Robust Resting-State Dynamics in a Large-Scale Spiking Neural Network Model of Area CA3 in the Mouse Hippocampus

被引:0
作者
Jeffrey D. Kopsick
Carolina Tecuatl
Keivan Moradi
Sarojini M. Attili
Hirak J. Kashyap
Jinwei Xing
Kexin Chen
Jeffrey L. Krichmar
Giorgio A. Ascoli
机构
[1] George Mason University,Interdepartmental Program in Neuroscience
[2] George Mason University,Bioengineering Department, Volgenau School of Engineering
[3] University of California,Department of Cognitive Sciences
[4] Irvine,Department of Computer Science
[5] University of California,undefined
[6] Irvine,undefined
来源
Cognitive Computation | 2023年 / 15卷
关键词
Neuron-type specific connectivity; Perisomatic-targeting; Dendritic-targeting; Phase; Oscillation; Network dynamics;
D O I
暂无
中图分类号
学科分类号
摘要
Hippocampal area CA3 performs the critical auto-associative function underlying pattern completion in episodic memory. Without external inputs, the electrical activity of this neural circuit reflects the spontaneous spiking interplay among glutamatergic Pyramidal neurons and GABAergic interneurons. However, the network mechanisms underlying these resting-state firing patterns are poorly understood. Leveraging the Hippocampome.org knowledge base, we developed a data-driven, large-scale spiking neural network (SNN) model of mouse CA3 with 8 neuron types, 90,000 neurons, 51 neuron-type specific connections, and 250,000,000 synapses. We instantiated the SNN in the CARLsim4 multi-GPU simulation environment using the Izhikevich and Tsodyks-Markram formalisms for neuronal and synaptic dynamics, respectively. We analyzed the resultant population activity upon transient activation. The SNN settled into stable oscillations with a biologically plausible grand-average firing frequency, which was robust relative to a wide range of transient activation. The diverse firing patterns of individual neuron types were consistent with existing knowledge of cell type-specific activity in vivo. Altered network structures that lacked neuron- or connection-type specificity were neither stable nor robust, highlighting the importance of neuron type circuitry. Additionally, external inputs reflecting dentate mossy fibers shifted the observed rhythms to the gamma band. We freely released the CARLsim4-Hippocampome framework on GitHub to test hippocampal hypotheses. Our SNN may be useful to investigate the circuit mechanisms underlying the computational functions of CA3. Moreover, our approach can be scaled to the whole hippocampal formation, which may contribute to elucidating how the unique neuronal architecture of this system subserves its crucial cognitive roles.
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页码:1190 / 1210
页数:20
相关论文
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