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Generalized volterra kernel model identification of spike-timing-dependent plasticity from simulated spiking activity

机译:通过模拟尖峰活动识别与尖峰时间相关的可塑性的广义Volterra核模型

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This paper presents a methodology to estimate a learning rule that governs activity-dependent plasticity from behaviorally recorded spiking events. To demonstrate this framework, we simulate a probabilistic spiking neuron with spike-timing-dependent plasticity (STDP) and estimate all model parameters from the simulated spiking data. In the neuron model, output spiking activity is generated by the combination of noise, feedback from the output, and an input-feedforward component whose magnitude is modulated by synaptic weight. The synaptic weight is calculated with STDP with the following features: (1) weight change based on the relative timing of input-output spike pairs, (2) prolonged plasticity induction, and (3) considerations for system stability. Estimation of all model parameters is achieved iteratively by formulating the model as a generalized linear model with Volterra kernels and basis function expansion. Successful estimation of all model parameters in this study demonstrates the feasibility of this approach for in-vivo experimental studies. Furthermore, the consideration of system stability and prolonged plasticity induction enhances the ability to capture how STDP affects a neural population's signal transformation properties over a realistic time course. Plasticity characterization with this estimation method could yield insights into functional implications of STDP and be incorporated into a cortical prosthesis.
机译:本文提出了一种方法,可以从行为记录的尖峰事件中估算学习规则,该学习规则控制与活动相关的可塑性。为了演示此框架,我们模拟了具有峰值定时依赖可塑性(STDP)的概率峰值神经元,并从模拟峰值数据中估计了所有模型参数。在神经元模型中,输出尖峰活动是由噪声,来自输出的反馈以及输入前馈分量(其大小由突触权重调制)的组合产生的。突触重量使用STDP计算,具有以下特征:(1)基于输入-输出尖峰对的相对时间的重量变化;(2)延长的可塑性诱导;以及(3)系统稳定性的考虑因素。通过将模型表示为具有Volterra核和基函数扩展的广义线性模型,可以迭代地实现所有模型参数的估计。在这项研究中所有模型参数的成功估计证明了这种方法在体内实验研究中的可行性。此外,系统稳定性和延长的可塑性诱导的考虑增强了捕获STDP如何在现实的时间过程中影响神经种群的信号转换特性的能力。这种估计方法的可塑性表征可以深入了解STDP的功能含义,并将其整合到皮层假体中。

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