Department of Electrical Engineering and Computer Sciences, University of California Berkeley, CA, USA.
J Neural Eng. 2012 Apr;9(2):026004. doi: 10.1088/1741-2560/9/2/026004. Epub 2012 Feb 13.
Neurons in the brain form highly complex networks through synaptic connections. Traditionally, functional connectivity between neurons has been explored using methods such as correlations, which do not contain any notion of directionality. Recently, an information-theoretic approach based on directed information theory has been proposed as a way to infer the direction of influence. However, it is still unclear whether this new approach provides any additional insight beyond conventional correlation analyses. In this paper, we present a modified procedure for estimating directed information and provide a comparison of results obtained using correlation analyses on both simulated and experimental data. Using physiologically realistic simulations, we demonstrate that directed information can outperform correlation in determining connections between neural spike trains while also providing directionality of the relationship, which cannot be assessed using correlation. Secondly, applying our method to rodent and primate data sets, we demonstrate that directed information can accurately estimate the conduction delay in connections between different brain structures. Moreover, directed information reveals connectivity structures that are not captured by correlations. Hence, directed information provides accurate and novel insights into the functional connectivity of neural ensembles that are applicable to data from neurophysiological studies in awake behaving animals.
大脑中的神经元通过突触连接形成高度复杂的网络。传统上,通过相关等方法来研究神经元之间的功能连接,这些方法不包含任何方向性的概念。最近,一种基于有向信息理论的信息论方法被提出来作为推断影响方向的一种方法。然而,目前尚不清楚这种新方法是否提供了比传统相关分析更多的见解。在本文中,我们提出了一种改进的有向信息估计方法,并对模拟和实验数据的相关分析结果进行了比较。通过生理上逼真的模拟,我们证明有向信息在确定神经尖峰序列之间的连接方面可以优于相关分析,同时还提供了无法使用相关分析评估的关系的方向性。其次,将我们的方法应用于啮齿动物和灵长类动物数据集,我们证明有向信息可以准确估计不同大脑结构之间连接的传导延迟。此外,有向信息揭示了相关性无法捕捉到的连接结构。因此,有向信息为功能连接提供了准确而新颖的见解,适用于清醒行为动物的神经生理学研究中的数据。