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Feature Detection in Motor Cortical Spikes by Principal Component Analysis
2005
IEEE transactions on neural systems and rehabilitation engineering
Principal component analysis was performed on recorded neural spike trains in rats' motor cortices when rats were involved in real-time control tasks using brain-machine interfaces. The rat with implanted microelectrode array was placed in a conditioning chamber, but freely moving, to decide which one of the two paddles should be activated to shift the cue light to the center. It is found that the principal component feature vectors revealed the importance of individual neurons and windows of
doi:10.1109/tnsre.2005.847389
pmid:16200749
fatcat:bn5qdtweo5acnl32gaejeurvv4