Touboul Jonathan
NeuroMathComp Laboratory, 06902 Sophia-Antipolis, France.
Neural Comput. 2009 Aug;21(8):2114-22. doi: 10.1162/neco.2009.09-08-853.
The quadratic adaptive integrate-and-fire model (Izhikevich, 2003 , 2007 ) is able to reproduce various firing patterns of cortical neurons and is widely used in large-scale simulations of neural networks. This model describes the dynamics of the membrane potential by a differential equation that is quadratic in the voltage, coupled to a second equation for adaptation. Integration is stopped during the rise phase of a spike at a voltage cutoff value V(c) or when it blows up. Subsequently the membrane potential is reset, and the adaptation variable is increased by a fixed amount. We show in this note that in the absence of a cutoff value, not only the voltage but also the adaptation variable diverges in finite time during spike generation in the quadratic model. The divergence of the adaptation variable makes the system very sensitive to the cutoff: changing V(c) can dramatically alter the spike patterns. Furthermore, from a computational viewpoint, the divergence of the adaptation variable implies that the time steps for numerical simulation need to be small and adaptive. However, divergence of the adaptation variable does not occur for the quartic model (Touboul, 2008 ) and the adaptive exponential integrate-and-fire model (Brette & Gerstner, 2005 ). Hence, these models are robust to changes in the cutoff value.
二次自适应积分发放模型(Izhikevich,2003年,2007年)能够重现皮层神经元的各种发放模式,并广泛应用于神经网络的大规模模拟。该模型通过一个电压的二次微分方程来描述膜电位的动力学,该方程与一个用于适应的第二个方程相耦合。在尖峰的上升阶段,当电压达到截止值V(c)或膜电位爆炸时,积分停止。随后,膜电位被重置,适应变量增加一个固定量。我们在本笔记中表明,在没有截止值的情况下,不仅电压而且适应变量在二次模型的尖峰产生过程中在有限时间内发散。适应变量的发散使系统对截止值非常敏感:改变V(c)会显著改变尖峰模式。此外,从计算的角度来看,适应变量的发散意味着数值模拟的时间步长需要很小且具有适应性。然而,对于四次模型(Touboul,2008年)和自适应指数积分发放模型(Brette & Gerstner,2005年),适应变量不会发散。因此,这些模型对截止值的变化具有鲁棒性。