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从尖峰记录中快速推断随机积分发放神经元集合中的相互作用。

Fast inference of interactions in assemblies of stochastic integrate-and-fire neurons from spike recordings.

作者信息

Monasson Remi, Cocco Simona

机构信息

Laboratoire de Physique Théorique de l'ENS, CNRS & UPMC, 24 rue Lhomond, 75005, Paris, France.

出版信息

J Comput Neurosci. 2011 Oct;31(2):199-227. doi: 10.1007/s10827-010-0306-8. Epub 2011 Jan 11.

DOI:10.1007/s10827-010-0306-8
PMID:21222149
Abstract

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.

摘要

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。

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本文引用的文献

1
Inference of combinatorial neuronal synchrony with Bayesian networks.基于贝叶斯网络的组合神经元同步推断。
J Neurosci Methods. 2010 Jan 30;186(1):130-9. doi: 10.1016/j.jneumeth.2009.11.003. Epub 2009 Dec 1.
2
Neuroscience. How good are neuron models?神经科学。神经元模型的效果如何?
Science. 2009 Oct 16;326(5951):379-80. doi: 10.1126/science.1181936.
3
How connectivity, background activity, and synaptic properties shape the cross-correlation between spike trains.连通性、背景活动和突触特性如何塑造峰电位序列之间的互相关。
Netw Neurosci. 2017 Oct 1;1(3):275-301. doi: 10.1162/NETN_a_00014.
4
Learning neural connectivity from firing activity: efficient algorithms with provable guarantees on topology.从放电活动中学习神经连接性:具有拓扑结构可证保证的高效算法。
J Comput Neurosci. 2018 Apr;44(2):253-272. doi: 10.1007/s10827-018-0678-8. Epub 2018 Feb 20.
5
Functional connectivity models for decoding of spatial representations from hippocampal CA1 recordings.用于从海马体CA1记录中解码空间表征的功能连接模型。
J Comput Neurosci. 2017 Aug;43(1):17-33. doi: 10.1007/s10827-017-0645-9. Epub 2017 May 8.
J Neurosci. 2009 Aug 19;29(33):10234-53. doi: 10.1523/JNEUROSCI.1275-09.2009.
4
Neuronal couplings between retinal ganglion cells inferred by efficient inverse statistical physics methods.通过高效逆统计物理方法推断视网膜神经节细胞之间的神经元耦合。
Proc Natl Acad Sci U S A. 2009 Aug 18;106(33):14058-62. doi: 10.1073/pnas.0906705106. Epub 2009 Jul 31.
5
Replay of rule-learning related neural patterns in the prefrontal cortex during sleep.睡眠期间前额叶皮质中与规则学习相关的神经模式重现。
Nat Neurosci. 2009 Jul;12(7):919-26. doi: 10.1038/nn.2337. Epub 2009 May 31.
6
Efficient computation of the maximum a posteriori path and parameter estimation in integrate-and-fire and more general state-space models.积分发放及更一般状态空间模型中最大后验路径的高效计算与参数估计
J Comput Neurosci. 2010 Aug;29(1-2):89-105. doi: 10.1007/s10827-009-0150-x. Epub 2009 Apr 28.
7
Prediction of spatiotemporal patterns of neural activity from pairwise correlations.从成对相关性预测神经活动的时空模式。
Phys Rev Lett. 2009 Apr 3;102(13):138101. doi: 10.1103/PhysRevLett.102.138101. Epub 2009 Apr 2.
8
Origin of correlated activity between parasol retinal ganglion cells.伞状视网膜神经节细胞之间相关性活动的起源。
Nat Neurosci. 2008 Nov;11(11):1343-51. doi: 10.1038/nn.2199. Epub 2008 Sep 28.
9
Spatio-temporal correlations and visual signalling in a complete neuronal population.完整神经元群体中的时空相关性与视觉信号传导
Nature. 2008 Aug 21;454(7207):995-9. doi: 10.1038/nature07140. Epub 2008 Jul 23.
10
Behavior-dependent short-term assembly dynamics in the medial prefrontal cortex.内侧前额叶皮质中依赖行为的短期神经元集群动态变化
Nat Neurosci. 2008 Jul;11(7):823-33. doi: 10.1038/nn.2134. Epub 2008 May 30.