扩展数学框架以研究小胶质鞘存在下的神经元动力学。

IF 2 4区 数学 Q2 BIOLOGY
Nellie Garcia, Silvie Reitz, Gregory Handy
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引用次数: 0

摘要

最近的实验证据表明,包括小胶质细胞和星形胶质细胞在内的神经胶质细胞可以包裹特定的突触,使它们能够破坏突触前和突触后终端之间的神经递质流动。作为“数学和计算生物学的问题、进展和前景”特刊的一部分,这项研究扩展了微观和网络尺度的理论框架,将这些新的实验观察结果纳入了系统中,这些实验观察结果将实质性的异质性引入了系统。具体来说,我们的目的是探索不同程度的突触嵌套如何影响突触通信和网络动力学。与之前的研究一致,我们的微尺度模型表明,鞘层加速了突触传递,同时降低了其强度和可靠性,有可能有效地关闭突触连接。在这些发现的基础上,我们将一个“有效”的胶质细胞模型整合到一个大规模的神经网络中。具体来说,我们分析了一个具有高度异质突触强度和时间常数的网络,其中神经胶质接近性参数化了突触特性。这种参数化导致突触参数在整个网络中的多模态分布,与之前假设正态分布的建模工作相比,引入了更大的可变性。该框架应用于指数积分-点火神经元的大型网络,扩展了线性响应理论,不仅可以分析放电率分布,还可以分析网络中的噪声相关性。尽管系统中存在显著的异质性,但平均场近似可以准确地捕获网络统计数据。我们通过复制实验结果来证明我们的模型的实用性,表明小胶质鞘层导致小鼠麻醉后兴奋性神经元的过度活跃。此外,我们探索了如何在视觉皮层中使用胶质鞘层来针对特定的神经元亚类,调整高阶网络统计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extending Mathematical Frameworks to Investigate Neuronal Dynamics in the Presence of Microglial Ensheathment.

Recent experimental evidence has shown that glial cells, including microglia and astrocytes, can ensheathe specific synapses, positioning them to disrupt neurotransmitter flow between pre- and post-synaptic terminals. This study, as part of the special issue "Problems, Progress and Perspectives in Mathematical and Computational Biology," expands micro- and network-scale theoretical frameworks to incorporate these new experimental observations that introduce substantial heterogeneities into the system. Specifically, we aim to explore how varying degrees of synaptic ensheathment affect synaptic communication and network dynamics. Consistent with previous studies, our microscale model shows that ensheathment accelerates synaptic transmission while reducing its strength and reliability, with the potential to effectively switch off synaptic connections. Building on these findings, we integrate an "effective" glial cell model into a large-scale neuronal network. Specifically, we analyze a network with highly heterogeneous synaptic strengths and time constants, where glial proximity parametrizes synaptic properties. This parametrization results in a multimodal distribution of synaptic parameters across the network, introducing significantly greater variability compared to previous modeling efforts that assumed a normal distribution. This framework is applied to large networks of exponential integrate-and-fire neurons, extending linear response theory to analyze not only firing rate distributions but also noise correlations across the network. Despite the significant heterogeneity in the system, a mean-field approximation accurately captures network statistics. We demonstrate the utility of our model by reproducing experimental findings, showing that microglial ensheathment leads to post-anesthesia hyperactivity in excitatory neurons of mice. Furthermore, we explore how glial ensheathment may be used in the visual cortex to target specific neuronal subclasses, tuning higher-order network statistics.

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来源期刊
CiteScore
3.90
自引率
8.60%
发文量
123
审稿时长
7.5 months
期刊介绍: The Bulletin of Mathematical Biology, the official journal of the Society for Mathematical Biology, disseminates original research findings and other information relevant to the interface of biology and the mathematical sciences. Contributions should have relevance to both fields. In order to accommodate the broad scope of new developments, the journal accepts a variety of contributions, including: Original research articles focused on new biological insights gained with the help of tools from the mathematical sciences or new mathematical tools and methods with demonstrated applicability to biological investigations Research in mathematical biology education Reviews Commentaries Perspectives, and contributions that discuss issues important to the profession All contributions are peer-reviewed.
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