E. Amico, Mapping the functional connectome traits of levels of consciousness, NeuroImage, vol.148, pp.201-211, 2017.

J. Annen, Function-structure connectivity in patients with severe brain injury as measured by MRI-DWI and FDG-PET. Hum, Brain Mapp, vol.37, pp.3707-3720, 2016.

J. Annen, Regional brain volumetry and brain function in severely braininjured patients, Ann. Neurol, vol.83, pp.842-853, 2018.

D. S. Bassett, Dynamic reconfiguration of human brain networks during learning, Proc. Natl. Acad. Sci, vol.108, pp.7641-7646, 2011.

D. S. Bassett, Robust detection of dynamic community structure in networks, Chaos: Interdisc. J. Nonlinear Sci, vol.23, p.13142, 2013.

D. S. Bassett, Learning-induced autonomy of sensorimotor systems, Nat. Neurosci, vol.18, pp.744-751, 2015.

V. D. Blondel, Fast unfolding of communities in large networks, J. Stat. Mech.: Theory Exp, 2008.
URL : https://hal.archives-ouvertes.fr/hal-01146070

Y. G. Bodien, C. Chatelle, and B. L. Edlow, Functional networks in disorders of consciousness, Seminars in Neurology, vol.37, pp.485-502, 2017.

M. Boly, Brain connectivity in disorders of consciousness, Brain Connectivity, vol.2, pp.1-10, 2012.

M. J. Brookes, M. W. Woolrich, and G. R. Barnes, Measuring functional connectivity in MEG: a multivariate approach insensitive to linear source leakage, Neuroimage, vol.63, pp.910-920, 2012.

C. Brunner, Volume conduction influences scalp-based connectivity estimates, Front. Comput. Neurosci, vol.10, 2016.

E. Bullmore and O. Sporns, Complex brain networks: graph theoretical analysis of structural and functional systems, Nat. Rev. Neurosci, vol.10, pp.186-198, 2009.

A. G. Casali, A theoretically based index of consciousness independent of sensory processing and behavior, Sci. Transl. Med, vol.5, 2013.

S. Casarotto, Stratification of unresponsive patients by an independently validated index of brain complexity, Ann. Neurol, vol.80, pp.718-729, 2016.

S. Chennu, Spectral signatures of reorganised brain networks in disorders of consciousness, PLoS Comput. Biol, vol.10, p.1003887, 2014.

S. Chennu, Brain networks predict metabolism, diagnosis and prognosis at the bedside in disorders of consciousness, Brain, vol.140, pp.2120-2132, 2017.

G. L. Colclough, A symmetric multivariate leakage correction for MEG connectomes, NeuroImage, vol.117, pp.439-448, 2015.

J. S. Crone, Altered network properties of the fronto-parietal network and the thalamus in impaired consciousness, NeuroImage: Clinical, vol.4, pp.240-248, 2014.

F. De-pasquale, Temporal dynamics of spontaneous MEG activity in brain networks, Proc. Natl. Acad. Sci, vol.107, pp.6040-6045, 2010.

A. Delorme and S. Makeig, EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis, J. Neurosci. Methods, vol.134, pp.9-21, 2004.

A. Demertzi, Multiple fMRI system-level baseline connectivity is disrupted in patients with consciousness alterations, Cortex, vol.52, pp.35-46, 2014.

A. Demertzi, Intrinsic functional connectivity differentiates minimally conscious from unresponsive patients, Brain, vol.138, pp.2619-2631, 2015.

R. S. Desikan, An automated labeling system for subdividing the human cerebral cortex on MRI scans into gyral based regions of interest, Neuroimage, vol.31, pp.968-980, 2006.

D. Perri and C. , Neural correlates of consciousness in patients who have emerged from a minimally conscious state: a cross-sectional multimodal imaging study, Lancet Neurol, vol.15, pp.830-842, 2016.

L. Douw, Consistency of magnetoencephalographic functional, Clinical, vol.23, p.101841, 2018.

, and network reconstruction using a template versus native MRI for co-registration, Hum. Brain Mapp, vol.39, pp.104-119

D. A. Engemann, Robust EEG-based cross-site and cross-protocol classification of states of consciousness, Brain, vol.141, pp.3179-3192, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01887793

D. Fernández-espejo, A role for the default mode network in the bases of disorders of consciousness, Ann. Neurol, vol.72, pp.335-343, 2012.

B. Fischl, FreeSurfer, Neuroimage, vol.62, pp.774-781, 2012.

A. Fornito, A. Zalesky, and E. Bullmore, Rhythms for cognition: communication through coherence, Neuron, vol.88, pp.220-235, 2015.

