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A small neural net simulates coherence and short-term memory in an insect olfactory system

机译:小型神经网络模拟昆虫嗅觉系统中的连贯性和短期记忆

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We present a simple neural network model which simulates the experimental action potentials measured by Laurent and coworkers from single local (LN) and projection neurons (PN) in the olfactory system of an insect, the locust. Our recurrent network consists of one LN and 80 PNs where the individual units (neurons) are described by the Hodgkin-Huxley model. Bifurcation diagrams for the isolated neurons are calculated, where the PNs are oscillatory whereas the LN is treated as a non-oscillatory steady state neuron. The PN-PN and PN-LN synapses are excitatory. Inhibitory synaptic coupling between the LN and all 80 PNs causes all PNs to fire coherently generating a local field potential which precedes the LN by a small phase-shift. The LN and the PNs receive a scaled antennal nerve current from the olfactory receptor neurons (ORNs) where the receptors bind odor molecules with specific binding constants in a simple "open" binding process. We assume, that the odor-bound receptors exist in two states; an active state (R-1) and an inactive state (R-2) leading to adaptation where R-1 is assumed to be proportional to the antennal nerve current. All synaptic strengths are augmented by small increments for each successive odor presentation. Thus, the short-term memory effect which has been measured by Stopfer and Laurent (M. Stopfer and G. Laurent, Nature, 1999, 402, 664) in 10 repeated presentations of the same odor, is successfully simulated: the PN action potentials decrease in intensity, successive signatures simplify and the PN-coherence increases. High PN-frequencies (>50 Hz) abolish the coherence in the range 20-50 Hz. A previously augmented synaptic strength is retained after 10 trials and a 30 s resting period to produce coherence in a "naive" part of the antenna in a subsequent trial. [References: 39]
机译:我们提出了一个简单的神经网络模型,该模型模拟了由Laurent和同事从昆虫(蝗虫)的嗅觉系统中的单个局部(LN)和投射神经元(PN)所测量的实验动作电位。我们的递归网络由一个LN和80个PN组成,其中单个单元(神经元)由Hodgkin-Huxley模型描述。计算分离的神经元的分叉图,其中PN是振荡的,而LN被视为非振荡稳态神经元。 PN-PN和PN-LN突触是兴奋性的。 LN与所有80个PN之间的抑制性突触耦合会导致所有PN连贯发射,从而产生一个局部场电势,该电势在LN之前经过一个小的相移。 LN和PNs从嗅觉受体神经元(ORN)接收缩放后的触神经电流,其中受体以简单的“开放”结合过程结合具有特定结合常数的气味分子。我们假设,气味结合受体以两种状态存在。导致适应的活动状态(R-1)和非活动状态(R-2),其中R-1被假定与触角神经电流成比例。对于每个连续的气味呈现,所有突触强度都会以较小的增量增加。因此,成功模拟了Stopfer和Laurent(M. Stopfer and G. Laurent,Nature,1999,402,664)在10次重复出现的相同气味中测得的短期记忆效应:PN动作电位强度降低,相继签名简化,PN相干性增加。高PN频率(> 50 Hz)消除了20-50 Hz范围内的相干性。在10次试验和30 s的静息期后,保留了先前增强的突触强度,以在随后的试验中在天线的“幼稚”部分产生连贯性。 [参考:39]

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