Hemmen J L van
Department of Mathematics, The University of Chicago, Chicago, IL 60637, USA.
Biol Cybern. 2004 Dec;91(6):347-58. doi: 10.1007/s00422-004-0530-2. Epub 2004 Nov 12.
As a simple model of cortical tissue, we study a locally connected network of spiking neurons in the continuum limit of space and time. This is to be contrasted with the usual numerical simulations that discretize both of them. Refractoriness, noise, axonal delays, and the time course of excitatory and inhibitory postsynaptic potentials have been taken into account explicitly. We pose, and answer, the question of whether the continuum limit presents a full description of scenarios found numerically (the answer is no, not quite). In other words, can the numerics be reduced to a continuum description of a well-known type? As a corollary, we derive some classical results such as those of Wilson and Cowan (1973), thus indicating under what conditions they are valid. Furthermore, we show that spatially discrete objects may be fragile due to noise arising from the stochasticity of the individual neurons, whereas they are not once the continuum limit has been taken. This, then, resolves the above question. Finally, we indicate how one can directly incorporate orientation preference of the neurons.
作为皮质组织的一个简单模型,我们在时空的连续极限下研究了一个局部连接的脉冲神经元网络。这与通常对时空都进行离散化的数值模拟形成对比。我们明确考虑了不应期、噪声、轴突延迟以及兴奋性和抑制性突触后电位的时间进程。我们提出并回答了连续极限是否能完整描述数值模拟中发现的情况这一问题(答案是否定的,并不完全能)。换句话说,数值模拟能否简化为一种众所周知类型的连续描述?作为一个推论,我们推导出了一些经典结果,比如威尔逊和考恩(1973年)的结果,从而表明它们在何种条件下是有效的。此外,我们表明由于单个神经元的随机性产生的噪声,空间离散对象可能是脆弱的,而一旦采用连续极限,它们就不再脆弱。这样就解决了上述问题。最后,我们指出如何能直接纳入神经元的方向偏好。