Title
Decoding spatial attention by using cortical currents estimated from electroencephalography with near-infrared spectroscopy prior information.
Abstract
For practical brain–machine interfaces (BMIs), electroencephalography (EEG) and near-infrared spectroscopy (NIRS) are the only current methods that are non-invasive and available in non-laboratory environments. However, the use of EEG and NIRS involves certain inherent problems. EEG signals are generally a mixture of neural activity from broad areas, some of which may not be related to the task targeted by BMI, hence impairing BMI performance. NIRS has an inherent time delay as it measures blood flow, which therefore detracts from practical real-time BMI utility. To try to improve real environment EEG–NIRS-based BMIs, we propose here a novel methodology in which the subjects' mental states are decoded from cortical currents estimated from EEG, with the help of information from NIRS. Using a Variational Bayesian Multimodal EncephaloGraphy (VBMEG) methodology, we incorporated a novel form of NIRS-based prior to capture event related desynchronization from isolated current sources on the cortical surface. Then, we applied a Bayesian logistic regression technique to decode subjects' mental states from further sparsified current sources. Applying our methodology to a spatial attention task, we found our EEG–NIRS-based decoder exhibited significant performance improvement over decoding methods based on EEG sensor signals alone. The advancement of our methodology, decoding from current sources sparsely isolated on the cortex, was also supported by neuroscientific considerations; intraparietal sulcus, a region known to be involved in spatial attention, was a key responsible region in our task. These results suggest that our methodology is not only a practical option for EEG–NIRS-based BMI applications, but also a potential tool to investigate brain activity in non-laboratory and naturalistic environments.
Year
DOI
Venue
2014
10.1016/j.neuroimage.2013.12.035
NeuroImage
Keywords
Field
DocType
Brain–machine interface (BMI),Variational Bayesian Multimodal EncephaloGraphy (VBMEG),Electroencephalography (EEG),Near-infrared spectroscopy (NIRS),NIRS–EEG simultaneous measurement,Spatial attention
Developmental psychology,Near-infrared spectroscopy,Psychology,Neural activity,Brain activity and meditation,Decoding methods,Intraparietal sulcus,Electroencephalography,Performance improvement,Bayesian probability
Journal
Volume
ISSN
Citations 
90
1053-8119
9
PageRank 
References 
Authors
0.67
21
7
Name
Order
Citations
PageRank
Hiroshi Morioka1171.26
Atsunori Kanemura27512.78
Satoshi Morita3233.97
Taku Yoshioka41179.52
Shigeyuki Oba529027.68
Motoaki Kawanabe61451118.86
Shin Ishii790.67