Fargier Raphaël, Ploux Sabine, Cheylus Anne, Reboul Anne, Paulignan Yves, Nazir Tatjana A
Université Claude Bernard Lyon1.
J Cogn Neurosci. 2014 Nov;26(11):2552-63. doi: 10.1162/jocn_a_00669. Epub 2014 Jun 4.
Growing evidence suggests that semantic knowledge is represented in distributed neural networks that include modality-specific structures. Here, we examined the processes underlying the acquisition of words from different semantic categories to determine whether the emergence of visual- and action-based categories could be tracked back to their acquisition. For this, we applied correspondence analysis (CA) to ERPs recorded at various moments during acquisition. CA is a multivariate statistical technique typically used to reveal distance relationships between words of a corpus. Applied to ERPs, it allows isolating factors that best explain variations in the data across time and electrodes. Participants were asked to learn new action and visual words by associating novel pseudowords with the execution of hand movements or the observation of visual images. Words were probed before and after training on two consecutive days. To capture processes that unfold during lexical access, CA was applied on the 100-400 msec post-word onset interval. CA isolated two factors that organized the data as a function of test sessions and word categories. Conventional ERP analyses further revealed a category-specific increase in the negativity of the ERPs to action and visual words at the frontal and occipital electrodes, respectively. The distinct neural processes underlying action and visual words can thus be tracked back to the acquisition of word-referent relationships and may have its origin in association learning. Given current evidence for the flexibility of language-induced sensory-motor activity, we argue that these associative links may serve functions beyond word understanding, that is, the elaboration of situation models.
越来越多的证据表明,语义知识是在包括特定模态结构的分布式神经网络中表征的。在此,我们研究了从不同语义类别中获取单词的潜在过程,以确定基于视觉和动作的类别的出现是否可以追溯到它们的习得过程。为此,我们将对应分析(CA)应用于习得过程中不同时刻记录的事件相关电位(ERP)。CA是一种多变量统计技术,通常用于揭示语料库中单词之间的距离关系。应用于ERP时,它可以分离出最能解释数据在时间和电极上变化的因素。参与者被要求通过将新的假词与手部动作的执行或视觉图像的观察联系起来,学习新的动作和视觉单词。在连续两天的训练前后对单词进行探测。为了捕捉词汇访问过程中展开的过程,CA应用于单词出现后100 - 400毫秒的时间间隔。CA分离出两个因素,这些因素根据测试阶段和单词类别对数据进行了组织。传统的ERP分析进一步揭示,在额叶和枕叶电极处,ERP对动作和视觉单词的负性分别有特定类别的增加。因此,动作和视觉单词背后不同的神经过程可以追溯到单词-指称关系的习得,并且可能起源于联想学习。鉴于目前关于语言诱导的感觉运动活动灵活性的证据,我们认为这些联想联系可能具有超越单词理解的功能,即情境模型的构建。