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Sparse Large-Scale Nonlinear Dynamical Modeling of Human Hippocampus for Memory Prostheses

机译:海马记忆假体的稀疏大规模非线性动力学建模

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摘要

In order to build hippocampal prostheses for restoring memory functions, we build sparse multi-input, multi-output (MIMO) nonlinear dynamical models of the human hippocampus. Spike trains are recorded from hippocampal CA3 and CA1 regions of epileptic patients performing a variety of memory-dependent delayed match-to-sample (DMS) tasks. Using CA3 and CA1 spike trains as inputs and outputs respectively, sparse generalized Laguerre-Volterra models are estimated with group lasso and local coordinate descent methods to capture the nonlinear dynamics underlying the CA3-CA1 spike train transformations. These models can accurately predict the CA1 spike trains based on the ongoing CA3 spike trains during multiple memory events, e.g., sample presentation, sample response, match presentation and match response, of the DMS task, and thus will serve as the computational basis of human hippocampal memory prostheses.
机译:为了构建用于恢复记忆功能的海马假体,我们建立了人海马的稀疏多输入多输出(MIMO)非线性动力学模型。记录了癫痫患者海马CA3和CA1区域的突击序列,这些区域执行各种依赖于记忆的延迟匹配样本(DMS)任务。分别使用CA3和CA1尖峰列作为输入和输出,使用组套索法和局部坐标下降法估计稀疏的广义Laguerre-Volterra模型,以捕获CA3-CA1尖峰列转换背后的非线性动力学。这些模型可以基于DMS任务的多个内存事件(例如样本演示,样本响应,匹配演示和匹配响应)中正在进行的CA3尖峰序列,准确预测CA1尖峰序列,因此将作为人类的计算基础。海马记忆假体。

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