Xu, RenRenXuJiang, NingNingJiangLin, ChuangChuangLinMrachacz-Kersting, NatalieNatalieMrachacz-KerstingDremstrup, KimKimDremstrupFarina, DarioDarioFarina2018-11-072018-11-072014https://resolver.sub.uni-goettingen.de/purl?gro-2/34301In recent years, the detection of voluntary motor intentions from electroencephalogram (EEG) has been used for triggering external devices in closed-loop brain-computer interface (BCI) research. Movement-related cortical potentials (MRCP), a type of slow cortical potentials, have been recently used for detection. In order to enhance the efficacy of closed-loop BCI systems based on MRCPs, a manifold method called Locality Preserving Projection, followed by a linear discriminant analysis (LDA) classifier (LPP-LDA) is proposed in this paper to detect MRCPs from scalp EEG in real time. In an online experiment on nine healthy subjects, LPP-LDA statistically outperformed the classic matched filter approach with greater true positive rate (79 +/- 11% versus 68 +/- 10%; p = 0.007) and less false positives (1.4 +/- 0.8/min versus 2.3 +/- 1.1/min; p = 0.016). Moreover, the proposed system performed detections with significantly shorter latency (315 +/- 165 ms versus 460 +/- 123 ms; p = 0.013), which is a fundamental characteristics to induce neuroplastic changes in closed-loop BCIs, following the Hebbian principle. In conclusion, the proposed system works as a generic brain switch, with high accuracy, low latency, and easy online implementation. It can thus be used as a fundamental element of BCI systems for neuromodulation and motor function rehabilitation.Enhanced Low-Latency Detection of Motor Intention From EEG for Closed-Loop Brain-Computer Interface Applicationsjournal_article10.1109/TBME.2013.229420324448593000333268000007