K. A. Garrison, The (in) stability of functional brain network measures across thresholds, Neuroimage, vol.118, pp.651-661, 2015.

J. T. Giacino, The minimally conscious state definition and diagnostic criteria, Neurology, vol.58, pp.349-353, 2002.

J. T. Giacino, K. Kalmar, and J. Whyte, The JFK coma recovery scale-revised: measurement characteristics and diagnostic utility, Arch. Phys. Med. Rehabil, vol.85, pp.2020-2029, 2004.

J. T. Giacino, Behavioral assessment in patients with disorders of consciousness: gold standard or fool's gold? Prog, Brain Res, vol.177, pp.33-48, 2009.

J. T. Giacino, Disorders of consciousness after acquired brain injury: the state of the science, Nat. Rev. Neurol, vol.10, pp.99-114, 2014.

B. H. Good, Y. De-montjoye, A. Clauset, O. Gosseries, N. D. Zasler et al., Recent advances in disorders of consciousness: focus on the diagnosis, Phys. Rev. E, vol.81, pp.1141-1150, 2010.

J. A. Gottfried, J. O'doherty, and R. J. Dolan, Encoding predictive reward value in human amygdala and orbitofrontal cortex, Science, vol.301, pp.1104-1107, 2003.

A. Gramfort, OpenMEEG: opensource software for quasistatic bioelectromagnetics, Biomed. Eng. Online, vol.9, p.45, 2010.
URL : https://hal.archives-ouvertes.fr/inria-00467061

R. Guimera and L. A. Amaral, Functional cartography of complex metabolic networks, Nature, vol.433, pp.895-900, 2005.

M. Hassan and F. Wendling, Electroencephalography source connectivity: aiming for high resolution of brain networks in time and space, IEEE Signal Process. Mag, vol.35, pp.81-96, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01807119

M. Hassan, EEG source connectivity analysis: from dense array recordings to brain networks, PLoS One, vol.9, 2014.
URL : https://hal.archives-ouvertes.fr/inserm-01082226

M. Hassan, Dynamic reorganization of functional brain networks during picture naming, Cortex, vol.73, pp.276-288, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01222833

M. Hassan, Identification of interictal epileptic networks from dense-EEG, Brain Topogr, pp.1-17, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01446562

J. F. Hipp, Large-scale cortical correlation structure of spontaneous oscillatory activity, Nat. Neurosci, vol.15, p.884, 2012.

C. J. Holmes, Enhancement of MR images using registration for signal averaging, J. Comput. Assist. Tomogr, vol.22, pp.324-333, 1998.

A. R. Jonckheere, A distribution-free k-sample test against ordered alternatives, Biometrika, vol.41, pp.133-145, 1954.

A. Kabbara, The dynamic functional core network of the human brain at rest, Sci. Rep, vol.7, 2017.
URL : https://hal.archives-ouvertes.fr/inserm-01548258

A. Kabbara, Reduced integration and improved segregation of functional brain networks in Alzheimer's disease, J. Neural Eng, vol.15, p.26023, 2018.

T. Kjaer, Precuneus-prefrontal activity during awareness of visual verbal stimuli, Conscious. Cogn, vol.10, pp.356-365, 2001.

J. Lachaux, Measuring phase synchrony in brain signals, Hum. Brain Mapp, vol.8, pp.194-208, 1999.

J. Lachaux, Studying single-trials of phase synchronous activity in the brain, Int. J. Bifurcation Chaos, vol.10, pp.2429-2439, 2000.

M. Lai, A comparison between scalp-and source-reconstructed EEG networks, Sci. Rep, vol.8, p.12269, 2018.

A. Lancichinetti and S. Fortunato, Consensus clustering in complex networks, Sci. Rep, vol.2, p.336, 2012.

S. Laureys, Unresponsive wakefulness syndrome: a new name for the vegetative state or apallic syndrome, BMC Med, vol.8, p.68, 2010.

J. E. Lisman and O. Jensen, The theta-gamma neural code, Neuron, vol.77, pp.1002-1016, 2013.

J. Long, Distinct interactions between fronto-parietal and default mode networks in impaired consciousness, Sci. Rep, vol.6, p.38866, 2016.

S. Mehrkanoon, M. Breakspear, and T. W. Boonstra, Low-dimensional dynamics of resting-state cortical activity, Brain Topogr, vol.27, pp.338-352, 2014.

L. Melloni, Synchronization of neural activity across cortical areas correlates with conscious perception, J. Neurosci, vol.27, pp.2858-2865, 2007.

