Eckmann Samuel, Young Edward James, Gjorgjieva Julijana
Computation in Neural Circuits Group, Max Planck Institute for Brain Research, Frankfurt am Main 60438, Germany.
Computational and Biological Learning Lab, Department of Engineering, University of Cambridge, Cambridge CB2 1PZ, United Kingdom.
Proc Natl Acad Sci U S A. 2024 Jun 18;121(25):e2305326121. doi: 10.1073/pnas.2305326121. Epub 2024 Jun 13.
Cortical networks exhibit complex stimulus-response patterns that are based on specific recurrent interactions between neurons. For example, the balance between excitatory and inhibitory currents has been identified as a central component of cortical computations. However, it remains unclear how the required synaptic connectivity can emerge in developing circuits where synapses between excitatory and inhibitory neurons are simultaneously plastic. Using theory and modeling, we propose that a wide range of cortical response properties can arise from a single plasticity paradigm that acts simultaneously at all excitatory and inhibitory connections-Hebbian learning that is stabilized by the synapse-type-specific competition for a limited supply of synaptic resources. In plastic recurrent circuits, this competition enables the formation and decorrelation of inhibition-balanced receptive fields. Networks develop an assembly structure with stronger synaptic connections between similarly tuned excitatory and inhibitory neurons and exhibit response normalization and orientation-specific center-surround suppression, reflecting the stimulus statistics during training. These results demonstrate how neurons can self-organize into functional networks and suggest an essential role for synapse-type-specific competitive learning in the development of cortical circuits.
皮层网络呈现出基于神经元之间特定循环相互作用的复杂刺激-反应模式。例如,兴奋性和抑制性电流之间的平衡已被确定为皮层计算的核心组成部分。然而,在发育中的回路中,兴奋性和抑制性神经元之间的突触同时具有可塑性,所需的突触连接性是如何出现的仍不清楚。通过理论和建模,我们提出,广泛的皮层反应特性可以源自单一的可塑性范式,该范式在所有兴奋性和抑制性连接上同时起作用——通过对有限的突触资源供应进行突触类型特异性竞争来稳定的赫布学习。在可塑性循环回路中,这种竞争能够形成抑制平衡的感受野并使其去相关。网络发展出一种组装结构,在调谐相似的兴奋性和抑制性神经元之间具有更强的突触连接,并表现出反应归一化和方向特异性中心-外周抑制,反映了训练期间的刺激统计信息。这些结果证明了神经元如何能够自我组织成功能网络,并表明突触类型特异性竞争学习在皮层回路发育中起着至关重要的作用。