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Biologically Realistic Mean-Field Models of Conductance-Based Networks of Spiking Neurons with Adaptation

机译:具有适应性的尖刺神经元的生物学现实意义的平均型号模型

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摘要

Accurate population models are needed to build very large-scale neural models, but their derivation is difficult for realistic networks of neurons, in particular when nonlinear properties are involved, such as conductance-based interactions and spike-frequency adaptation. Here, we consider such models based on networks of adaptive exponential integrate-and-fire excitatory and inhibitory neurons. Using a master equation formalism, we derive a mean-field model of such networks and compare it to the full network dynamics. The mean-field model is capable of correctly predicting the average spontaneous activity levels in asynchronous irregular regimes similar to in vivo activity. It also captures the transient temporal response of the network to complex external inputs. Finally, the mean-field model is also able to quantitatively describe regimes where high- and low-activity states alternate (up-down state dynamics), leading to slow oscillations. We conclude that such mean-field models are biologically realistic in the sense that they can capture both spontaneous and evoked activity, and they naturally appear as candidates to build very large-scale models involving multiple brain areas.
机译:需要准确的人口模型来构建非常大规模的神经模型,但是它们的衍生难以对神经元的现实网络难以,特别是当涉及非线性特性,例如基于电导基的相互作用和尖峰频率适应。在这里,我们考虑基于自适应指数整合和火灾兴奋性和抑制神经元网络的模型。使用主方程式形式主义,我们推出了这样的网络的平均场模型,并将其与完整的网络动态进行比较。平均场模型能够正确地预测类似于体内活动的异步不规则规范中的平均自发性活动水平。它还捕获了网络的瞬态时间响应到复杂的外部输入。最后,平均场模型也能够定量地描述高度和低活动状态替代(上下状态动态)的制度,导致缓慢振荡。我们得出结论,这种平均场模型在这种意义上是生物学上的现实,它们可以捕获自发性和诱发的活动,并且它们自然地显示为候选人,以构建涉及多个脑区域的非常大规模模型。

著录项

  • 来源
    《Neural computation》 |2019年第4期|653-680|共28页
  • 作者单位

    CNRS FRE 3693 Unite Neurosci Informat & Complexite F-91198 Gif Sur Yvette France;

    Univ Paris Diderot INSERM UMR 1149 Ctr Rech Inflammat F-75018 Paris France|PSL Res Univ Dept Informat Ecole Normale Super Data Team CNRS F-75005 Paris France|European Inst Theoret Neurosci F-75012 Paris France;

    European Inst Theoret Neurosci F-75012 Paris France|INFN Sez Roma I-00185 Rome Italy;

    CNRS FRE 3693 Unite Neurosci Informat & Complexite F-91198 Gif Sur Yvette France|European Inst Theoret Neurosci F-75012 Paris France;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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