A. Mheich, SimiNet: a novel method for quantifying brain network similarity, IEEE Trans. Pattern Anal. Mach. Intell, vol.40, pp.2238-2249, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01591250

M. M. Monti, S. Laureys, and A. M. Owen, The vegetative state, Bmj, vol.341, p.3765, 2010.

P. J. Mucha, Community structure in time-dependent, multiscale, and multiplex networks, Science, vol.328, pp.876-878, 2010.

A. Naro, Moving toward conscious pain processing detection in chronic disorders of consciousness: anterior cingulate cortex neuromodulation, J. Pain, vol.16, pp.1022-1031, 2015.

A. Naro, How far can we go in chronic disorders of consciousness differential diagnosis? The use of neuromodulation in detecting internal and external awareness, Neuroscience, vol.349, pp.165-173, 2017.

A. M. Owen, N. D. Schiff, and S. Laureys, A new era of coma and consciousness science, Prog. Brain Res, vol.177, pp.399-411, 2009.

J. M. Palva, Ghost interactions in MEG/EEG source space: a note of caution on inter-areal coupling measures, Neuroimage, vol.173, pp.632-643, 2018.

R. D. Pascual-marqui, Innovations Orthogonalization: A Solution to the Major Pitfalls of EEG/MEG "Leakage Correction, 2017.

Y. Ren, Effective connectivity of the anterior hippocampus predicts recollection confidence during natural memory retrieval, Nat. Commun, vol.9, p.4875, 2018.

J. Rizkallah, Dynamic reshaping of functional brain networks during visual object recognition, J. Neural Eng, vol.15, p.56022, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01848019

P. H. Rudebeck and E. A. Murray, The orbitofrontal oracle: cortical mechanisms for the prediction and evaluation of specific behavioral outcomes, Neuron, vol.84, pp.1143-1156, 2014.

N. D. Schiff, Cognitive motor dissociation following severe brain injuries, JAMA Neurol, vol.72, pp.1413-1415, 2015.

N. D. Schiff and J. J. Fins, Brain death and disorders of consciousness, Curr. Biol, vol.26, pp.572-576, 2016.

J. M. Schoffelen and J. Gross, Source connectivity analysis with MEG and EEG. Hum. Brain Mapp, vol.30, pp.1857-1865, 2009.

J. D. Sitt, Large scale screening of neural signatures of consciousness in patients in a vegetative or minimally conscious state, Brain, vol.137, pp.2258-2270, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01865883

J. Stender, Diagnostic precision of PET imaging and functional MRI in disorders of consciousness: a clinical validation study, Lancet, vol.384, pp.514-522, 2014.

F. Tadel, Brainstorm: a user-friendly application for MEG/EEG analysis, Comput. Intell. Neurosci, vol.8, 2011.

T. Terpstra, The asymptotic normality and consistency of Kendall's test against trend, when ties arepresent in one ranking, Proc. Kon. Ned. Akad. v. Wetensch. A, vol.55, pp.327-333, 1952.

A. Thibaut, tDCS in patients with disorders of consciousness: sham-controlled randomized double-blind study, Neurology, vol.82, pp.1112-1118, 2014.

G. Tononi, An information integration theory of consciousness, BMC Neurosci, vol.5, p.42, 2004.

G. Tononi, Integrated information theory: from consciousness to its physical substrate, Nat. Rev. Neurosci, vol.17, p.450, 2016.

F. Van-de-steen, Proportional thresholding in resting-state fMRI functional connectivity networks and consequences for patient-control connectome studies: issues and recommendations, Neuroimage, vol.152, pp.437-449, 2016.

M. Vinck, An improved index of phase-synchronization for electrophysiological data in the presence of volume-conduction, noise and sample-size bias, Neuroimage, vol.55, pp.1548-1565, 2011.

B. A. Vogt and S. Laureys, Posterior cingulate, precuneal and retrosplenial cortices: cytology and components of the neural network correlates of consciousness. Prog, Brain Res, vol.150, pp.205-217, 2005.

S. Wannez, The repetition of behavioral assessments in diagnosis of disorders of consciousness, Ann. Neurol, vol.81, pp.883-889, 2017.

D. J. Watts and S. H. Strogatz, Collective dynamics of 'small-world'networks, Nature, vol.393, pp.440-442, 1998.

S. Zhang and R. L. Chiang-shan, Functional connectivity mapping of the human precuneus by resting state fMRI, Neuroimage, vol.59, pp.3548-3562, 2012.

J. Rizkallah, Clinical, vol.23, p.101841, 2019.