Chen Zhe, Vijayan Sujith, Ching ShiNung, Hale Greg, Flores Francisco J, Wilson Matthew A, Brown Emery N
Department of Brain and Cognitive Sciences, MIT, Cambridge, MA 02139, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:4175-8. doi: 10.1109/IEMBS.2011.6091036.
Understanding the way in which groups of cortical neurons change their individual and mutual firing activity during the induction of general anesthesia may improve the safe usage of many anesthetic agents. Assessing neuronal interactions within cell assemblies during anesthesia may be useful for understanding the neural mechanisms of general anesthesia. Here, a point process generalized linear model (PPGLM) was applied to infer the functional connectivity of neuronal ensembles during both baseline and anesthesia, in which neuronal firing rates and network connectivity might change dramatically. A hierarchical Bayesian modeling approach combined with a variational Bayes (VB) algorithm is used for statistical inference. The effectiveness of our approach is evaluated with synthetic spike train data drawn from small and medium-size networks (consisting of up to 200 neurons), which are simulated using biophysical voltage-gated conductance models. We further apply the analysis to experimental spike train data recorded from rats' barrel cortex during both active behavior and isoflurane anesthesia conditions. Our results suggest that that neuronal interactions of both putative excitatory and inhibitory connections are reduced after the induction of isoflurane anesthesia.
了解在全身麻醉诱导过程中,皮层神经元群改变其个体和相互放电活动的方式,可能会改善多种麻醉剂的安全使用。评估麻醉期间细胞集合内的神经元相互作用,可能有助于理解全身麻醉的神经机制。在此,应用点过程广义线性模型(PPGLM)来推断基线期和麻醉期间神经元群体的功能连接性,在此期间神经元放电率和网络连接性可能会发生显著变化。一种结合变分贝叶斯(VB)算法的分层贝叶斯建模方法用于统计推断。我们用从中小型网络(由多达200个神经元组成)提取的合成脉冲序列数据评估了我们方法的有效性,这些网络是使用生物物理电压门控电导模型进行模拟的。我们进一步将该分析应用于在主动行为和异氟烷麻醉条件下从大鼠桶状皮层记录的实验脉冲序列数据。我们的结果表明,异氟烷麻醉诱导后,假定的兴奋性和抑制性连接的神经元相互作用均减弱。