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A visual-haptic neurofeedback training improves sensorimotor cortical activations and BCI performance *

机译:视觉触觉神经融合训练改善了Sensimotor皮质激活和BCI性能*

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Neurofeedback training (NFT) could provide a novel way to investigate or restore the impaired brain function and neuroplasticity. However, it remains unclear how much the different feedback modes can contribute to NFT training. Specifically, whether they can enhance the cortical activations for motor training? To this end, our study proposed a brain-computer interface (BCI) based visual-haptic NFT incorporating synchronous visual scene and proprioceptive electrical stimulation feedback. By comparison between previous and posterior control sessions, the cortical activations measured by multi-band (i.e. alpha_1: 8-10Hz, alpha_2: 11-13Hz, beta_1: 15-20Hz and beta_2: 22-28Hz) lateralized relative event-related desynchronization (lrERD) patterns were significantly enhanced after NFT. And the classification performance was also significantly improved, achieving a ~9% improvement and reaching ~85% in mean classification accuracy from a relatively low MI-BCI performance. These findings validate the feasibility of our proposed visual- haptic NFT approach to improve sensorimotor cortical activations and BCI performance during motor training.
机译:神经融合训练(NFT)可以提供一种研究或恢复受损的脑功能和神经塑性的方法。然而,仍然尚不清楚不同的反馈模式可以有助于NFT训练。具体而言,它们是否可以增强电机训练的皮质激活?为此,我们的研究提出了一种基于脑电器界面(BCI)的视觉触觉NFT,其结合了同步视觉场景和预刺激电刺激反馈。通过比较先前和后控制会话,通过多频带测量的皮质激活(即alpha_1:8-10hz,alpha_2:11-13hz,beta_1:15-20hz和beta_2:22-28Hz)横向化相对事件相关的Desynonization(在NFT后,LRERD)模式显着提高。并且分类性能也显着改善,从相对较低的MI-BCI性能达到〜85%,达到〜85%。这些调查结果验证了我们所提出的视觉触觉NFT方法的可行性,以改善电机训练期间的传感器皮质激活和BCI性能。

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