Department of Mathematics and Statistics, Elon University, Elon, NC, USA.
Mathematics Department, Bellarmine University, Louisville, KY, USA.
Math Biosci. 2021 Jun;336:108591. doi: 10.1016/j.mbs.2021.108591. Epub 2021 Mar 26.
Neurons in the inhibitory network of the striatum display cell assembly firing patterns which recent results suggest may consist of spatially compact neural clusters. Previous computational modeling of striatal neural networks has indicated that non-monotonic, distance-dependent coupling may promote spatially localized cluster firing. Here, we identify conditions for the existence and stability of cluster firing solutions in which clusters consist of spatially adjacent neurons in inhibitory neural networks. We consider simple non-monotonic, distance-dependent connectivity schemes in weakly coupled 1-D networks where cells make stronger connections with their kth nearest neighbors on each side and weaker connections with closer neighbors. Using the phase model reduction of the network system, we prove the existence of cluster solutions where neurons that are spatially close together are also synchronized in the same cluster, and find stability conditions for these solutions. Our analysis predicts the long-term behavior for networks of neurons, and we confirm our results by numerical simulations of biophysical neuron network models. Our results demonstrate that an inhibitory network with non-monotonic, distance-dependent connectivity can exhibit cluster solutions where adjacent cells fire together.
纹状体抑制性网络中的神经元表现出细胞集合发射模式,最近的研究结果表明,这些模式可能由空间紧凑的神经簇组成。先前对纹状体神经网络的计算模型表明,非单调、距离依赖的耦合可能促进空间局部簇发射。在这里,我们确定了在簇由抑制性神经网络中空间相邻的神经元组成的情况下,簇发射解的存在和稳定性的条件。我们考虑了在弱耦合 1-D 网络中简单的非单调、距离依赖的连接方案,其中细胞与每一侧的第 k 近邻建立更强的连接,与更近的邻居建立更弱的连接。使用网络系统的相位模型约化,我们证明了存在簇解,其中空间上接近的神经元在同一簇中也同步,并且找到了这些解的稳定性条件。我们的分析预测了神经元网络的长期行为,并且通过生物物理神经元网络模型的数值模拟证实了我们的结果。我们的结果表明,具有非单调、距离依赖的连接的抑制性网络可以表现出簇解,其中相邻的细胞一起发射。