Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:1977-1980. doi: 10.1109/EMBC48229.2022.9871721.
Speech impairments due to cerebral lesions and degenerative disorders can be devastating. For humans with severe speech deficits, imagined speech in the brain-computer interface has been a promising hope for reconstructing the neural signals of speech production. However, studies in the EEG-based imagined speech domain still have some limitations due to high variability in spatial and temporal information and low signal-to-noise ratio. In this paper, we investigated the neural signals for two groups of native speakers with two tasks with different languages, English and Chinese. Our assumption was that English, a non-tonal and phonogram-based language, would have spectral differences in neural computation compared to Chinese, a tonal and ideogram-based language. The results showed the significant difference in the relative power spectral density between English and Chinese in specific frequency band groups. Also, the spatial evaluation of Chinese native speakers in the theta band was distinctive during the imagination task. Hence, this paper would suggest the key spectral and spatial information of word imagination with specialized language while decoding the neural signals of speech. Clinical Relevance- Imagined speech-related studies lead to the development of assistive communication technology especially for patients with speech disorders such as aphasia due to brain damage. This study suggests significant spectral features by analyzing cross-language differences of EEG-based imagined speech using two widely used languages.
由于大脑损伤和退行性疾病导致的言语障碍可能是毁灭性的。对于严重言语障碍的人来说,想象中的脑机接口中的言语已经成为重建言语产生的神经信号的一个有前途的希望。然而,基于 EEG 的想象言语领域的研究仍然存在一些限制,因为空间和时间信息的高度可变性和低信噪比。在本文中,我们研究了两组以两种不同语言(英语和汉语)进行两种任务的母语者的神经信号。我们的假设是,英语是一种非声调、基于音位的语言,与汉语相比,在神经计算中会有频谱差异,汉语是一种声调、基于表意文字的语言。结果表明,在特定的频带组中,英语和汉语之间的相对功率谱密度有显著差异。此外,在想象任务中,中国母语者在 theta 波段的空间评估也很独特。因此,本文将在解码言语的神经信号的同时,提出具有专门语言的单词想象的关键频谱和空间信息。临床意义——想象言语相关的研究导致了辅助交流技术的发展,特别是对于由于大脑损伤而导致言语障碍(如失语症)的患者。本研究通过分析使用两种广泛使用的语言的基于 EEG 的想象言语的跨语言差异,提出了显著的频谱特征。