使用脑连通性估计器分析语音图像

C. Sandhya, G. Srinidhi, R. Vaishali, M. Visali, A. Kavitha
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引用次数: 8

摘要

大脑连通性的估计允许描述在不同形式的心理意象中不同皮质区域之间建立的功能联系。言语意象是心理意象的一种形式,是指在沉默中自言自语的活动。本文通过计算脑电同步性参数相干性来定量分析脑不同区域在进行语音想象时的并发性。研究了基于脑电图的语音图像脑连通性测量,以了解脑功能。特别地,将基于MVAR模型的部分有向相干性(PDC)和有向传递函数(DTF)测量等格兰杰因果关系参数应用于多通道脑电数据,以发现给定语音图像任务的连接模式的方向和强度。从实验结果可以观察到,大脑额叶和颞叶区域之间存在双边相互作用,并且由于电极分别靠近Broca区和Wernicke区,左额叶的交叉电极一致性在言语产生过程中较高,而左颞叶的交叉电极一致性在言语想象过程中较高。利用基于MVAR模型的脑连接参数,还可以得出左脑信息流的方向大于右脑信息流的结论。因此,言语在大脑中的可感知性,或者换句话说,语音图像可以通过脑电图捕获,观察结果表明,所提出的方法是一种有前途的非侵入性方法,可以研究大脑中相互连接的神经群之间的定向连接。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of speech imagery using brain connectivity estimators
The estimation of brain connectivity allows description of the functional links established between different cortical areas during different forms of mental imagery. Speech imagery is a form of mental imagery, which refers to the activity of talking to oneself in silence. In this paper, coherence, an EEG synchronicity parameter is calculated to quantitatively analyze the concurrence of the different regions of the brain while performing speech imagery. Brain connectivity measures of speech imagery based on EEG were also investigated to understand brain function. In particular, Granger causality parameters such as Partial Directed Coherence (PDC) and Directed Transfer Function (DTF) measurements based on MVAR models are applied to multi-channel EEG data to find direction and strength of the connectivity patterns of the given speech imagery task. From the results obtained, it can be observed that there is a bilateral brain interaction of frontal and temporal brain regions andthe cross electrode coherence of the left frontal lobe was found to be high during speech production and that of the left temporal lobe was found to be high during speech imagery due to the proximity of the electrodes to the Broca's and Wernicke's area respectively. It can also be concluded that the direction of information flow from left hemisphere of the brain is more than right hemisphere of the brain using brain connectivity parameters based on MVAR models. Thus, the perceptibility of verbalizations in the brain, or in other words, speech imagery can be captured through EEG and the observations suggest that the proposed methodology is a promising non-invasive approach to study directional connectivity in the brain between mutually interconnected neural populations.
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