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Decoding and encoding models reveal the role of mental simulation in the brain representation of meaning

机译:解码和编码模型揭示了精神模拟在大脑表现中的作用

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How the brain representation of conceptual knowledge varies as a function of processing goals, strategies and task-factors remains a key unresolved question in cognitive neuroscience. In the present functional magnetic resonance imaging study, participants were presented with visual words during functional magnetic resonance imaging (fMRI). During shallow processing, participants had to read the items. During deep processing, they had to mentally simulate the features associated with the words. Multivariate classification, informational connectivity and encoding models were used to reveal how the depth of processing determines the brain representation of word meaning. Decoding accuracy in putative substrates of the semantic network was enhanced when the depth processing was high, and the brain representations were more generalizable in semantic space relative to shallow processing contexts. This pattern was observed even in association areas in inferior frontal and parietal cortex. Deep information processing during mental simulation also increased the informational connectivity within key substrates of the semantic network. To further examine the properties of the words encoded in brain activity, we compared computer vision models—associated with the image referents of the words—and word embedding. Computer vision models explained more variance of the brain responses across multiple areas of the semantic network. These results indicate that the brain representation of word meaning is highly malleable by the depth of processing imposed by the task, relies on access to visual representations and is highly distributed, including prefrontal areas previously implicated in semantic control.
机译:概念知识的大脑表示如何随着处理目标的函数而变化,策略和任务因素仍然是认知神经科学的关键未解决的问题。在本功能磁共振成像研究中,在功能磁共振成像(FMRI)期间呈现参与者的视觉词。在浅水处理期间,参与者必须阅读这些项目。在深处处理期间,他们必须精神上模拟与单词相关的功能。多变量分类,信息连接和编码模型用于揭示处理深度如何确定词含义的大脑表示。当深度处理高时,提高了语义网络的推定基板的解码精度,并且脑表示在相对于浅加工环境中的语义空间中更广泛。即使在较差的前部和顶叶皮质中的关联区域也观察到这种模式。精神仿真期间的深度信息处理还增加了语义网络的关键基板中的信息连接。为了进一步检查大脑活动中编码的单词的属性,我们将计算机视觉模型与与单词嵌入的单词引用相关联。计算机视觉模型在语义网络的多个区域中解释了大脑响应的更多方差。这些结果表明,通过任务所施加的处理深度的处理深度可以轻松地延伸,依赖于访问视觉表示的深度,并且具有高度分布的,包括先前涉及语义控制的前额相区域的深度来看。

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