Nie Yimin, Fellous Jean-Marc, Tatsuno Masami
Department of Neuroscience, Canadian Center for Behavioural Neuroscience, University of Lethbridge, Lethbridge, AB T1K 3M4 Canada
Neural Comput. 2014 Oct;26(10):2247-93. doi: 10.1162/NECO_a_00633. Epub 2014 Jun 12.
The investigation of neural interactions is crucial for understanding information processing in the brain. Recently an analysis method based on information geometry (IG) has gained increased attention, and the property of the pairwise IG measure has been studied extensively in relation to the two-neuron interaction. However, little is known about the property of IG measures involving more neuronal interactions. In this study, we systematically investigated the influence of external inputs and the asymmetry of connections on the IG measures in cases ranging from 1-neuron to 10-neuron interactions. First, the analytical relationship between the IG measures and external inputs was derived for a network of 10 neurons with uniform connections. Our results confirmed that the single and pairwise IG measures were good estimators of the mean background input and of the sum of the connection weights, respectively. For the IG measures involving 3 to 10 neuronal interactions, we found that the influence of external inputs was highly nonlinear. Second, by computer simulation, we extended our analytical results to asymmetric connections. For a network of 10 neurons, the simulation showed that the behavior of the IG measures in relation to external inputs was similar to the analytical solution obtained for a uniformly connected network. When the network size was increased to 1000 neurons, the influence of external inputs almost disappeared. This result suggests that all IG measures from 1-neuron to 10-neuron interactions are robust against the influence of external inputs. In addition, we investigated how the strength of asymmetry influenced the IG measures. Computer simulation of a 1000-neuron network showed that all the IG measures were robust against the modulation of the asymmetry of connections. Our results provide further support for an information-geometric approach and will provide useful insights when these IG measures are applied to real experimental spike data.
对神经交互作用的研究对于理解大脑中的信息处理至关重要。最近,一种基于信息几何(IG)的分析方法受到了越来越多的关注,并且成对IG测度的性质已被广泛研究,涉及双神经元交互作用。然而,对于涉及更多神经元交互作用的IG测度的性质却知之甚少。在本研究中,我们系统地研究了外部输入和连接不对称性对从单神经元到十神经元交互作用情况下IG测度的影响。首先,针对具有均匀连接的10个神经元的网络,推导了IG测度与外部输入之间的解析关系。我们的结果证实,单神经元和成对IG测度分别是平均背景输入和连接权重总和的良好估计量。对于涉及3到10个神经元交互作用的IG测度,我们发现外部输入的影响是高度非线性的。其次,通过计算机模拟,我们将分析结果扩展到不对称连接。对于一个由10个神经元组成的网络,模拟表明IG测度相对于外部输入的行为与均匀连接网络得到的解析解相似。当网络规模增加到1000个神经元时,外部输入的影响几乎消失。这一结果表明,从单神经元到十神经元交互作用的所有IG测度对外部输入的影响具有鲁棒性。此外,我们研究了不对称强度如何影响IG测度。对一个1000个神经元网络的计算机模拟表明,所有IG测度对连接不对称性的调制具有鲁棒性。我们的结果为信息几何方法提供了进一步的支持,并且当这些IG测度应用于实际实验尖峰数据时将提供有用的见解。