Miran Sina, Purdon Patrick L, Brown Emery N, Babadi Behtash
IEEE Trans Biomed Eng. 2017 Oct;64(10):2462-2474. doi: 10.1109/TBME.2016.2642783. Epub 2016 Dec 22.
Characterizing the spectral properties of neuronal responses is an important problem in computational neuroscience, as it provides insight into the spectral organization of the underlying functional neural processes. Although spectral analysis techniques are widely used in the analysis of noninvasive neural recordings such as EEG, their application to spiking data is limited due to the binary and nonlinear nature of neuronal spiking. In this paper, we address the problem of estimating the power spectral density of the neural covariate driving the spiking statistics of a neuronal population from binary observations.
We consider a neuronal ensemble spiking according to Bernoulli statistics, for which the conditional intensity function is given by the logistic map of a harmonic second-order stationary process with sparse narrowband spectra. By employing sparsity-promoting priors, we compute the maximum a posteriori estimate of the power spectral density of the process from the binary spiking observations. Furthermore, we construct confidence intervals for these estimates by an efficient posterior sampling procedure.
We provide simulation studies which reveal that our method outperforms the existing methods for extracting the frequency content of spiking data. Application of our method to clinically recorded spiking data from a patient under general anesthesia reveals a striking resemblance between our estimated power spectral density and that of the local field potential signal. This result corroborates existing findings regarding the salient role of the local field potential as a major neural covariate of rhythmic cortical spiking activity under anesthesia.
Our technique allows us to analyze the harmonic structure of spiking activity in a robust fashion, independently of the local field potentials, and without any prior assumption of the spectral spread and content of the underlying neural processes.
Other than its usage in the spectral analysis of neuronal spiking data, our technique can be applied to a wide variety of binary data, such as heart beat data, in order to obtain a robust spectral representation.
表征神经元反应的频谱特性是计算神经科学中的一个重要问题,因为它能深入了解潜在功能性神经过程的频谱组织。尽管频谱分析技术广泛应用于脑电图等非侵入性神经记录的分析,但由于神经元放电的二元性和非线性性质,它们在尖峰数据中的应用受到限制。在本文中,我们解决了从二元观测估计驱动神经元群体放电统计的神经协变量的功率谱密度这一问题。
我们考虑根据伯努利统计进行放电的神经元集合,其条件强度函数由具有稀疏窄带频谱的谐波二阶平稳过程的逻辑斯谛映射给出。通过采用促进稀疏性的先验,我们从二元放电观测中计算该过程功率谱密度的最大后验估计。此外,我们通过有效的后验采样程序为这些估计构建置信区间。
我们提供的模拟研究表明,我们的方法在提取放电数据频率内容方面优于现有方法。将我们的方法应用于全身麻醉患者的临床记录放电数据,结果显示我们估计的功率谱密度与局部场电位信号的功率谱密度惊人地相似。这一结果证实了关于局部场电位在麻醉下作为节律性皮层放电活动的主要神经协变量的显著作用的现有发现。
我们的技术使我们能够以稳健的方式分析放电活动的谐波结构,独立于局部场电位,并且无需对潜在神经过程的频谱扩展和内容做任何先验假设。
除了用于神经元放电数据的频谱分析外,我们的技术还可应用于各种二元数据,如心跳数据,以获得稳健的频谱表示。