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A New Computational Model for Astrocytes and Their Role in Biologically Realistic Neural Networks

机译:星形胶质细胞的新计算模型及其在生物现实神经网络中的作用

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摘要

Recent studies in neuroscience show that astrocytes alongside neurons participate in modulating synapses. It led to the new concept of “tripartite synapse”, which means that a synapse consists of three parts: presynaptic neuron, postsynaptic neuron, and neighboring astrocytes. However, it is still unclear what role is played by the astrocytes in the tripartite synapse. Detailed biocomputational modeling may help generate testable hypotheses. In this article, we aim to study the role of astrocytes in synaptic plasticity by exploring whether tripartite synapses are capable of improving the performance of a neural network. To achieve this goal, we developed a computational model of astrocytes based on the Izhikevich simple model of neurons. Next, two neural networks were implemented. The first network was only composed of neurons and had standard bipartite synapses. The second network included both neurons and astrocytes and had tripartite synapses. We used reinforcement learning and tested the networks on categorizing random stimuli. The results show that tripartite synapses are able to improve the performance of a neural network and lead to higher accuracy in a classification task. However, the bipartite network was more robust to noise. This research provides computational evidence to begin elucidating the possible beneficial role of astrocytes in synaptic plasticity and performance of a neural network.
机译:神经科学方面的最新研究表明,星形胶质细胞与神经元一起参与调节突触。这导致了“三方突触”的新概念,这意味着突触由三个部分组成:突触前神经元,突触后神经元和邻近的星形胶质细胞。然而,目前尚不清楚三方突触中星形胶质细胞起什么作用。详细的生物计算模型可能有助于产生可检验的假设。在本文中,我们旨在通过研究三方突触是否能够改善神经网络的性能来研究星形胶质细胞在突触可塑性中的作用。为了实现这一目标,我们基于Izhikevich神经元简单模型开发了星形胶质细胞的计算模型。接下来,实现了两个神经网络。第一个网络仅由神经元组成,并具有标准的二部突触。第二个网络包括神经元和星形胶质细胞,并具有三重突触。我们使用强化学习并测试了随机刺激分类的网络。结果表明,三方突触能够改善神经网络的性能并导致分类任务中更高的准确性。但是,二分网络对噪声更强健。这项研究提供了计算证据,以开始阐明星形胶质细胞在突触可塑性和神经网络性能中的可能有益作用。

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