Kunert-Graf James M, Shlizerman Eli, Walker Andrew, Kutz J Nathan
Department of Physics, University of WashingtonSeattle, WA, United States.
Department of Applied Mathematics, University of WashingtonSeattle, WA, United States.
Front Comput Neurosci. 2017 Jun 13;11:53. doi: 10.3389/fncom.2017.00053. eCollection 2017.
The neural dynamics of the nematode are experimentally low-dimensional and may be understood as long-timescale transitions between multiple low-dimensional attractors. Previous modeling work has found that dynamic models of the worm's full neuronal network are capable of generating reasonable dynamic responses to certain inputs, even when all neurons are treated as identical save for their connectivity. This study investigates such a model of neuronal dynamics, finding that a wide variety of multistable responses are generated in response to varied inputs. Specifically, we generate bifurcation diagrams for all possible single-neuron inputs, showing the existence of fixed points and limit cycles for different input regimes. The nature of the dynamical response is seen to vary according to the type of neuron receiving input; for example, input into sensory neurons is more likely to drive a bifurcation in the system than input into motor neurons. As a specific example we consider compound input into the neuron pairs PLM and ASK, discovering bistability of a limit cycle and a fixed point. The transient timescales in approaching each of these states are much longer than any intrinsic timescales of the system. This suggests consistency of our model with the characterization of dynamics in neural systems as long-timescale transitions between discrete, low-dimensional attractors corresponding to behavioral states.
线虫的神经动力学在实验上是低维的,可被理解为多个低维吸引子之间的长时间尺度转换。先前的建模工作发现,即使将所有神经元视为除连接性外都相同,蠕虫完整神经网络的动力学模型也能够对某些输入产生合理的动态响应。本研究调查了这样一种神经元动力学模型,发现针对不同输入会产生各种各样的多稳态响应。具体而言,我们针对所有可能的单神经元输入生成了分岔图,展示了不同输入状态下不动点和极限环的存在情况。动力学响应的性质会根据接收输入的神经元类型而有所不同;例如,与输入到运动神经元相比,输入到感觉神经元更有可能驱动系统中的分岔。作为一个具体例子,我们考虑对神经元对PLM和ASK的复合输入,发现了极限环和不动点的双稳态。接近这些状态中的每一个的瞬态时间尺度都比系统的任何固有时间尺度长得多。这表明我们的模型与将神经系统动力学表征为对应于行为状态的离散、低维吸引子之间的长时间尺度转换是一致的。