Züge Paul, Schieferstein Natalie, Memmesheimer Raoul-Martin
Institute for Genetics, University of Bonn, Bonn, Germany.
PLoS Comput Biol. 2025 Jul 3;21(7):e1012156. doi: 10.1371/journal.pcbi.1012156. eCollection 2025 Jul.
A hallmark of biological and artificial neural networks is that neurons tile the range of continuous sensory inputs and intrinsic variables with overlapping responses. It is characteristic for the underlying recurrent connectivity in the cortex that neurons with similar tuning predominantly excite each other. The reason for such an architecture is not clear. Using an analytically tractable model as well as spiking neural networks, we show that it can naturally arise from a cooperative coding scheme. In this scheme neurons with similar responses specifically support each other by sharing their computations to obtain the desired population code. This sharing allows each neuron to effectively respond to a broad variety of inputs, while only receiving few feedforward and recurrent connections. Few strong, specific recurrent connections then replace many feedforward and less specific recurrent connections, such that the resulting connectivity optimizes the number of required synapses. This suggests that the number of required synapses may be a crucial constraining factor in biological neural networks. Synaptic savings increase with the dimensionality of the encoded variables. We find a trade-off between saving synapses and response speed. The response speed improves by orders of magnitude when utilizing the window of opportunity between excitatory and delayed inhibitory currents that arises if, as found in experiments, spike frequency adaptation is present or strong recurrent excitation is balanced by strong, shortly-lagged inhibition.
生物神经网络和人工神经网络的一个标志是,神经元通过重叠响应来覆盖连续的感觉输入和内在变量范围。皮层中潜在的循环连接的特点是,具有相似调谐的神经元主要相互兴奋。这种架构的原因尚不清楚。我们使用一个易于分析处理的模型以及脉冲神经网络表明,它可以自然地从一种协同编码方案中产生。在这种方案中,具有相似响应的神经元通过共享它们的计算来特别地相互支持,以获得所需的群体编码。这种共享允许每个神经元有效地响应各种各样的输入,同时只接收很少的前馈和循环连接。然后,很少的强的、特定的循环连接取代了许多前馈和不太特定的循环连接,从而使得到的连接优化了所需突触的数量。这表明所需突触的数量可能是生物神经网络中的一个关键限制因素。突触节省随着编码变量的维度增加而增加。我们发现了在节省突触和响应速度之间的权衡。当利用兴奋性电流和延迟抑制性电流之间的机会窗口时,响应速度会提高几个数量级,这种机会窗口如果像实验中发现的那样存在脉冲频率适应或强循环兴奋由强的、短延迟抑制平衡时就会出现。