Rhythm of brain activities represents oscillations of postsynaptic potentials in neocortex,therefore it can serve as an indicator of the brain activity state.In order to check the connectivity of brain rhythm,this paper develops a new method of constructing functional network based on phase synchronization.Electroencephalogram(EEG) data were collected while subjects looking at a green cross in two states,performing an attention task and relaxing with eyes-open.The EEG from these two states was filtered by three band-pass filters to obtain signals of theta(4-7 Hz),alpha(8-13 Hz) and beta(14-30 Hz) bands.Mean resultant length was used to estimate strength of phase synchronization in three bands to construct networks of both states,and mean degree K and cluster coefficient C of networks were calculated as a function of threshold.The result shows higher cluster coefficient in the attention state than in the eyes-open state in all three bands,suggesting that cluster coefficient reflects brain state.In addition,an obvious fronto-parietal network is found in the attention state,which is a well-known attention network.These results indicate that attention modulates the fronto-parietal connectivity in different modes as compared with the eyes-open state.Taken together this method is an objective and important tool to study the properties of neural networks of brain rhythm.
Rhythm of brain activities represents oscillations of postsynaptic potentials in neocortex, therefore it can serve as an indicator of the brain activity state. In order to check the connectivity of brain rhythm, this paper develops a new method of constructing functional network based on phase synchronization. Electroencephalogram (EEG) data were collected while subjects looking at a green cross in two states, performing an attention task and relaxing with eyes-open. The EEG from these two states was filtered by three band-pass filters to obtain signals of theta (4-7 Hz), alpha (8-13 Hz) and beta (14-30 Hz) bands. Mean resultant length was used to estimate strength of phase synchronization in three bands to construct networks of both states, and mean degree K and cluster coefficient C of networks were calculated as a function of threshold. The result shows higher cluster coetticient in the attention state than in the eyes-open state in all three bands, suggesting that cluster coefficient reflects brain state. In addition, an obvious fronto-parietal network is found in the attention state, which is a well-known attention network. These results indicate that attention modulates the fronto-parietal connectivity in different modes as compared with the eyes-open state. Taken together this method is an objective and important tool to study the properties of neural networks of brain rhythm,