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脑刺激奖赏神经基质中频率跟随保真度的心理物理学推断

Psychophysical inference of frequency-following fidelity in the neural substrate for brain stimulation reward.

作者信息

Solomon R B, Trujillo-Pisanty I, Conover K, Shizgal P

机构信息

Center for Studies in Behavioural Neurobiology/Groupe de Recherche en Neurobiologie Comportementale, Concordia University, 7141 Sherbrooke Street West, SP-244, Montréal, Québec H4B 1R6, Canada.

出版信息

Behav Brain Res. 2015 Oct 1;292:327-41. doi: 10.1016/j.bbr.2015.06.008. Epub 2015 Jun 7.

Abstract

The rewarding effect of electrical brain stimulation has been studied extensively for 60 years, yet the identity of the underlying neural circuitry remains unknown. Previous experiments have characterized the directly stimulated ("first-stage") neurons implicated in self-stimulation of the medial forebrain bundle. Their properties are consistent with those of fine, myelinated axons, at least some of which project rostro-caudally. These properties do not match those of dopaminergic neurons. The present psychophysical experiment estimates an additional first-stage characteristic: maximum firing frequency. We test a frequency-following model that maps the experimenter-set pulse frequency into the frequency of firing induced in the directly stimulated neurons. As pulse frequency is increased, firing frequency initially increases at the same rate, then becomes probabilistic, and finally levels off. The frequency-following function is based on the counter model which holds that the rewarding effect of a pulse train is determined by the aggregate spike rate triggered in first-stage neurons during a given interval. In 7 self-stimulating rats, we measured current- vs. pulse-frequency trade-off functions. The trade-off data were well described by the frequency-following model, and its upper asymptote was approached at a median value of 360 Hz (IQR = 46 Hz). This value implies a highly excitable, non-dopaminergic population of first-stage neurons. Incorporating the frequency-following function and parameters in Shizgal's 3-dimensional reward-mountain model improves its accuracy and predictive power.

摘要

脑电刺激的奖赏效应已被广泛研究了60年,但潜在神经回路的身份仍然未知。先前的实验已经对参与内侧前脑束自我刺激的直接刺激(“第一阶段”)神经元进行了表征。它们的特性与细的、有髓鞘的轴突一致,其中至少一些轴突向头尾方向投射。这些特性与多巴胺能神经元的特性不匹配。目前的心理物理学实验估计了另一个第一阶段特征:最大放电频率。我们测试了一个频率跟随模型,该模型将实验者设定的脉冲频率映射到直接刺激神经元中诱导的放电频率。随着脉冲频率的增加,放电频率最初以相同的速率增加,然后变得具有概率性,最后趋于平稳。频率跟随函数基于计数器模型,该模型认为脉冲序列的奖赏效应由给定间隔内第一阶段神经元触发的总尖峰率决定。在7只自我刺激的大鼠中,我们测量了电流与脉冲频率的权衡函数。频率跟随模型很好地描述了权衡数据,并且在360 Hz的中值(IQR = 46 Hz)处接近其上渐近线。这个值意味着第一阶段神经元是高度可兴奋的、非多巴胺能的群体。将频率跟随函数和参数纳入Shizgal的三维奖赏山模型中可以提高其准确性和预测能力。

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