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首页> 外文期刊>Neuroscience: An International Journal under the Editorial Direction of IBRO >ROLE OF SENSORY INPUT DISTRIBUTION AND INTRINSIC CONNECTIVITY IN LATERAL AMYGDALA DURING AUDITORY FEAR CONDITIONING: A COMPUTATIONAL STUDY
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ROLE OF SENSORY INPUT DISTRIBUTION AND INTRINSIC CONNECTIVITY IN LATERAL AMYGDALA DURING AUDITORY FEAR CONDITIONING: A COMPUTATIONAL STUDY

机译:听觉恐惧条件下扁桃体感觉输入分布和内在连通性的作用:一项计算研究

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We propose a novel reduced-order neuronal network modeling framework that Includes an enhanced firing rate model and a corresponding synaptic calcium-based synaptic learning rule. Specifically, we propose enhancements to the Wilson-Cowan firing-rate neuron model that permit full spike-frequency adaptation seen in biological lateral amygdala (LA) neurons, while being sufficiently general to accommodate other spike-frequency patterns. We also report a technique to incorporate calcium-dependent plasticity in the synapses of the network using a regression scheme to link firing rate to postsynaptic calcium. Together, the single-cell model and the synaptic learning scheme constitute a general framework to develop computationally efficient neuronal networks that employ biologically realistic synaptic learning. The reduced-order modeling framework was validated using a previously reported biophysical conductance-based neuronal network model of a rodent LA that modeled features of Pavlovian conditioning and extinction of auditory fear (Li et al., 2009). The framework was then used to develop a larger LA network mode! to investigate the roles of tone and shock distributions and of intrinsic connectivity in auditory fear learning. The model suggested combinations of tone and shock densities that would provide experimental estimates of tone responsive and conditioned cell proportions. Furthermore, it provided several insights including how intrinsic connectivity might help distribute sensory inputs to produce conditioned responses in cells that do not directly receive both tone and shock inputs, and how a balance between potentiation of excitation and inhibition prevents stimulus generalization during fear learning.
机译:我们提出了一种新颖的降阶神经元网络建模框架,其中包括增强的放电率模型和相应的基于突触钙的突触学习规则。具体而言,我们提出了对Wilson-Cowan射击率神经元模型的增强,该模型允许在生物学性外侧杏仁核(LA)神经元中看到完整的峰频适应性,同时又足够通用以适应其他峰频模式。我们还报告了一种技术,该技术使用回归方案将射速与突触后钙联系起来,在网络的突触中纳入钙依赖性可塑性。单细胞模型和突触学习方案共同构成了一个通用框架,用于开发采用生物学上逼真的突触学习的高效计算神经元网络。使用先前报道的啮齿类动物洛杉矶的基于生物物理电导的神经网络模型对降序建模框架进行了验证,该模型对巴甫洛夫条件和听觉恐惧的消退进行了建模(Li等,2009)。然后使用该框架开发更大的LA网络模式!研究语气和震动分布以及内在联系在听觉恐惧学习中的作用。该模型提出了音调和电击密度的组合,这将提供音调反应性和条件细胞比例的实验估计。此外,它提供了一些见解,包括内在连通性如何帮助分布感官输入以在不直接接收音调和电击输入的细胞中产生条件响应,以及激发和抑制的增强之间的平衡如何防止恐惧学习过程中的刺激泛化。

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