Electrophysiological signatures of resting state networks in the human brain
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作者:
Mantini, D.
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G D Annunzio Univ, G D Annunzio Univ Fdn, Inst Adv Biomed Technol, I-66013 Chieti, ItalyG D Annunzio Univ, G D Annunzio Univ Fdn, Inst Adv Biomed Technol, I-66013 Chieti, Italy
Mantini, D.
[1
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Perrucci, M. G.
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机构:G D Annunzio Univ, G D Annunzio Univ Fdn, Inst Adv Biomed Technol, I-66013 Chieti, Italy
Perrucci, M. G.
Del Gratta, C.
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机构:G D Annunzio Univ, G D Annunzio Univ Fdn, Inst Adv Biomed Technol, I-66013 Chieti, Italy
Del Gratta, C.
Romani, G. L.
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Romani, G. L.
Corbetta, M.
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机构:G D Annunzio Univ, G D Annunzio Univ Fdn, Inst Adv Biomed Technol, I-66013 Chieti, Italy
Corbetta, M.
机构:
[1] G D Annunzio Univ, G D Annunzio Univ Fdn, Inst Adv Biomed Technol, I-66013 Chieti, Italy
[2] G D Annunzio Univ, G D Annunzio Univ Fdn, Dept Clin Sci & Bioimaging, I-66013 Chieti, Italy
[3] Washington Univ, Dept Neurol, St Louis, MO 63130 USA
[4] Washington Univ, Dept Radiol, St Louis, MO 63130 USA
Functional neuroimaging and electrophysiological studies have documented a dynamic baseline of intrinsic (not stimulus- or task-evoked) brain activity during resting wakefulness. This baseline is characterized by slow (<0.1 Hz) fluctuations of functional imaging signals that are topographically organized in discrete brain networks, and by much faster (1-80 Hz) electrical oscillations. To investigate the relationship between hemodynamic and electrical oscillations, we have adopted a completely data-driven approach that combines information from simultaneous electro-encephalography (EEG) and functional magnetic resonance imaging (fMRI). Using independent component analysis on the fMRI data, we identified six widely distributed resting state networks. The blood oxygenation level-dependent signal fluctuations associated with each network were correlated with the EEG power variations of delta, theta, alpha, beta, and gamma rhythms. Each functional network was characterized by a specific electrophysiological signature that involved the combination of different brain rhythms. Moreover, the joint EEG/fMRI analysis afforded a finer physiological fractionation of brain networks in the resting human brain. This result supports for the first time in humans the coalescence of several brain rhythms within large-scale brain networks as suggested by biophysical studies.