Li Mingtao, Pun Sio Hang, Chen Fei
Annu Int Conf IEEE Eng Med Biol Soc. 2023 Jul;2023:1-4. doi: 10.1109/EMBC40787.2023.10340428.
Speech impairment is one of the most serious problems for patients with communication disorders, e.g., stroke survivors. The brain-computer interface (BCI) systems have shown the potential to alternatively control or rehabilitate the neurological damages in speech production. The effects of different cortical regions in speech-based BCI systems are essential to be studied, which are favorable for improving the performance of speech-based BCI systems. This work aimed to explore the impacts of different speech-related cortical regions in the electroencephalogram (EEG) based classification of seventy spoken Mandarin monosyllables carrying four vowels and four lexical tones. Seven audible speech production-related cortical regions were studied, involving Broca's and Wernicke's areas, auditory cortex, motor cortex, prefrontal cortex, sensory cortex, left brain, right brain, and whole brain. Following the previous studies in which EEG signals were collected from ten subjects during Mandarin speech production, the features of EEG signals were extracted by the Riemannian manifold method, and a linear discriminant analysis (LDA) was regarded as a classifier to classify different vowels and lexical tones. The results showed that when using electrodes from whole brain, the classifier reached the best performances, which were 48.5% for lexical tones and 70.0% for vowels, respectively. The vowel classification results under Broca's and Wernicke's areas, auditory cortex, or prefrontal cortex were higher than those under the motor cortex or sensory cortex. No such differences were observed in the lexical tone classification task.
言语障碍是患有沟通障碍的患者(如中风幸存者)面临的最严重问题之一。脑机接口(BCI)系统已显示出可替代控制或修复言语产生过程中神经损伤的潜力。研究基于言语的BCI系统中不同皮质区域的作用至关重要,这有利于提高基于言语的BCI系统的性能。这项工作旨在探讨在基于脑电图(EEG)对包含四个元音和四个声调的70个汉语单音节语音进行分类时,不同言语相关皮质区域的影响。研究了七个与可听言语产生相关的皮质区域,包括布洛卡区和韦尼克区、听觉皮层、运动皮层、前额叶皮层、感觉皮层、左脑、右脑和全脑。遵循先前在汉语语音产生过程中从10名受试者收集脑电图信号的研究,通过黎曼流形方法提取脑电图信号特征,并将线性判别分析(LDA)用作分类器对不同元音和声调进行分类。结果表明,当使用来自全脑的电极时,分类器达到了最佳性能,声调分类准确率分别为48.5%,元音分类准确率为70.0%。在布洛卡区和韦尼克区、听觉皮层或前额叶皮层下的元音分类结果高于运动皮层或感觉皮层下的结果。在声调分类任务中未观察到此类差异。