Faculty of Biomedical Engineering, Technion - Israel Institute of Technology Haifa, Israel.
Front Comput Neurosci. 2010 Nov 19;4:147. doi: 10.3389/fncom.2010.00147. eCollection 2010.
The correlation structure of neural activity is believed to play a major role in the encoding and possibly the decoding of information in neural populations. Recently, several methods were developed for exactly controlling the correlation structure of multi-channel synthetic spike trains (Brette, 2009; Krumin and Shoham, 2009; Macke et al., 2009; Gutnisky and Josic, 2010; Tchumatchenko et al., 2010) and, in a related work, correlation-based analysis of spike trains was used for blind identification of single-neuron models (Krumin et al., 2010), for identifying compact auto-regressive models for multi-channel spike trains, and for facilitating their causal network analysis (Krumin and Shoham, 2010). However, the diversity of correlation structures that can be explained by the feed-forward, non-recurrent, generative models used in these studies is limited. Hence, methods based on such models occasionally fail when analyzing correlation structures that are observed in neural activity. Here, we extend this framework by deriving closed-form expressions for the correlation structure of a more powerful multivariate self- and mutually exciting Hawkes model class that is driven by exogenous non-negative inputs. We demonstrate that the resulting Linear-Non-linear-Hawkes (LNH) framework is capable of capturing the dynamics of spike trains with a generally richer and more biologically relevant multi-correlation structure, and can be used to accurately estimate the Hawkes kernels or the correlation structure of external inputs in both simulated and real spike trains (recorded from visually stimulated mouse retinal ganglion cells). We conclude by discussing the method's limitations and the broader significance of strengthening the links between neural spike train analysis and classical system identification.
神经活动的相关结构被认为在神经群体中对信息的编码和可能的解码起着重要作用。最近,已经开发了几种方法来精确控制多通道合成尖峰列车的相关结构(Brette,2009 年;Krumin 和 Shoham,2009 年;Macke 等人,2009 年;Gutnisky 和 Josic,2010 年;Tchumatchenko 等人,2010 年),并且在相关工作中,基于相关的尖峰列车分析用于盲目的单神经元模型识别(Krumin 等人,2010 年),用于识别多通道尖峰列车的紧凑自回归模型,以及促进它们的因果网络分析(Krumin 和 Shoham,2010 年)。然而,在这些研究中使用的前馈、非递归、生成模型可以解释的相关结构多样性是有限的。因此,基于这些模型的方法在分析在神经活动中观察到的相关结构时偶尔会失败。在这里,我们通过为更强大的多元自激发和相互激发 Hawkes 模型类的相关结构导出封闭形式的表达式来扩展这个框架,该模型类由外部非负输入驱动。我们证明,所得的线性非线性 Hawkes(LNH)框架能够捕捉尖峰列车的动力学,具有更丰富和更具生物学相关性的多相关结构,并且可以用于准确估计 Hawkes 核或外部输入的相关结构在模拟和真实尖峰列车(从视觉刺激的小鼠视网膜神经节细胞记录)中。最后,我们讨论了该方法的局限性以及加强神经尖峰列车分析与经典系统识别之间联系的更广泛意义。