Investigating the ability of astrocytes to drive neural network synchrony

Recent experimental works have implicated astrocytes as a significant cell type underlying several neuronal processes in the mammalian brain, from encoding sensory information to neurological disorders. Despite this progress, it is still unclear how astrocytes are communicating with and driving thei...

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Veröffentlicht in:PLoS computational biology 2023-08, Vol.19 (8), p.e1011290-e1011290
Hauptverfasser: Handy, Gregory, Borisyuk, Alla
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description Recent experimental works have implicated astrocytes as a significant cell type underlying several neuronal processes in the mammalian brain, from encoding sensory information to neurological disorders. Despite this progress, it is still unclear how astrocytes are communicating with and driving their neuronal neighbors. While previous computational modeling works have helped propose mechanisms responsible for driving these interactions, they have primarily focused on interactions at the synaptic level, with microscale models of calcium dynamics and neurotransmitter diffusion. Since it is computationally infeasible to include the intricate microscale details in a network-scale model, little computational work has been done to understand how astrocytes may be influencing spiking patterns and synchronization of large networks. We overcome this issue by first developing an "effective" astrocyte that can be easily implemented to already established network frameworks. We do this by showing that the astrocyte proximity to a synapse makes synaptic transmission faster, weaker, and less reliable. Thus, our "effective" astrocytes can be incorporated by considering heterogeneous synaptic time constants, which are parametrized only by the degree of astrocytic proximity at that synapse. We then apply our framework to large networks of exponential integrate-and-fire neurons with various spatial structures. Depending on key parameters, such as the number of synapses ensheathed and the strength of this ensheathment, we show that astrocytes can push the network to a synchronous state and exhibit spatially correlated patterns.
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subjects Alzheimer's disease
Astrocytes
Biology and Life Sciences
Brain
Calcium signalling
Communication
Computational neuroscience
Computer and Information Sciences
Firing pattern
Investigations
Medicine and Health Sciences
Nervous system diseases
Neural circuitry
Neural networks
Neurological diseases
Neurological research
Neurons
Neurotransmitters
Physiological aspects
Scale models
Social Sciences
Synapses
Synaptic strength
Synaptic transmission
Synchronism
Synchronization
title Investigating the ability of astrocytes to drive neural network synchrony
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