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Nonlinear modeling of neural population dynamics for hippocampal prostheses.

机译:海马假体神经种群动力学的非线性建模。

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摘要

Developing a neural prosthesis for the damaged hippocampus requires restoring the transformation of population neural activities performed by the hippocampal circuitry. To bypass a damaged region, output spike trains need to be predicted from the input spike trains and then reinstated through stimulation. We formulate a multiple-input, multiple-output (MIMO) nonlinear dynamic model for the input-output transformation of spike trains. In this approach, a MIMO model comprises a series of physiologically-plausible multiple-input, single-output (MISO) neuron models that consist of five components each: (1) feedforward Volterra kernels transforming the input spike trains into the synaptic potential, (2) a feedback kernel transforming the output spikes into the spike-triggered after-potential, (3) a noise term capturing the system uncertainty, (4) an adder generating the pre-threshold potential, and (5) a threshold function generating output spikes. It is shown that this model is equivalent to a generalized linear model with a probit link function. To reduce model complexity and avoid overfitting, statistical model selection and cross-validation methods are employed to choose the significant inputs and interactions between inputs. The model is applied successfully to the hippocampal CA3-CA1 population dynamics. Such a model can serve as a computational basis for the development of hippocampal prostheses.
机译:开发用于受损海马体的神经假体需要恢复由海马体回路执行的群体神经活动的转变。为了绕过损坏的区域,需要从输入峰值串预测输出峰值串,然后通过刺激将其恢复。我们制定了一个多输入,多输出(MIMO)非线性动态模型,用于尖峰火车的输入-输出转换。在这种方法中,MIMO模型包括一系列生理上合理的多输入,单输出(MISO)神经元模型,每个模型均由五个组件组成:(1)前馈Volterra内核将输入尖峰序列转换为突触电位,( 2)反馈内核,将输出尖峰转换为尖峰触发的后电位;(3)捕获系统不确定性的噪声项;(4)生成阈值前电势的加法器;以及(5)生成输出的阈值函数尖峰。结果表明,该模型等效于带有概率链接函数的广义线性模型。为了降低模型的复杂性并避免过度拟合,采用统计模型选择和交叉验证方法来选择重要的输入和输入之间的交互。该模型已成功应用于海马CA3-CA1种群动态。这样的模型可以作为海马假体发展的计算基础。

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