Wang Rubin, Zhang Zhikang, Qu Jingyi, Cao Jianting
Institute for Cognitive Neurodynamics, School of Science, School of Information Science and Engineering, East China University of Science and Technology, Shanghai, China.
IEEE Trans Neural Netw. 2011 Jul;22(7):1097-106. doi: 10.1109/TNN.2011.2119377. Epub 2011 Jun 7.
In order to explore the dynamic characteristics of neural coding in the transmission of neural information in the brain, a model of neural network consisting of three neuronal populations is proposed in this paper using the theory of stochastic phase dynamics. Based on the model established, the neural phase synchronization motion and neural coding under spontaneous activity and stimulation are examined, for the case of varying network structure. Our analysis shows that, under the condition of spontaneous activity, the characteristics of phase neural coding are unrelated to the number of neurons participated in neural firing within the neuronal populations. The result of numerical simulation supports the existence of sparse coding within the brain, and verifies the crucial importance of the magnitudes of the coupling coefficients in neural information processing as well as the completely different information processing capability of neural information transmission in both serial and parallel couplings. The result also testifies that under external stimulation, the bigger the number of neurons in a neuronal population, the more the stimulation influences the phase synchronization motion and neural coding evolution in other neuronal populations. We verify numerically the experimental result in neurobiology that the reduction of the coupling coefficient between neuronal populations implies the enhancement of lateral inhibition function in neural networks, with the enhancement equivalent to depressing neuronal excitability threshold. Thus, the neuronal populations tend to have a stronger reaction under the same stimulation, and more neurons get excited, leading to more neurons participating in neural coding and phase synchronization motion.
为了探索大脑中神经信息传递过程中神经编码的动态特性,本文利用随机相位动力学理论,提出了一种由三个神经元群体组成的神经网络模型。基于所建立的模型,针对不同网络结构的情况,研究了自发活动和刺激下的神经相位同步运动和神经编码。我们的分析表明,在自发活动条件下,相位神经编码的特性与神经元群体内参与神经放电的神经元数量无关。数值模拟结果支持了大脑中稀疏编码的存在,验证了耦合系数大小在神经信息处理中的关键重要性,以及串行和并行耦合中神经信息传输的完全不同的信息处理能力。结果还证明,在外部刺激下,神经元群体中的神经元数量越多,刺激对其他神经元群体中的相位同步运动和神经编码演化的影响就越大。我们通过数值验证了神经生物学中的实验结果,即神经元群体之间耦合系数的降低意味着神经网络中侧向抑制功能的增强,这种增强等同于降低神经元兴奋性阈值。因此,神经元群体在相同刺激下往往会有更强的反应,更多的神经元被激发,导致更多的神经元参与神经编码和相位同步运动。