Rocha Armando Freitas da, Foz Flávia Benevides, Pereira Alfredo
Research on Artificial and Natural Intelligence (RANI), Rua Tenente Ary Aps 172, 13207-110 Jundiaí, Brazil.
CEFAC-Saúde e Educação, Rua Anchieta 670, Sala 22, 13201-804 Jundiaí, SP, Brazil.
Comput Intell Neurosci. 2015;2015:865974. doi: 10.1155/2015/865974. Epub 2015 Dec 2.
Recent studies on language processing indicate that language cognition is better understood if assumed to be supported by a distributed intelligent processing system enrolling neurons located all over the cortex, in contrast to reductionism that proposes to localize cognitive functions to specific cortical structures. Here, brain activity was recorded using electroencephalogram while volunteers were listening or reading small texts and had to select pictures that translate meaning of these texts. Several techniques for EEG analysis were used to show this distributed character of neuronal enrollment associated with the comprehension of oral and written descriptive texts. Low Resolution Tomography identified the many different sets (s i ) of neurons activated in several distinct cortical areas by text understanding. Linear correlation was used to calculate the information H(e i ) provided by each electrode of the 10/20 system about the identified s i . H(e i ) Principal Component Analysis (PCA) was used to study the temporal and spatial activation of these sources s i . This analysis evidenced 4 different patterns of H(e i ) covariation that are generated by neurons located at different cortical locations. These results clearly show that the distributed character of language processing is clearly evidenced by combining available EEG technologies.
最近关于语言处理的研究表明,如果假设语言认知由一个分布式智能处理系统支持,该系统招募遍布整个皮层的神经元,那么与将认知功能定位到特定皮层结构的还原论相比,语言认知能得到更好的理解。在这里,当志愿者听或读小文本并必须选择能翻译这些文本含义的图片时,使用脑电图记录大脑活动。几种脑电图分析技术被用来展示与口头和书面描述性文本理解相关的神经元招募的这种分布式特征。低分辨率断层扫描识别出通过文本理解在几个不同皮层区域激活的许多不同的神经元集(si)。线性相关被用来计算10/20系统的每个电极关于识别出的si所提供的信息H(ei)。H(ei)主成分分析(PCA)被用来研究这些源si的时间和空间激活。该分析证明了由位于不同皮层位置的神经元产生的4种不同的H(ei)协变模式。这些结果清楚地表明,通过结合现有的脑电图技术,语言处理的分布式特征得到了明确的证明。