Shandong Normal University, Jinan, China.
Shandong University of Finance and Economics, Jinan, China.
J Cogn Neurosci. 2022 Nov 1;34(12):2375-2389. doi: 10.1162/jocn_a_01910.
The capacity for the implicit learning/processing of complex grammar with nonadjacent dependencies is an important feature of human language learning. In this fMRI study, using an implicit AGL paradigm, we explored the neural basis of the implicit learning of the nonadjacent dependency rule, disentangling from sequence-based chunk knowledge (i.e., local sequential regularities or substring) by focusing on the low chunk strength items (which were naturally less similar to training strings), based on tracking neural responses during training and test phases. After listening to and memorizing a series of strings of 10 syllables generated from nonadjacent artificial grammar in the training phase, participants implicitly acquired the knowledge of grammar and chunks. Regarding grammaticality, Broca's area was specifically related to low chunk strength grammatical strings relative to nongrammatical strings in the test phase. This region showed decreased activity with time in the training phase, and a lesser decrease in activity was associated with higher performance in grammar learning. Furthermore, Broca's area showed significantly higher strength of functional connectivity with the left superior temporal gyrus in the low chunk strength grammatical string compared with nongrammatical strings, and this functional connectivity increased with the training time. For the chunks, the performance of accurate discrimination of high chunk strength from low chunk strength nongrammatical strings was predicted by hippocampal activity in the training phase. Converging evidence from the training and test phases showed that Broca's area and its functional connectivity with the left superior temporal gyrus were engaged in the implicit learning/processing of the nonadjacent dependency rule, separating the effects of chunks.
内隐学习/处理具有非相邻依赖关系的复杂语法的能力是人类语言学习的一个重要特征。在这项 fMRI 研究中,我们使用内隐 AGL 范式,通过关注低强度的块(与训练字符串自然不太相似),从基于序列的块知识(即局部序列规则或子字符串)中分离出非相邻依赖关系规则的内隐学习的神经基础,基于跟踪训练和测试阶段的神经反应。在训练阶段听完并记住一系列由非相邻人工语法生成的 10 个音节的字符串后,参与者内隐地获得了语法和块的知识。在测试阶段,相对于非语法字符串,Broca 区与低强度块的语法字符串有关。该区域在训练阶段的时间上显示出活动减少,而活动减少与语法学习的表现更好相关。此外,Broca 区与左侧颞上回之间的功能连接强度在低强度块的语法字符串中明显高于非语法字符串,并且这种功能连接随着训练时间的增加而增加。对于块,在训练阶段,海马体活动可以预测对高强度块和低强度非语法块的准确区分。来自训练和测试阶段的综合证据表明,Broca 区及其与左侧颞上回的功能连接参与了非相邻依赖关系规则的内隐学习/处理,分离了块的影响。