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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >A Simple Network Architecture Accounts for Diverse Reward Time Responses in Primary Visual Cortex
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A Simple Network Architecture Accounts for Diverse Reward Time Responses in Primary Visual Cortex

机译:一个简单的网络体系结构解决了主要视觉皮层中不同奖励时间响应的问题

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摘要

Many actions performed by animals and humans depend on an ability to learn, estimate, and produce temporal intervals of behavioral relevance. Exemplifying such learning of cued expectancies is the observation of reward-timing activity in the primary visual cortex (V1) of rodents, wherein neural responses to visual cues come to predict the time of future reward as behaviorally experienced in the past. These reward-timing responses exhibit significant heterogeneity in at least three qualitatively distinct classes: sustained increase or sustained decrease in firing rate until the time of expected reward, and a class of cells that reach a peak in firing at the expected delay. We elaborate upon our existing model by including inhibitory and excitatory units while imposing simple connectivity rules to demonstrate what role these inhibitory elements and the simple architectures play in sculpting the response dynamics of the network. We find that simply adding inhibition is not sufficient for obtaining the different distinct response classes, and that a broad distribution of inhibitory projections is necessary for obtaining peak-type responses. Furthermore, although changes in connection strength that modulate the effects of inhibition onto excitatory units have a strong impact on the firing rate profile of these peaked responses, the network exhibits robustness in its overall ability to predict the expected time of reward. Finally, we demonstrate how the magnitude of expected reward can be encoded at the expected delay in the network and how peaked responses express this reward expectancy.
机译:动物和人类执行的许多动作都依赖于学习,估计和产生与行为相关的时间间隔的能力。啮齿类动物期望的这种学习的例证是对啮齿动物初级视觉皮层(V1)中奖励定时活动的观察,其中对视觉提示的神经反应可以预测过去行为所经历的未来奖励的时间。这些奖励时机响应在至少三个定性上不同的类别中表现出显着的异质性:直到预期奖励期为止,发射速率持续增加或持续降低,以及一类在预期延迟时达到发射峰值的细胞。我们通过包括抑制性单元和兴奋性单元,同时施加简单的连接规则来详细说明我们现有的模型,以证明这些抑制性元素和简单的体系结构在雕刻网络响应动态时起什么作用。我们发现,简单地添加抑制作用不足以获得不同的不同响应类别,并且抑制分布的宽分布对于获得峰型响应是必需的。此外,尽管连接强度的变化会调节对兴奋性单元的抑制作用,但对这些峰值响应的发射速率曲线有很大的影响,但该网络在预测预期奖励时间的总体能力方面表现出较强的鲁棒性。最后,我们演示了预期奖励的大小如何在网络中的预期延迟下进行编码,以及峰值响应如何表达此奖励预期。

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