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Parameter estimation and identifiability in a neural population model for electro-cortical activity

机译:神经皮质电活动模型中的参数估计和可识别性

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摘要

Electroencephalography (EEG) provides a non-invasive measure of brain electrical activity. Neural population models, where large numbers of interacting neurons are considered collectively as a macroscopic system, have long been used to understand features in EEG signals. By tuning dozens of input parameters describing the excitatory and inhibitory neuron populations, these models can reproduce prominent features of the EEG such as the alpha-rhythm. However, the inverse problem, of directly estimating the parameters from fits to EEG data, remains unsolved. Solving this multi-parameter non-linear fitting problem will potentially provide a real-time method for characterizing average neuronal properties in human subjects. Here we perform unbiased fits of a 22-parameter neural population model to EEG data from 82 individuals, using both particle swarm optimization and Markov chain Monte Carlo sampling. We estimate how much is learned about individual parameters by computing Kullback-Leibler divergences between posterior and prior distributions for each parameter. Results indicate that only a single parameter, that determining the dynamics of inhibitory synaptic activity, is directly identifiable, while other parameters have large, though correlated, uncertainties. We show that the eigenvalues of the Fisher information matrix are roughly uniformly spaced over a log scale, indicating that the model is sloppy, like many of the regulatory network models in systems biology. These eigenvalues indicate that the system can be modeled with a low effective dimensionality, with inhibitory synaptic activity being prominent in driving system behavior.
机译:脑电图(EEG)提供了一种非侵入性的脑电活动测量方法。长期以来,人们一直使用神经种群模型将大量相互作用的神经元统​​称为宏观系统,以了解EEG信号的特征。通过调整许多描述兴奋性和抑制性神经元种群的输入参数,这些模型可以重现脑电图的突出特征,例如α律动。但是,直接从拟合到EEG数据中估计参数的反问题仍未解决。解决此多参数非线性拟合问题将有可能提供一种表征人类受试者平均神经元特性的实时方法。在这里,我们使用粒子群优化和马尔可夫链蒙特卡洛采样法对22个个体的EEG数据进行22参数神经人口模型的无偏拟合。通过计算每个参数的后验分布和先验分布之间的Kullback-Leibler散度,我们估计可以了解到有关各个参数的知识。结果表明,只有一个参数可以直接确定抑制性突触活动的动力学,而其他参数则具有较大的不确定性,尽管相关。我们表明,费舍尔信息矩阵的特征值在对数刻度上大致均匀地间隔开,这表明该模型很草率,就像系统生物学中的许多监管网络模型一样。这些特征值表明可以用低有效维数对系统进行建模,抑制突触活动在驱动系统行为方面很突出。

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