Balwani Aishwarya, Cho Suhee, Choi Hannah
School of Electrical & Computer Engineering, Georgia Institute of Technology.
Department of Brain and Cognitive Sciences, Korea Advanced Institute of Science Technology.
bioRxiv. 2024 May 24:2024.05.23.595629. doi: 10.1101/2024.05.23.595629.
The cortex plays a crucial role in various perceptual and cognitive functions, driven by its basic unit, the . Yet, we remain short of a framework that definitively explains the structure-function relationships of this fundamental neuroanatomical motif. To better understand how physical substrates of cortical circuitry facilitate their neuronal dynamics, we employ a computational approach using recurrent neural networks and representational analyses. We examine the differences manifested by the inclusion and exclusion of biologically-motivated inter-areal laminar connections on the computational roles of different neuronal populations in the microcircuit of two hierarchically-related areas, throughout learning. Our findings show that the presence of feedback connections correlates with the functional modularization of cortical populations in different layers, and provides the microcircuit with a natural inductive bias to differentiate expected and unexpected inputs at initialization. Furthermore, when testing the effects of training the microcircuit and its variants with a predictive-coding inspired strategy, we find that doing so helps better encode noisy stimuli in areas of the cortex that receive feedback, all of which combine to suggest evidence for a predictive-coding mechanism serving as an intrinsic operative logic in the cortex.
皮层在各种感知和认知功能中起着至关重要的作用,这是由其基本单元——[此处原文缺失相关内容]驱动的。然而,我们仍然缺乏一个能够明确解释这种基本神经解剖学模式的结构 - 功能关系的框架。为了更好地理解皮层回路的物理基质如何促进其神经元动力学,我们采用了一种使用循环神经网络和表征分析的计算方法。我们研究了在整个学习过程中,生物驱动的区域间层状连接的包含和排除在两个层次相关区域的微电路中不同神经元群体的计算作用上所表现出的差异。我们的研究结果表明,反馈连接的存在与不同层中皮层群体的功能模块化相关,并为微电路提供了一种自然的归纳偏差,以便在初始化时区分预期和意外输入。此外,当用一种受预测编码启发的策略测试训练微电路及其变体的效果时,我们发现这样做有助于在接受反馈的皮层区域更好地编码噪声刺激,所有这些都结合起来表明存在一种预测编码机制,它作为皮层中的一种内在操作逻辑。