Neural Comput. 2013 Aug;25(8):2108-45. doi: 10.1162/NECO_a_00473. Epub 2013 May 10.
Neuroscientists have carried out comprehensive experiments to reveal the neural mechanisms underlying the perceptual decision making that pervades daily life. These experiments have illuminated salient features of decision making, including probabilistic choice behavior, the ramping activity of decision-related neurons, and the dependence of decision time and accuracy on the difficulty of the task. Spiking network models have reproduced these features, and a two-dimensional mean field model has demonstrated that the saddle node structure underlies two-alternative decision making. Here, we reduced a spiking network model to an analytically tractable, partial integro-differential system and characterized not only multiple-choice decision behaviors but also the time course of neural activities underlying decisions, providing a mechanistic explanation for the observations noted in the experiments. First, we observed that a two-bump unstable steady state of the system is responsible for two-choice decision making, similar to the saddle node structure in the two-dimensional mean field model. However, for four-choice decision making, three types of unstable steady states collectively predominate the time course of the evolution from the initial state to the stable states. Second, the time constant of the unstable steady state can explain the fact that four-choice decision making requires a longer time than two-choice decision making. However, the quicker decision, given a stronger motion strength, cannot be explained by the time constant of the unstable steady state. Rather, the decision time can be attributed to the projection coefficient of the difference between the initial state and the unstable steady state on the eigenvector corresponding to the largest positive eigenvalue.
神经科学家已经进行了全面的实验,以揭示日常生活中普遍存在的感知决策的神经机制。这些实验揭示了决策的显著特征,包括概率选择行为、与决策相关的神经元的渐变活动,以及决策时间和准确性对任务难度的依赖性。尖峰网络模型再现了这些特征,二维均值场模型表明鞍结结构是二择一决策的基础。在这里,我们将尖峰网络模型简化为可分析的部分积分微分系统,不仅描述了多选择决策行为,还描述了决策背后的神经活动的时间过程,为实验中观察到的现象提供了机制解释。首先,我们观察到系统的双峰不稳定稳态负责二择一决策,类似于二维均值场模型中的鞍结结构。然而,对于四择一决策,三种不稳定稳态共同主导着从初始状态到稳定状态的演化过程。其次,不稳定稳态的时间常数可以解释四择一决策比二择一决策需要更长时间的事实。然而,给定更强的运动强度,更快的决策不能用不稳定稳态的时间常数来解释。相反,决策时间可以归因于初始状态和不稳定稳态之间的差的投影系数在对应于最大正特征值的特征向量上。