Lefebvre Jeremie, Longtin Andre, LeBlanc Victor G
J Comput Neurosci. 2011 Aug;31(1):73-86. doi: 10.1007/s10827-010-0298-4. Epub 2010 Dec 18.
We investigate the role of adaptation in a neural field model, composed of ON and OFF cells, with delayed all-to-all recurrent connections. As external spatially profiled inputs drive the network, ON cells receive inputs directly, while OFF cells receive an inverted image of the original signals. Via global and delayed inhibitory connections, these signals can cause the system to enter states of sustained oscillatory activity. We perform a bifurcation analysis of our model to elucidate how neural adaptation influences the ability of the network to exhibit oscillatory activity. We show that slow adaptation encourages input-induced rhythmic states by decreasing the Andronov-Hopf bifurcation threshold. We further determine how the feedback and adaptation together shape the resonant properties of the ON and OFF cell network and how this affects the response to time-periodic input. By introducing an additional frequency in the system, adaptation alters the resonance frequency by shifting the peaks where the response is maximal. We support these results with numerical experiments of the neural field model. Although developed in the context of the circuitry of the electric sense, these results are applicable to any network of spontaneously firing cells with global inhibitory feedback to themselves, in which a fraction of these cells receive external input directly, while the remaining ones receive an inverted version of this input via feedforward di-synaptic inhibition. Thus the results are relevant beyond the many sensory systems where ON and OFF cells are usually identified, and provide the backbone for understanding dynamical network effects of lateral connections and various forms of ON/OFF responses.
我们研究了适应在一个由ON细胞和OFF细胞组成的神经场模型中的作用,该模型具有延迟的全对全循环连接。当外部空间分布的输入驱动网络时,ON细胞直接接收输入,而OFF细胞接收原始信号的反转图像。通过全局和延迟的抑制性连接,这些信号可使系统进入持续振荡活动状态。我们对模型进行了分岔分析,以阐明神经适应如何影响网络展现振荡活动的能力。我们表明,缓慢适应通过降低安德罗诺夫-霍普夫分岔阈值来促进输入诱导的节律状态。我们进一步确定了反馈和适应如何共同塑造ON细胞和OFF细胞网络的共振特性,以及这如何影响对周期性输入的响应。通过在系统中引入额外频率,适应通过移动响应最大的峰值来改变共振频率。我们用神经场模型的数值实验支持了这些结果。尽管这些结果是在电感觉的电路背景下得出的,但它们适用于任何具有自身全局抑制性反馈的自发放电细胞网络,其中一部分细胞直接接收外部输入,而其余细胞通过前馈双突触抑制接收该输入的反转版本。因此,这些结果不仅适用于通常识别出ON细胞和OFF细胞的许多感觉系统,而且为理解侧向连接的动态网络效应以及各种形式的ON/OFF响应提供了基础。