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首页> 外文期刊>Frontiers in Computational Neuroscience >A network model of basal ganglia for understanding the roles of dopamine and serotonin in reward-punishment-risk based decision making
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A network model of basal ganglia for understanding the roles of dopamine and serotonin in reward-punishment-risk based decision making

机译:基底神经节的网络模型,用于了解多巴胺和5-羟色胺在基于奖惩风险的决策中的作用

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摘要

There is significant evidence that in addition to reward-punishment based decision making, the Basal Ganglia (BG) contributes to risk-based decision making (Balasubramani et al., 2014 ). Despite this evidence, little is known about the computational principles and neural correlates of risk computation in this subcortical system. We have previously proposed a reinforcement learning (RL)-based model of the BG that simulates the interactions between dopamine (DA) and serotonin (5HT) in a diverse set of experimental studies including reward, punishment and risk based decision making (Balasubramani et al., 2014 ). Starting with the classical idea that the activity of mesencephalic DA represents reward prediction error, the model posits that serotoninergic activity in the striatum controls risk-prediction error. Our prior model of the BG was an abstract model that did not incorporate anatomical and cellular-level data. In this work, we expand the earlier model into a detailed network model of the BG and demonstrate the joint contributions of DA-5HT in risk and reward-punishment sensitivity. At the core of the proposed network model is the following insight regarding cellular correlates of value and risk computation. Just as DA D1 receptor (D1R) expressing medium spiny neurons (MSNs) of the striatum were thought to be the neural substrates for value computation, we propose that DA D1R and D2R co-expressing MSNs are capable of computing risk. Though the existence of MSNs that co-express D1R and D2R are reported by various experimental studies, prior existing computational models did not include them. Ours is the first model that accounts for the computational possibilities of these co-expressing D1R-D2R MSNs, and describes how DA and 5HT mediate activity in these classes of neurons (D1R-, D2R-, D1R-D2R- MSNs). Starting from the assumption that 5HT modulates all MSNs, our study predicts significant modulatory effects of 5HT on D2R and co-expressing D1R-D2R MSNs which in turn explains the multifarious functions of 5HT in the BG. The experiments simulated in the present study relates 5HT to risk sensitivity and reward-punishment learning. Furthermore, our model is shown to capture reward-punishment and risk based decision making impairment in Parkinson's Disease (PD). The model predicts that optimizing 5HT levels along with DA medications might be essential for improving the patients' reward-punishment learning deficits.
机译:有大量证据表明,除了基于奖励惩罚的决策外,基础神经节(BG)有助于基于风险的决策(Balasubramani等,2014)。尽管有这些证据,但对于这种皮层下系统中的风险计算的计算原理和神经相关性知之甚少。我们先前已经提出了一种基于强化学习(BRL)的BG模型,该模型可在包括奖励,惩罚和基于风险的决策在内的各种实验研究中模拟多巴胺(DA)和血清素(5HT)之间的相互作用(Balasubramani等。,2014)。从中脑DA的活动代表奖励预测错误的经典观念开始,该模型假定纹状体中的5-羟色胺能活动控制着风险预测错误。我们之前的BG模型是一个抽象模型,没有包含解剖和细胞水平的数据。在这项工作中,我们将较早的模型扩展为BG的详细网络模型,并演示了DA-5HT在风险和奖励惩罚敏感性方面的共同贡献。所提出的网络模型的核心是关于价值和风险计算的细胞相关性的以下见解。正如表达纹状体的中棘神经元(MSNs)的DA D1受体(D1R)被认为是价值计算的神经基质一样,我们建议DA D1R和D2R共表达MSNs能够计算风险。尽管各种实验研究都报告了共表达D1R和D2R的MSN的存在,但现有的现有计算模型并未包括它们。我们的模型是第一个解释这些共表达D1R-D2R MSN的计算可能性的模型,并描述了DA和5HT如何介导这些类别的神经元(D1R-,D2R-,D1R-D2R-MSN)的活性。从5HT调节所有MSN的假设出发,我们的研究预测5HT对D2R和共表达D1R-D2R MSN的显着调节作用,这反过来解释了5HT在BG中的多种功能。在本研究中模拟的实验将5HT与风险敏感性和奖惩学习联系起来。此外,我们的模型显示出可捕获奖励惩罚和基于风险的帕金森氏病(PD)决策制定障碍。该模型预测,优化5HT水平以及DA药物可能对于改善患者的奖惩学习障碍至关重要。

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