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Neurobiological Models of Two-Choice Decision Making Can Be Reduced to a One-Dimensional Nonlinear Diffusion Equation

机译:双向选择决策的神经生物学模型可以简化为一维非线性扩散方程

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摘要

The response behaviors in many two-alternative choice tasks are well described by so-called sequential sampling models. In these models, the evidence for each one of the two alternatives accumulates over time until it reaches a threshold, at which point a response is made. At the neurophysiological level, single neuron data recorded while monkeys are engaged in two-alternative choice tasks are well described by winner-take-all network models in which the two choices are represented in the firing rates of separate populations of neurons. Here, we show that such nonlinear network models can generally be reduced to a one-dimensional nonlinear diffusion equation, which bears functional resemblance to standard sequential sampling models of behavior. This reduction gives the functional dependence of performance and reaction-times on external inputs in the original system, irrespective of the system details. What is more, the nonlinear diffusion equation can provide excellent fits to behavioral data from two-choice decision making tasks by varying these external inputs. This suggests that changes in behavior under various experimental conditions, e.g. changes in stimulus coherence or response deadline, are driven by internal modulation of afferent inputs to putative decision making circuits in the brain. For certain model systems one can analytically derive the nonlinear diffusion equation, thereby mapping the original system parameters onto the diffusion equation coefficients. Here, we illustrate this with three model systems including coupled rate equations and a network of spiking neurons.
机译:所谓的顺序采样模型很好地描述了许多两种选择任务中的响应行为。在这些模型中,两个备选方案中的每一个的证据会随着时间累积,直到达到阈值为止,此时做出响应。在神经生理学水平上,胜利者通吃网络模型很好地描述了猴子参与两种替代选择任务时记录的单个神经元数据,其中两种选择以单独的神经元种群的发射率表示。在这里,我们表明这种非线性网络模型通常可以简化为一维非线性扩散方程,该方程与行为的标准顺序采样模型具有功能上的相似之处。这种减少使性能和反应时间在功能上取决于原始系统中的外部输入,而与系统细节无关。此外,通过改变这些外部输入,非线性扩散方程可以很好地拟合来自二选决策任务的行为数据。这表明在各种实验条件下的行为变化,例如刺激连贯性或响应期限的变化是由大脑中假定的决策电路的传入输入的内部调制驱动的。对于某些模型系统,可以分析得出非线性扩散方程,从而将原始系统参数映射到扩散方程系数上。在这里,我们用三个模型系统(包括耦合速率方程和尖峰神经元网络)说明了这一点。

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