Department of Cognitive Science, Johns Hopkins University, USA.
Department of Cognitive Science, Johns Hopkins University, USA.
Neuroimage. 2018 Dec;183:200-211. doi: 10.1016/j.neuroimage.2018.07.063. Epub 2018 Aug 1.
The ability to read requires learning letter-string representations whose neural codes would be expected to vary depending on the amount of experience that an individual has with reading them. Motivated by sparse coding theories (e.g., Rolls and Tovee, 1995; Olshausen and Field, 1996), recent work has demonstrated that better-learned relative to less well-learned neural representations are associated with more strongly differentiated, locally heterogeneous blood oxygenation level dependent (BOLD) responses (e.g., Jiang et al., 2013). Here we report a novel analysis method we call local heterogeneity regression (Local-Hreg) that quantifies the cross-voxel heterogeneity of BOLD responses, thereby providing a sensitive and methodologically flexible method for quantifying the local neural differentiation of neural representations. In a study of literate adults, we applied Local-Hreg to fMRI data obtained when participants read letter strings that varied in their frequency of occurrence in the written language. Consistent with previous research identifying the left ventral occipitotemporal cortex (vOTC) as a key site for orthographic representation in reading and spelling, we found that the cross-voxel heterogeneity of neural responses in this region varies according to the frequency with which the written letter strings have been experienced. This work provides a novel approach for examining the local differentiation of neural representations, and demonstrates that well-learned words have greater representational differentiation than less well-learned or unfamiliar words.
阅读能力需要学习字母串的表示,其神经编码预计会根据个体阅读它们的经验量而有所不同。受稀疏编码理论的启发(例如,Rolls 和 Tovee,1995;Olshausen 和 Field,1996),最近的工作表明,相对于学习较差的神经表示,更好学习的神经表示与分化程度更高、局部异质性更强的血氧水平依赖(BOLD)反应相关(例如,Jiang 等人,2013)。在这里,我们报告了一种我们称之为局部异质性回归(Local-Hreg)的新分析方法,该方法量化了 BOLD 反应的跨体素异质性,从而为量化神经表示的局部神经分化提供了一种敏感且方法灵活的方法。在一项对有文化的成年人的研究中,我们将 Local-Hreg 应用于 fMRI 数据,这些数据是在参与者阅读在书面语言中出现频率不同的字母串时获得的。与先前研究将左腹侧枕颞叶皮层(vOTC)确定为阅读和拼写中拼写法表示的关键部位一致,我们发现该区域神经反应的跨体素异质性随书面字母串的出现频率而变化。这项工作提供了一种新的方法来研究神经表示的局部分化,并表明学习良好的单词比学习较差的或不熟悉的单词具有更大的表示分化。