Chang Claire H C, Nastase Samuel A, Hasson Uri, Dominey Peter Ford
Princeton Neuroscience Institute, Princeton University, Princeton, NJ 08540.
The Graduate Institute of Mind, Brain, and Consciousness, College of Humanities and Social Sciences, Taipei Medical University, New Taipei City 235, Taiwan.
Proc Natl Acad Sci U S A. 2025 Jul 15;122(28):e2420105122. doi: 10.1073/pnas.2420105122. Epub 2025 Jul 9.
Natural language unfolds over multiple nested timescales: Words form sentences, sentences form paragraphs, and paragraphs build into full narratives. Correspondingly, the brain exhibits a hierarchy of processing timescales, spanning from lower- to higher-order regions. During narrative comprehension, neural activation patterns have been shown to propagate along this cortical hierarchy with increasing temporal delays (lags). To investigate the mechanisms underlying this lag gradient, we systematically manipulate the structure of a recurrent reservoir network. In the biologically inspired "Limited-Canal" configuration, word embeddings are received by a limited set of sensory neurons and transmitted through a series of local connections to the distal end of the network. This configuration endows the network with an intrinsic lag gradient, inducing a cascade of activity as information propagates along the network. We found that, similar to the human brain, this intrinsic lag gradient is enhanced by naturalistic narratives. The interaction between naturalistic input and network structure becomes evident when manipulating local connectivity through the "canal width" parameter, which determines how closely the Limited-Canal model mirrors the human brain's sensitivity to narrative structure. In addition, we found that processing cost, as a computational proxy for the BOLD signal, increases more slowly in later neurons, which can account for the emergence of the lag gradient. Our results demonstrate that narrative-driven neural dynamics can emerge from macroscale anatomical topology alone without task-specific training. These fundamental topological properties of the human cortex may have evolved to effectively process the hierarchical structures ubiquitous in the natural environment.
单词组成句子,句子组成段落,段落构建成完整的叙述。相应地,大脑呈现出一个处理时间尺度的层次结构,从低阶区域到高阶区域。在叙述理解过程中,神经激活模式已被证明会沿着这个皮质层次结构传播,且时间延迟(滞后)不断增加。为了研究这种滞后梯度背后的机制,我们系统地操纵了一个循环储层网络的结构。在受生物启发的“有限通道”配置中,词嵌入由一组有限的感觉神经元接收,并通过一系列局部连接传输到网络的远端。这种配置赋予网络一个内在的滞后梯度,当信息沿着网络传播时会引发一连串的活动。我们发现,与人类大脑类似,这种内在的滞后梯度会被自然主义叙述增强。当通过“通道宽度”参数操纵局部连接性时,自然主义输入与网络结构之间的相互作用变得明显,该参数决定了有限通道模型对叙述结构的敏感度与人类大脑的接近程度。此外,我们发现,作为BOLD信号的计算代理,处理成本在较后的神经元中增加得更慢,这可以解释滞后梯度的出现。我们的结果表明,叙述驱动的神经动力学可以仅从宏观解剖拓扑结构中出现,而无需特定任务的训练。人类皮质的这些基本拓扑特性可能已经进化,以有效地处理自然环境中普遍存在的层次结构。