Author/Authors :
Li, Weifeng School of Electronic Science and Engineering - Nanjing University - Nanjing, China , Shen, Yuxiaotong School of Electronic Science and Engineering - Nanjing University - Nanjing, China , Zhang, Jie School of Electronic Science and Engineering - Nanjing University - Nanjing, China , Huang, Xiaolin School of Electronic Science and Engineering - Nanjing University - Nanjing, China , Chen, Ying School of Electronic Science and Engineering - Nanjing University - Nanjing, China , Ge, Yun School of Electronic Science and Engineering - Nanjing University - Nanjing, China
Abstract :
To improve the spatial resolution, dense multichannel electroencephalogram with more than 32 leads has gained more and more
applications. However, strong common interference will not only conceal the weak components generatedfrom the specifc isolated
neural source, but also lead to severe spurious correlation between diferent brain regions, which results in great distortion on
brain connectivity or brain network analysis. Starting from the fast independent component analysis algorithm, we frst derive
the mixing matrix of independent source components based on the baseline signals prior to tasks. Ten, we identify the common
interferences as those components whose mixing vectors span the minimum angles with respect to the unitary vector. By assuming
that both the common interferences and their corresponding mixing vectors stay consistent during the entire experiment, we apply
the demixing and mixing matrix to the task signals and remove the inferred common interferences. Subsequently, we validate the
method using simulation. Finally, the index of global coherence is calculated for validation. It turns out that the proposed method
can successfully remove the common interferences so that the prominent coherence of mu rhythms in motor imagery tasks is
unmasked. Te proposed method can gain wide applications because it reveals the true correlation between the local sources in
spite of the low signal-to-noise ratio.