沿腹侧路径的词编码的感知到概念的梯度

V. Borghesani, Fabian Pedregosa, E. Eger, M. Buiatti, M. Piazza
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引用次数: 3

摘要

多元方法在神经成像数据分析中的应用为认知神经科学家提供了一个关于概念知识的神经基础的新视角。在本文中,我们展示了解码模型和表征相似性分析(RSA)的结合使用如何提高我们研究神经语义表征的分类间差异和分类内相似性的能力。通过线性解码模型,我们已经能够预测受试者在进行功能磁共振图像(fMRI)采集时所看到的单词类别。此外,解剖学定义的兴趣区(ROIs)的RSA与主要和次要视觉区域(V1和V2)的单词长度和真实项目大小显著相关,而在颞下区域(BA37和BA20)的语义距离效应显著。总之,这些发现说明了解码语义类别的独特神经模式和研究每个单一类别的神经表征的特殊方面的可能性。事实上,我们已经能够展示认知和神经语义距离之间的显著相关性,并描述了表征腹侧路径的信息编码的梯度:从纯粹的感知到纯粹的概念。如果没有解码模型和RSA对同一数据集的双重探索,这些结果是不可能的。
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A perceptual-to-conceptual gradient of word coding along the ventral path
The application of multivariate approaches to neuroimaging data analysis is providing cognitive neuroscientists with a new perspective on the neural substrate of conceptual knowledge. In this paper we show how the combined use of decoding models and of representational similarity analysis (RSA) can enhance our ability to investigate the inter-categorical distinctions as well as the intra-categorical similarities of neural semantic representations. By means of a linear decoding model, we have been able to predict the category of the words subjects were seeing while undergoing a functional magnetic resonance images (fMRI) acquisition. Moreover, RSA in anatomically defined region of interest (ROIs) revealed a significant correlation with length of words and real item size in primary and secondary visual areas (V1 and V2), while a semantic distance effect was significant in inferotemporal areas (BA37 and BA20). Together, these findings illustrate the possibility to decode the distinctive neural patterns of semantic categories and to investigate the peculiar aspects of the neural representations of each single category. We have in fact been able to show a significant correlation between cognitive and neural semantic distance and to describe the gradient of information coding that characterizes the ventral path: from purely perceptual to purely conceptual. These results would not have been possible without a double exploration of the same dataset by means of decoding models and RSA.
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