Effect of tDCS stimulation of motor cortex and cerebellum on EEG classification of motor imagery and sensorimotor band power

被引:20
|
作者
Angulo-Sherman, Irma N. [1 ]
Rodriguez-Ugarte, Marisol [2 ]
Sciacca, Nadia [2 ]
Ianez, Eduardo [2 ]
Azorin, Jose M. [2 ]
机构
[1] Ctr Res & Adv Studies Cinvestav, Parque Invest & Innovac Tecnol Km 9-5 Autopista N, Monterrey 66600, NL, Mexico
[2] Univ Miguel Hernandez Elche, Brain Machine Interface Syst Lab, Av Univ S-N, Elche 03202, Spain
关键词
tDCS; Rehabilitation; EEG; Motor imagery; BRAIN-COMPUTER INTERFACES; LOCOMOTOR ADAPTATION; EXCITABILITY; CONSOLIDATION; CONNECTIVITY; MODULATION; STRATEGY; IMPLICIT; LOOPS; STEM;
D O I
10.1186/s12984-017-0242-1
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Background: Transcranial direct current stimulation (tDCS) is a technique for brain modulation that has potential to be used in motor neurorehabilitation. Considering that the cerebellum and motor cortex exert influence on the motor network, their stimulation could enhance motor functions, such as motor imagery, and be utilized for brain-computer interfaces (BCIs) during motor neurorehabilitation. Methods: A new tDCS montage that influences cerebellum and either right-hand or feet motor area is proposed and validated with a simulation of electric field. The effect of current density (0, 0.02, 0.04 or 0.06 mA/cm(2)) on electroencephalographic (EEG) classification into rest or right-hand/feet motor imagery was evaluated on 5 healthy volunteers for different stimulation modalities: 1) 10-minutes anodal tDCS before EEG acquisition over right-hand or 2) feet motor cortical area, and 3) 4-seconds anodal tDCS during EEG acquisition either on right-hand or feet cortical areas before each time right-hand or feet motor imagery is performed. For each subject and tDCS modality, analysis of variance and Tukey-Kramer multiple comparisons tests (p<0.001) are used to detect significant differences between classification accuracies that are obtained with different current densities. For tDCS modalities that improved accuracy, t-tests (p<0.05) are used to compare mu and beta band power when a specific current density is provided against the case of supplying no stimulation. Results: The proposed montage improved the classification of right-hand motor imagery for 4 out of 5 subjects when the highest current was applied for 10 minutes over the right-hand motor area. Although EEG band power changes could not be related directly to classification improvement, tDCS appears to affect variably different motor areas on mu and/or beta band. Conclusions: The proposed montage seems capable of enhancing right-hand motor imagery detection when the right-hand motor area is stimulated. Future research should be focused on applying higher currents over the feet motor cortex, which is deeper in the brain compared to the hand motor cortex, since it may allow observation of effects due to tDCS. Also, strategies for improving analysis of EEG respect to accuracy changes should be implemented.
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页数:16
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