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用指定的时变尖峰率、试验间变异性以及成对信号和噪声相关性来模拟群体尖峰序列。

Modeling Population Spike Trains with Specified Time-Varying Spike Rates, Trial-to-Trial Variability, and Pairwise Signal and Noise Correlations.

机构信息

Division of Neurobiology, Department of Biology II, Ludwig-Maximilians-University Munich Martinsried, Germany.

出版信息

Front Comput Neurosci. 2010 Nov 15;4:144. doi: 10.3389/fncom.2010.00144. eCollection 2010.

Abstract

As multi-electrode and imaging technology begin to provide us with simultaneous recordings of large neuronal populations, new methods for modeling such data must also be developed. Here, we present a model for the type of data commonly recorded in early sensory pathways: responses to repeated trials of a sensory stimulus in which each neuron has it own time-varying spike rate (as described by its PSTH) and the dependencies between cells are characterized by both signal and noise correlations. This model is an extension of previous attempts to model population spike trains designed to control only the total correlation between cells. In our model, the response of each cell is represented as a binary vector given by the dichotomized sum of a deterministic "signal" that is repeated on each trial and a Gaussian random "noise" that is different on each trial. This model allows the simulation of population spike trains with PSTHs, trial-to-trial variability, and pairwise correlations that match those measured experimentally. Furthermore, the model also allows the noise correlations in the spike trains to be manipulated independently of the signal correlations and single-cell properties. To demonstrate the utility of the model, we use it to simulate and manipulate experimental responses from the mammalian auditory and visual systems. We also present a general form of the model in which both the signal and noise are Gaussian random processes, allowing the mean spike rate, trial-to-trial variability, and pairwise signal and noise correlations to be specified independently. Together, these methods for modeling spike trains comprise a potentially powerful set of tools for both theorists and experimentalists studying population responses in sensory systems.

摘要

随着多电极和成像技术开始为我们提供同时记录大量神经元群体的能力,也必须开发新的方法来对这些数据进行建模。在这里,我们提出了一种用于模拟早期感觉通路中常见数据类型的模型:对感觉刺激的重复试验的反应,其中每个神经元都有自己随时间变化的尖峰率(如 PSTH 所描述的),并且细胞之间的依赖关系由信号和噪声相关性来描述。这个模型是对以前尝试对群体尖峰序列进行建模的扩展,旨在仅控制细胞之间的总相关性。在我们的模型中,每个细胞的反应表示为一个二进制向量,由在每个试验上重复的确定性“信号”的二分和在每个试验上不同的高斯随机“噪声”的二分组成。该模型允许模拟具有 PSTH、试验间变异性和与实验测量相匹配的成对相关性的群体尖峰序列。此外,该模型还允许独立于信号相关性和单细胞特性来操纵尖峰序列中的噪声相关性。为了展示模型的实用性,我们使用它来模拟和操纵来自哺乳动物听觉和视觉系统的实验反应。我们还提出了该模型的一般形式,其中信号和噪声都是高斯随机过程,允许独立指定平均尖峰率、试验间变异性以及成对信号和噪声相关性。这些用于模拟尖峰序列的方法共同构成了一套用于研究感觉系统群体反应的理论家与实验者的潜在强大工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6c50/2998046/218af2da9d8a/fncom-04-00144-g001.jpg

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