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首页> 外文期刊>Neuropsychologia >Brain connections of words, perceptions and actions: A neurobiological model of spatio-temporal semantic activation in the human cortex
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Brain connections of words, perceptions and actions: A neurobiological model of spatio-temporal semantic activation in the human cortex

机译:词语,看法和行为的大脑联系:人皮层中时空语义激活的神经生物学模型

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Neuroimaging and patient studies show that different areas of cortex respectively specialize for general and selective, or category-specific, semantic processing. Why are there both semantic hubs and category-specificity, and how come that they emerge in different cortical regions? Can the activation time-course of these areas be predicted and explained by brain-like network models? In this present work, we extend a neurocomputational model of human cortical function to simulate the time-course of cortical processes of understanding meaningful concrete words. The model implements frontal and temporal cortical areas for language, perception, and action along with their connectivity. It uses Hebbian learning to semantically ground words in aspects of their referential object- and action-related meaning. Compared with earlier proposals, the present model incorporates additional neuroanatomical links supported by connectivity studies and downscaled synaptic weights in order to control for functional between-area differences purely due to the number of in- or output links of an area. We show that learning of semantic relationships between words and the objects and actions these symbols are used to speak about, leads to the formation of distributed circuits, which all include neuronal material in connector hub areas bridging between sensory and motor cortical systems. Therefore, these connector hub areas acquire a role as semantic hubs. By differentially reaching into motor or visual areas, the cortical distributions of the emergent 'semantic circuits' reflect aspects of the represented symbols' meaning, thus explaining category specificity. The improved connectivity structure of our model entails a degree of category-specificity even in the 'semantic hubs' of the model. The relative time-course of activation of these areas is typically fast and near simultaneous, with semantic hubs central to the network structure activating before modality-preferential areas carrying semantic information.
机译:神经影像和患者研究表明,皮质不同的皮质区域分别专注于一般和选择性,或特异性的语义处理。为什么有语义集线器和类别特异性,以及他们如何出现在不同的皮质地区?这些区域的激活时间过程可以预测和解释大脑网络模型吗?在本工作中,我们扩展了一种人体皮质功能的神经计算机模型,模拟了理解有意义的具体词语的皮质过程的时间过程。该模型实现了语言,感知和行动的正面和时间皮质区域以及它们的连接。它在其参考对象和动作相关意义的方面,使用Hebbian学习语义地词。与前面的提案相比,本模型包括连接性研究和较次突触重量的额外的神经杀菌链路,以便控制区域之间的功能,纯粹是由于区域的内部或输出链路的数量。我们表明,使用这些符号之间的单词和对象和动作之间的语义关系的学习,这些符号用于谈论,导致分布式电路的形成,这一部分包括在感觉和电机皮质系统之间的连接器轮毂区域中的神经元材料。因此,这些连接器中心区域获得了语义集线器的角色。通过差别达到电动机或视觉区域,所得突出的“语义电路”的皮质分布反映了所代表符号的含义的方面,从而解释了类别特异性。即使在模型的“语义集线器”中,我们模型的改进的连接结构也需要一定程度的类别特异性。激活这些区域的相对时间过程通常是快速且靠近同时的网络结构,在携带语义信息的模态优先领域激活网络结构。

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