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首页> 外文期刊>PLoS Computational Biology >Conflict Resolution as Near-Threshold Decision-Making: A Spiking Neural Circuit Model with Two-Stage Competition for Antisaccadic Task
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Conflict Resolution as Near-Threshold Decision-Making: A Spiking Neural Circuit Model with Two-Stage Competition for Antisaccadic Task

机译:作为近阈值决策的冲突解决:具有反竞争任务的两阶段竞争的尖刺神经回路模型

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Author Summary We propose a novel neural circuit mechanism and construct a spiking neural network model for resolving conflict between an automatic response and a volitional one. In this mechanism the two types of responses compete against each other under the modulation of top-down control via multiple neural pathways. The model is able to reproduce a wide range of neuronal and behavioral features observed in various studies and provides insights into not just how subjects make correct responses and fast errors, but also why they make slow errors, a type of error often overlooked by previous modeling studies. The model suggests critical roles of tonic (non-racing) top-down inhibition and near-threshold decision-making in neural competition.
机译:作者摘要我们提出了一种新颖的神经回路机制,并构建了一个尖峰神经网络模型来解决自动响应与自愿响应之间的冲突。在这种机制下,这两种类型的反应在自上而下的控制下通过多种神经途径相互竞争。该模型能够重现在各种研究中观察到的广泛的神经元和行为特征,不仅可以洞悉受试者如何做出正确的反应和快速的错误,还可以深入了解为什么他们会产生缓慢的错误,而先前的建模通常会忽略这种错误。学习。该模型表明,补品(非竞赛)自上而下的抑制和近阈决策在神经竞争中的关键作用。

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