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首页> 外文期刊>Nonlinear dynamics >Population rate coding in recurrent neuronal networks consisting of neurons with mixed excitatory-inhibitory synapses
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Population rate coding in recurrent neuronal networks consisting of neurons with mixed excitatory-inhibitory synapses

机译:经复制神经元网络中的人口率编码,由具有混合兴奋性抑制突触的神经元组成

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摘要

Neural coding is a key problem in neuroscience aimed to understand the information processing mechanism in brain. Among the classical theories of neural coding, population rate coding has been studied widely in many works. In computational studies, neurons are usually classified into excitatory or inhibitory ones. Excitatory neurons have excitatory output synapses, and inhibitory neurons have inhibitory output synapses. However, according to physiological observations, neurons potentially have both types of output synapses. Thus, in this paper, neuronal networks consisting of neurons with mixed excitatory-inhibitory synapses are constructed to investigate the population rate coding fidelity of neuronal systems. It is revealed that, under intermediate values of recurrent probability, inhibitory-excitatory strength ratio, and noise intensity, the performance of population rate coding could be improved by both excitatory synaptic strength and synaptic time constant. It is indicated that external stimuli can be encoded in the form of population firing rate by the studied neuronal networks very well. What is more exciting is that we find the neuronal networks considered in our work have higher coding efficiency than the traditional ones. Therefore, neurons with mixed excitatory-inhibitory synapses may be much more rational.
机译:神经编码是神经科学的一个关键问题,旨在了解大脑中的信息处理机制。在神经编码的经典理论中,在许多作品中,人口率编码已经广泛研究。在计算研究中,神经元通常被分为兴奋或抑制剂。兴奋性神经元具有兴奋性输出突触,抑制神经元具有抑制输出突触。然而,根据生理观察,神经元可能具有两种类型的输出突触。因此,在本文中,构建了由具有混合兴奋性抑制突触的神经元组成的神经元网络,以研究神经元系统的人口率编码保真度。据揭示,在复发性概率的中间值下,抑制兴奋强度比和噪声强度,可以通过兴奋性突触强度和突触时间常数来提高人口率编码的性能。结果表明,外部刺激可以通过研究的神经网络的种群射击率的形式编码。更令人兴奋的是,我们发现我们工作中考虑的神经元网络具有比传统方式更高的编码效率。因此,具有混合兴奋性抑制突触的神经元可能更合理。

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