Monasson Remi, Cocco Simona
Laboratoire de Physique Théorique de l'ENS, CNRS & UPMC, 24 rue Lhomond, 75005, Paris, France.
J Comput Neurosci. 2011 Oct;31(2):199-227. doi: 10.1007/s10827-010-0306-8. Epub 2011 Jan 11.
We present two Bayesian procedures to infer the interactions and external currents in an assembly of stochastic integrate-and-fire neurons from the recording of their spiking activity. The first procedure is based on the exact calculation of the most likely time courses of the neuron membrane potentials conditioned by the recorded spikes, and is exact for a vanishing noise variance and for an instantaneous synaptic integration. The second procedure takes into account the presence of fluctuations around the most likely time courses of the potentials, and can deal with moderate noise levels. The running time of both procedures is proportional to the number S of spikes multiplied by the squared number N of neurons. The algorithms are validated on synthetic data generated by networks with known couplings and currents. We also reanalyze previously published recordings of the activity of the salamander retina (including from 32 to 40 neurons, and from 65,000 to 170,000 spikes). We study the dependence of the inferred interactions on the membrane leaking time; the differences and similarities with the classical cross-correlation analysis are discussed.
我们提出了两种贝叶斯程序,用于根据随机积分发放神经元群体的放电活动记录来推断其相互作用和外部电流。第一种程序基于对由记录的尖峰所条件化的神经元膜电位最可能的时间进程进行精确计算,并且对于消失的噪声方差和瞬时突触整合是精确的。第二种程序考虑了围绕电位最可能时间进程的波动的存在,并且可以处理中等噪声水平。两种程序的运行时间都与尖峰数量S乘以神经元数量N的平方成正比。这些算法在具有已知耦合和电流的网络生成的合成数据上得到了验证。我们还重新分析了先前发表的蝾螈视网膜活动记录(包括32至40个神经元,以及65000至170000个尖峰)。我们研究了推断的相互作用对膜漏电时间的依赖性;并讨论了与经典互相关分析的异同。