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Constraints of Metabolic Energy on the Number of Synaptic Connections of Neurons and the Density of Neuronal Networks

机译:代谢能对神经元突触连接数和神经网络密度的限制

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摘要

Neuronal networks in the brain are the structural basis of human cognitive function, and the plasticity of neuronal networks is thought to be the principal neural mechanism underlying learning and memory. Dominated by the Hebbian theory, researchers have devoted extensive effort to studying the changes in synaptic connections between neurons. However, understanding the network topology of all synaptic connections has been neglected over the past decades. Furthermore, increasing studies indicate that synaptic activities are tightly coupled with metabolic energy, and metabolic energy is a unifying principle governing neuronal activities. Therefore, the network topology of all synaptic connections may also be governed by metabolic energy. Here, by implementing a computational model, we investigate the general synaptic organization rules for neurons and neuronal networks from the perspective of energy metabolism. We find that to maintain the energy balance of individual neurons in the proposed model, the number of synaptic connections is inversely proportional to the average of the synaptic weights. This strategy may be adopted by neurons to ensure that the ability of neurons to transmit signals matches their own energy metabolism. In addition, we find that the density of neuronal networks is also an important factor in the energy balance of neuronal networks. An abnormal increase or decrease in the network density could lead to failure of energy metabolism in the neuronal network. These rules may change our view of neuronal networks in the brain and have guiding significance for the design of neuronal network models.
机译:大脑中的神经元网络是人类认知功能的结构基础,神经元网络的可塑性被认为是学习和记忆的主要神经机制。在赫伯理论的主导下,研究人员投入了大量精力来研究神经元之间突触联系的变化。但是,在过去的几十年中,对所有突触连接的网络拓扑的理解一直被忽略。此外,越来越多的研究表明,突触活动与代谢能紧密相关,而代谢能是控制神经元活动的统一原则。因此,所有突触连接的网络拓扑也可能由代谢能控制。在这里,通过实现一个计算模型,我们从能量代谢的角度研究了神经元和神经元网络的一般突触组织规则。我们发现,在所提议的模型中,要维持单个神经元的能量平衡,突触连接的数量与突触权重的平均值成反比。神经元可以采用这种策略来确保神经元传输信号的能力与其自身的能量代谢相匹配。此外,我们发现神经网络的密度也是神经网络能量平衡的重要因素。网络密度的异常增加或降低可能导致神经元网络中能量代谢的失败。这些规则可能会改变我们对大脑中神经元网络的看法,并对神经元网络模型的设计具有指导意义。

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