Sadeh Sadra, Rotter Stefan
Bernstein Center Freiberg & Faculty of Biology, University of Freiberg, Freiberg, Germany.
PLoS Comput Biol. 2015 Jan 8;11(1):e1004045. doi: 10.1371/journal.pcbi.1004045. eCollection 2015 Jan.
The neuronal mechanisms underlying the emergence of orientation selectivity in the primary visual cortex of mammals are still elusive. In rodents, visual neurons show highly selective responses to oriented stimuli, but neighboring neurons do not necessarily have similar preferences. Instead of a smooth map, one observes a salt-and-pepper organization of orientation selectivity. Modeling studies have recently confirmed that balanced random networks are indeed capable of amplifying weakly tuned inputs and generating highly selective output responses, even in absence of feature-selective recurrent connectivity. Here we seek to elucidate the neuronal mechanisms underlying this phenomenon by resorting to networks of integrate-and-fire neurons, which are amenable to analytic treatment. Specifically, in networks of perfect integrate-and-fire neurons, we observe that highly selective and contrast invariant output responses emerge, very similar to networks of leaky integrate-and-fire neurons. We then demonstrate that a theory based on mean firing rates and the detailed network topology predicts the output responses, and explains the mechanisms underlying the suppression of the common-mode, amplification of modulation, and contrast invariance. Increasing inhibition dominance in our networks makes the rectifying nonlinearity more prominent, which in turn adds some distortions to the otherwise essentially linear prediction. An extension of the linear theory can account for all the distortions, enabling us to compute the exact shape of every individual tuning curve in our networks. We show that this simple form of nonlinearity adds two important properties to orientation selectivity in the network, namely sharpening of tuning curves and extra suppression of the modulation. The theory can be further extended to account for the nonlinearity of the leaky model by replacing the rectifier by the appropriate smooth input-output transfer function. These results are robust and do not depend on the state of network dynamics, and hold equally well for mean-driven and fluctuation-driven regimes of activity.
哺乳动物初级视觉皮层中方向选择性出现的神经元机制仍然难以捉摸。在啮齿动物中,视觉神经元对定向刺激表现出高度选择性反应,但相邻神经元不一定具有相似的偏好。人们观察到的不是平滑的图谱,而是方向选择性的椒盐组织。建模研究最近证实,即使在没有特征选择性递归连接的情况下,平衡随机网络确实能够放大弱调谐输入并产生高度选择性的输出反应。在这里,我们试图通过采用易于进行分析处理的积分发放神经元网络来阐明这一现象背后的神经元机制。具体而言,在完美积分发放神经元网络中,我们观察到出现了高度选择性和对比度不变的输出反应,这与泄漏积分发放神经元网络非常相似。然后,我们证明基于平均发放率和详细网络拓扑的理论可以预测输出反应,并解释抑制共模、放大调制和对比度不变性背后的机制。在我们的网络中增加抑制优势会使整流非线性更加突出,这反过来又会给原本基本线性的预测增加一些失真。线性理论的扩展可以解释所有这些失真,使我们能够计算出网络中每条单独调谐曲线的确切形状。我们表明,这种简单形式的非线性给网络中的方向选择性增加了两个重要特性,即调谐曲线的锐化和调制的额外抑制。通过用适当的平滑输入-输出传递函数代替整流器,该理论可以进一步扩展以解释泄漏模型的非线性。这些结果是稳健的,不依赖于网络动力学状态,并且对于平均驱动和波动驱动的活动状态同样适用。