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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Heteromodal Cortical Areas Encode Sensory-Motor Features of Word Meaning
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Heteromodal Cortical Areas Encode Sensory-Motor Features of Word Meaning

机译:异质皮质区域编码词义的感觉运动特征

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摘要

The capacity to process information in conceptual form is a fundamental aspect of human cognition, yet little is known about how this type of information is encoded in the brain. Although the role of sensory and motor cortical areas has been a focus of recent debate, neuroimaging studies of concept representation consistently implicate a network of heteromodal areas that seem to support concept retrieval in general rather than knowledge related to any particular sensory-motor content. We used predictive machine learning on fMRI data to investigate the hypothesis that cortical areas in this "general semantic network" (GSN) encode multimodal information derived from basic sensory-motor processes, possibly functioning as convergence- divergence zones for distributed concept representation. An encoding model based on five conceptual attributes directly related to sensory-motor experience (sound, color, shape, manipulability, and visual motion) was used to predict brain activation patterns associated with individual lexical concepts in a semantic decision task. When the analysis was restricted to voxels in the GSN, the model was able to identify the activation patterns corresponding to individual concrete concepts significantly above chance. In contrast, a model based on five perceptual attributes of the word form performed at chance level. This pattern was reversed when the analysis was restricted to areas involved in the perceptual analysis of written word forms. These results indicate that heteromodal areas involved in semantic processing encode information about the relative importance of different sensory-motor attributes of concepts, possibly by storing particular combinations of sensory and motor features.
机译:以概念形式处理信息的能力是人类认知的基本方面,但人们对这种信息在大脑中的编码方式知之甚少。尽管感觉皮层和运动皮层区域的作用一直是近期争论的焦点,但是对概念表示的神经影像研究始终暗示着一个异质模态区域网络,该网络似乎总体上支持概念检索,而不是支持与任何特定感觉皮层运动相关的知识。我们在fMRI数据上使用预测性机器学习来研究以下假设:“通用语义网络”(GSN)中的皮质区域编码源自基本感觉运动过程的多峰信息,可能充当分布式概念表示的收敛发散区域。基于五个与感觉运动体验(声音,颜色,形状,可操纵性和视觉运动)直接相关的概念属性的编码模型用于预测与语义决策任务中的各个词汇概念相关的大脑激活模式。当分析仅限于GSN中的体素时,该模型能够识别出与个别具体概念相对应的激活模式,而这种激活模式大大超出了机会。相反,在机会级别执行基于单词形式的五个感知属性的模型。当分析仅限于涉及书面单词形式的感性分析的区域时,这种模式将被逆转。这些结果表明,语义处理中涉及的异模式区域可能通过存储特定的感觉和运动特征组合来编码有关概念的不同感觉-运动属性的相对重要性的信息。

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