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Adaptive learning in the detection of Movement Related Cortical Potentials improves usability of associative Brain-Computer Interfaces

机译:在运动中检测的自适应学习相关皮层潜力可以提高关联脑 - 计算机接口的可用性

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Brain-computer interfaces have increasingly found applications in motor function recovery in stroke patients. In this context, it has been demonstrated that associative-BCI protocols, implemented by means the movement related cortical potentials (MRCPs), induce significant cortical plasticity. To date, no methods have been proposed to deal with brain signal (i.e. MRCP feature) non-stationarity. This study introduces adaptive learning methods in MRCP detection and aims at comparing a no-adaptive approach based on the Locality Sensitive Discriminant Analysis (LSDA) with three LSDA-based adaptive approaches. As a proof of concept, EEG and force data were collected from six healthy subjects while performing isometric ankle dorsiflexion. Results revealed that adaptive algorithms increase the number of true detections and decrease the number of false positives per minute. Moreover, the markedly reduction of BCI system calibration time suggests that these methods have the potential to improve the usability of associative-BCI in post-stroke motor recovery.
机译:脑电脑界面越来越多地发现卒中患者电机功能恢复中的应用。在这种情况下,已经证明了通过表示运动相关皮质电位(MRCPS)实施的关联-BCI方案,诱导显着的皮质可塑性。迄今为止,没有提出任何方法来处理大脑信号(即MRCP功能)非公平性。本研究介绍了MRCP检测中的自适应学习方法,并旨在将基于局部敏感判别分析(LSDA)的无适应方法进行比较,具有三种基于LSDA的自适应方法。作为概念证明,在执行等距踝背积的同时,从六个健康受试者收集脑电图和力数据。结果表明,自适应算法增加了真实检测的数量,并减少每分钟的误报的数量。此外,BCI系统校准时间的显着降低表明这些方法有可能提高关联-BCI在行程后电机恢复中的可用性。

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