Liu Ruizhe, Chang Hyesang, El-Said Dawlat, Wassermann Demian, Zhang Yuan, Menon Vinod
Department of Psychiatry & Behavioral Sciences, Stanford University, Stanford, CA, USA.
Department of Psychiatry & Behavioral Sciences, Stanford University, Stanford, CA, USA.
Cortex. 2025 Jun 13;189:256-274. doi: 10.1016/j.cortex.2025.04.017.
Previous studies exploring category-sensitive representations of numbers and letters have predominantly focused on individual brain regions. This study expands upon this research through computationally rigorous whole-brain neural decoding using Elastic Net (ND-EN), facilitating the analysis of neural patterns across the entire brain with greater precision. To establish the robustness and generalizability of our results, we also conducted innovative probabilistic meta-analyses of the extant functional neuroimaging literature. The investigation comprised both an active task, requiring participants to distinguish between numbers and letters, and a passive task where they simply viewed these symbols. ND-EN revealed that, during the active task, a distributed network-including the ventral temporal-occipital cortex, intraparietal sulcus, middle frontal gyrus, and insula-actively differentiated between numbers and letters. This distinction was not evident in the passive task, indicating that the task engagement level plays a crucial role in such neural differentiation. Further, regional neural representational similarity analyses within the ventral temporal-occipital cortex revealed similar activation patterns for numbers and letters, indicating a lack of differentiation in regions previously linked to these visual symbols. Thus, our findings indicate that category-sensitive representations of numbers and letters are not confined to isolated regions but involve a broader network of brain areas, and are modulated by task demands. Supporting these empirical findings, probabilistic meta-analyses conducted with NeuroLang and the Neurosynth database reinforced our observations. Together, the convergence of evidence from multivariate neural pattern analysis and meta-analysis advances our understanding of how numbers and letters are represented in the human brain.
以往探索数字和字母类别敏感表征的研究主要集中在单个脑区。本研究通过使用弹性网络(ND-EN)进行计算严谨的全脑神经解码,扩展了这一研究,从而能够更精确地分析全脑的神经模式。为了确定我们结果的稳健性和普遍性,我们还对现有的功能神经影像学文献进行了创新性的概率元分析。该研究包括一个主动任务,要求参与者区分数字和字母,以及一个被动任务,即他们只是简单地观看这些符号。ND-EN显示,在主动任务期间,一个分布式网络——包括腹侧颞枕叶皮层、顶内沟、额中回和脑岛——能够积极地区分数字和字母。这种区分在被动任务中并不明显,这表明任务参与水平在这种神经分化中起着关键作用。此外,腹侧颞枕叶皮层内的区域神经表征相似性分析显示,数字和字母的激活模式相似,这表明先前与这些视觉符号相关的区域缺乏分化。因此,我们的研究结果表明,数字和字母的类别敏感表征并不局限于孤立的区域,而是涉及更广泛的脑区网络,并受任务需求的调节。使用NeuroLang和Neurosynth数据库进行的概率元分析支持了这些实证研究结果,强化了我们的观察。总之,多变量神经模式分析和元分析的证据趋同,推进了我们对数字和字母在人脑中如何表征的理解。