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5. A hybrid BCI speller paradigm combining P300 potential and the SSVEP blocking feature. Xu M; Qi H; Wan B; Yin T; Liu Z; Ming D J Neural Eng; 2013 Apr; 10(2):026001. PubMed ID: 23369924 [TBL] [Abstract][Full Text] [Related]
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