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Identification of Functional Synaptic Plasticity from Spiking Activities Using Nonlinear Dynamical Modeling

机译:使用非线性动力学建模从尖峰活动中识别功能性突触可塑性

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摘要

This paper presents a systems identification approach for studying the long-term synaptic plasticity using natural spiking activities. This approach consists of three modeling steps. First, a multi-input, single-output (MISO), nonlinear dynamical spiking neuron model is formulated to estimate and represent the synaptic strength in means of functional connectivity between input and output neurons. Second, this MISO model is extended to a nonstationary form to track the time-varying properties of the synaptic strength. Finally, a Volterra modeling method is used to extract the synaptic learning rule, e.g., spike-timing-dependent plasticity, for the explanation of the input-output nonstationarity as the consequence of the past input-output spiking patterns. This framework is developed to study the underlying mechanisms of learning and memory formation in behaving animals, and may serve as the computational basis for building the next-generation adaptive cortical prostheses.
机译:本文提出了一种系统识别方法,用于利用自然突增活动研究长期突触可塑性。该方法包括三个建模步骤。首先,建立了多输入单输出(MISO)非线性动态尖峰神经元模型,以通过输入和输出神经元之间的功能连通性来估计和表示突触强度。其次,此MISO模型被扩展为非平稳形式,以跟踪突触强度的时变特性。最后,使用Volterra建模方法提取突触学习规则,例如依赖于尖峰时序的可塑性,以解释由于过去的输入-输出尖峰模式导致的输入-输出非平稳性。开发该框架以研究行为动物的学习和记忆形成的潜在机制,并可以用作构建下一代自适应皮质假体的计算基础。

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