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Parameter identification for a local field potential driven model of the Parkinsonian subthalamic nucleus spike activity

机译:帕金森丘脑下丘脑核突峰活动的局域势驱动模型的参数识别

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摘要

Several models, with various degrees of complexity have been proposed to model the neuronal activity from different parts of the human brain. We have shown before that various modeling approaches, including a Hammerstein-Wiener (H-W) model, can be used to predict the spike trains from a deep nucleus, the subthalamic nucleus, using the underlying local field potentials. In this article, we present, in depth, the various choices one has to make, and the limitations that they introduce, during the H-W model parameter identification process. From a segment of the recorded data, which contains information about the spike times of a single neuron, we identify and extract the model parameters. We then use those parameters to numerically simulate the spike timing, the rhythm and the inter-spike intervals for the rest of the recording. To assess how well the model fits to the measured data we combine measures of spike train synchrony, namely the Victor-Purpura distance and the Gaussian similarity measure, with time-scale independent train distances. We show that a wise combination of metrics results in models that predict the spikes with temporal accuracy ranging, on average, from 53% to more than 80%, depending on the number of the neurons' spikes recorded. The model's prediction is adequate for estimating accurately the spike rhythm. Quantitative results establish the model's validity as a simple yet biologically plausible model of the spike activity recorded from a deep nucleus inside the human brain.
机译:已经提出了几种具有不同程度复杂性的模型来对人脑不同部位的神经元活动进行建模。我们之前已经证明,可以使用各种建模方法(包括Hammerstein-Wiener(H-W)模型)来利用潜在的局部场电势来预测深核(丘脑下核)的尖峰序列。在本文中,我们深入介绍了在H-W模型参数识别过程中必须做出的各种选择以及它们引入的限制。从一段记录的数据(其中包含有关单个神经元的尖峰时间的信息)中,我们识别并提取模型参数。然后,我们使用这些参数来数值模拟剩余录音的尖峰定时,节奏和尖峰间隔。为了评估模型与测量数据的拟合程度,我们结合了尖峰火车同步度的测量值,即Victor-Purpura距离和高斯相似性测量值,以及与时标无关的火车距离。我们显示,指标的明智组合会导致模型预测时间峰值的平均准确度范围从53%到80%以上,具体取决于记录的神经元峰值的数量。该模型的预测足以准确估计峰值节奏。定量结果证实了该模型的有效性,因为它是从人脑深部核中记录的尖峰活动的简单但生物学上合理的模型。

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