MEG调查中个体参与者语言反应通道的功能识别。

Mathias Huybrechts, Rose Bruffaerts, Alvince Pongos, Cory Shain, Benjamin Lipkin, Matthew Siegelman, Vincent Wens, Martin Sjøgård, Idan Blank, Serge Goldman, Xavier De Tiège, Evelina Fedorenko
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引用次数: 0

摘要

对语言系统的功能结构进行有意义的推断需要有能力在个人和研究中引用相同的神经单元。传统的大脑成像方法将大脑排列在一个共同的空间中,并将其平均化。然而,语言系统所在的外侧额叶和颞叶皮层具有高度的结构和功能个体间变异性。这种可变性降低了组平均分析的灵敏度和功能分辨率。语言区域往往与其他具有不同功能的大型网络区域非常接近,这一事实加剧了这个问题。受认知神经科学其他领域(如视觉)启发的一种解决方案是使用“定位器”任务(如语言理解任务)识别每个大脑中的语言区域。这种方法在功能磁共振成像中已被证明是有效的,产生了许多关于语言系统的发现,并已成功扩展到颅内记录研究中。在这里,我们将这种方法应用于MEG。在两个实验中(一个在荷兰语中,n=19;一个在英语中,n=23),我们检查了对句子处理和控制条件(非单词序列)的神经反应。我们证明了神经对语言的反应在个体层面上是空间一致的。正如预期的那样,感兴趣的语言反应传感器对非单词条件的反应较弱。在对语言的神经反应图谱中存在明显的个体间差异,与群体水平相比,在个体水平上分析数据时具有更大的敏感性。因此,与fMRI一样,功能定位在MEG中产生了好处,从而为在未来的语言处理MEG研究中探索空间和时间上的细粒度差异打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Functional Identification of Language-Responsive Channels in Individual Participants in MEG Investigations.

Functional Identification of Language-Responsive Channels in Individual Participants in MEG Investigations.

Functional Identification of Language-Responsive Channels in Individual Participants in MEG Investigations.

Functional Identification of Language-Responsive Channels in Individual Participants in MEG Investigations.

Making meaningful inferences about the functional architecture of the language system requires the ability to refer to the same neural units across individuals and studies. Traditional brain imaging approaches align and average brains together in a common space. However, lateral frontal and temporal cortices, where the language system resides, is characterized by high structural and functional inter-individual variability, which reduces the sensitivity and functional resolution of group-averaging analyses. This issue is compounded by the fact that language areas lay in close proximity to regions of other large-scale networks with different functional profiles. A solution inspired by visual neuroscience is to identify language areas functionally in each individual brain using a 'localizer' task (e.g., a language comprehension task). This approach has proven productive in fMRI, yielding a number of robust and replicable findings about the language system. Here, we extend this approach to MEG. Across two experiments (one in Dutch speakers, n=19; one in English speakers, n=23), we examined neural responses to the processing of sentences and a control condition (nonword sequences). In both the time and frequency domains, we demonstrated that the topography of neural responses to language is spatially stable within individuals but varies across individuals. Consequently, analyses that take this inter-individual variability into account are characterized by greater sensitivity, compared to the group-level analyses. In summary, similar to fMRI, functional identification within individuals yields benefits in MEG, thus opening the door to future investigations of language processing including questions where whole-brain coverage and temporal resolution are both critical.

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