Hu Meng, Li Mingyao, Li Wu, Liang Hualou
School of Biomedical Engineering, Drexel University, Philadelphia, PA 19104.
Department of Biostatistics and Epidemiology, University of Pennsylvania School of Medicine, Philadelphia, Pennsylvania 19104.
Neuroimage. 2016 Jun;133:457-467. doi: 10.1016/j.neuroimage.2016.03.030. Epub 2016 Mar 22.
Recent technological advances, which allow for simultaneous recording of spikes and local field potentials (LFPs) at multiple sites in a given cortical area or across different areas, have greatly increased our understanding of signal processing in brain circuits. Joint analysis of simultaneously collected spike and LFP signals is an important step to explicate how the brain orchestrates information processing. In this contribution, we present a novel statistical framework based on Gaussian copula to jointly model spikes and LFP. In our approach, we use copula to link separate, marginal regression models to construct a joint regression model, in which the binary-valued spike train data are modeled using generalized linear model (GLM) and the continuous-valued LFP data are modeled using linear regression. Model parameters can be efficiently estimated via maximum-likelihood. In particular, we show that our model offers a means to statistically detect directional influence between spikes and LFP, akin to Granger causality measure, and that we are able to assess its statistical significance by conducting a Wald test. Through extensive simulations, we also show that our method is able to reliably recover the true model used to generate the data. To demonstrate the effectiveness of our approach in real setting, we further apply the method to a mixed neural dataset, consisting of spikes and LFP simultaneously recorded from the visual cortex of a monkey performing a contour detection task.
最近的技术进步使得在给定皮质区域的多个位点或跨不同区域同时记录尖峰信号和局部场电位(LFP)成为可能,这极大地增进了我们对脑回路中信号处理的理解。对同时收集的尖峰信号和LFP信号进行联合分析是阐明大脑如何协调信息处理的重要一步。在本论文中,我们提出了一种基于高斯Copula的新型统计框架,用于对尖峰信号和LFP进行联合建模。在我们的方法中,我们使用Copula将单独的边际回归模型链接起来,构建一个联合回归模型,其中二元值的尖峰序列数据使用广义线性模型(GLM)建模,连续值的LFP数据使用线性回归建模。模型参数可以通过最大似然法有效地估计。特别地,我们表明我们的模型提供了一种类似于格兰杰因果关系度量的方法来统计检测尖峰信号和LFP之间的方向性影响,并且我们能够通过进行Wald检验来评估其统计显著性。通过广泛的模拟,我们还表明我们的方法能够可靠地恢复用于生成数据的真实模型。为了证明我们的方法在实际应用中的有效性,我们进一步将该方法应用于一个混合神经数据集,该数据集由一只执行轮廓检测任务的猴子视觉皮层同时记录的尖峰信号和LFP组成。