Medical Engineering and Medical Physics, Harvard-MIT Division of Health Sciences and Technology, Cambridge, MA, USA.
Neuroimage. 2011 Feb 14;54(4):3028-39. doi: 10.1016/j.neuroimage.2010.10.073. Epub 2010 Oct 30.
The organization and localization of lexico-semantic information in the brain has been debated for many years. Specifically, lesion and imaging studies have attempted to map the brain areas representing living versus nonliving objects, however, results remain variable. This may be due, in part, to the fact that the univariate statistical mapping analyses used to detect these brain areas are typically insensitive to subtle, but widespread, effects. Decoding techniques, on the other hand, allow for a powerful multivariate analysis of multichannel neural data. In this study, we utilize machine-learning algorithms to first demonstrate that semantic category, as well as individual words, can be decoded from EEG and MEG recordings of subjects performing a language task. Mean accuracies of 76% (chance=50%) and 83% (chance=20%) were obtained for the decoding of living vs. nonliving category or individual words respectively. Furthermore, we utilize this decoding analysis to demonstrate that the representations of words and semantic category are highly distributed both spatially and temporally. In particular, bilateral anterior temporal, bilateral inferior frontal, and left inferior temporal-occipital sensors are most important for discrimination. Successful intersubject and intermodality decoding shows that semantic representations between stimulus modalities and individuals are reasonably consistent. These results suggest that both word and category-specific information are present in extracranially recorded neural activity and that these representations may be more distributed, both spatially and temporally, than previous studies suggest.
多年来,人们一直在争论大脑中词汇语义信息的组织和定位。具体来说,病变和成像研究试图绘制代表生物和非生物物体的大脑区域图,但结果仍然存在差异。部分原因可能是,用于检测这些大脑区域的单变量统计映射分析通常对微妙但广泛的影响不敏感。另一方面,解码技术允许对多通道神经数据进行强大的多元分析。在这项研究中,我们利用机器学习算法首先证明,语义类别以及单个单词,可以从执行语言任务的受试者的 EEG 和 MEG 记录中解码出来。对于生物与非生物类别或单个单词的解码,平均准确率分别为 76%(机会=50%)和 83%(机会=20%)。此外,我们利用这种解码分析来证明单词和语义类别的表示在空间和时间上都是高度分布的。特别是双侧颞前、双侧额下和左侧颞枕下传感器对区分最为重要。成功的受试者间和模态间解码表明,刺激模态和个体之间的语义表示相当一致。这些结果表明,词和类别特定的信息都存在于颅外记录的神经活动中,并且这些表示在空间和时间上可能比以前的研究更具分布性。