherche scientifique

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Francisco J. Varela

Centre national de la recherche scientifique

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Jacques Martinerie

Centre national de la recherche scientifique

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Antoine Lutz

University of Wisconsin-Madison

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Bernard Renault

Centre national de la recherche scientifique

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Sylvain Baillet

Montreal Neurological Institute and Hospital

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Jacques Martinerie

Centre national de la recherche scientifique

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