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Evaluating performance of neural codes in model neural communication networks

机译:基于模型神经通信网络中神经密码的评价性能

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Information needs to be appropriately encoded to be reliably transmitted over physical media. Similarly, neurons have their own codes to convey information in the brain. Even though it is well-known that neurons exchange information using a pool of several protocols of spatio-temporal encodings, the suitability of each code and their performance as a function of network parameters and external stimuli is still one of the great mysteries in neuroscience. This paper sheds light on this by modeling small-size networks of chemically and electrically coupled Hindmarsh-Rose spiking neurons. We focus on a class of temporal and firing-rate codes that result from neurons' membrane-potentials and phases, and quantify numerically their performance estimating the Mutual Information Rate, aka the rate of information exchange. Our results suggest that the firing-rate and interspike-intervals codes are more robust to additive Gaussian white noise. In a network of four interconnected neurons and in the absence of such noise, pairs of neurons that have the largest rate of information exchange using the interspike-intervals and firing-rate codes are not adjacent in the network, whereas spike-timings and phase codes (temporal) promote large rate of information exchange for adjacent neurons. If that result would have been possible to extend to larger neural networks, it would suggest that small microcircuits would preferably exchange information using temporal codes (spike-timings and phase codes), whereas on the macroscopic scale, where there would be typically pairs of neurons not directly connected due to the brain's sparsity, firing-rate and interspike-intervals codes would be the most efficient codes. (c) 2018 Elsevier Ltd. All rights reserved.
机译:需要适当地编码信息以可靠地通过物理媒体传输。类似地,神经元有自己的代码来传达大脑中的信息。尽管众所周知,但是神经元使用几种时空编码协议的池交换信息,因此每个代码的适用性及其作为网络参数和外部刺激的函数的性能仍然是神经科学中的伟大奥秘之一。本文通过模拟化学和电耦合的Hindmarsh玫瑰尖刺神经元的小型网络揭示了这一点。我们专注于神经元膜电位和阶段产生的一类时间和射击率代码,并在数值上量化它们的性能估算互信息率,即信息交换率。我们的研究结果表明,射击率和间隙间隔代码对加性高斯白噪声更加坚固。在四个互连神经元的网络中,并且在没有这种噪声的情况下,使用间隔间隔和射击率代码具有最大信息交换速率的对神经元不相邻,而峰值定时和相位代码(时间)促进相邻神经元的大型信息交换率。如果该结果可以扩展到更大的神经网络,则建议小微电路优选地使用时间代码(尖峰定时和相位码)交换信息,而在宏观刻度上,在通常对神经元成对的地方由于大脑的稀疏性而直接连接,射击率和间隔间隔代码将是最有效的代码。 (c)2018年elestvier有限公司保留所有权利。

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