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Classification-Based Prediction of Effective Connectivity Between Timeseries With a Realistic Cortical Network Model

机译:基于分类的预测时间序列之间的有效连通性以及真实的皮质网络模型

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摘要

Effective connectivity measures the pattern of causal interactions between brain regions. Traditionally, these patterns of causality are inferred from brain recordings using either non-parametric, i.e., model-free, or parametric, i.e., model-based, approaches. The latter approaches, when based on biophysically plausible models, have the advantage that they may facilitate the interpretation of causality in terms of underlying neural mechanisms. Recent biophysically plausible neural network models of recurrent microcircuits have shown the ability to reproduce well the characteristics of real neural activity and can be applied to model interacting cortical circuits. Unfortunately, however, it is challenging to invert these models in order to estimate effective connectivity from observed data. Here, we propose to use a classification-based method to approximate the result of such complex model inversion. The classifier predicts the pattern of causal interactions given a multivariate timeseries as input. The classifier is trained on a large number of pairs of multivariate timeseries and the respective pattern of causal interactions, which are generated by simulation from the neural network model. In simulated experiments, we show that the proposed method is much more accurate in detecting the causal structure of timeseries than current best practice methods. Additionally, we present further results to characterize the validity of the neural network model and the ability of the classifier to adapt to the generative model of the data.
机译:有效的连通性衡量大脑区域之间因果相互作用的模式。传统上,这些因果关系模式是通过使用非参数(即无模型)或参数(即基于模型)的方法从大脑记录中推断出来的。当基于生物物理上可行的模型时,后一种方法具有的优势在于,它们可以根据潜在的神经机制促进因果关系的解释。最近的递归微电路的生物物理学上似乎合理的神经网络模型已经显示出能够很好地再现真实神经活动特征的能力,并且可以用于对相互作用的皮质电路进行建模。但是,不幸的是,为了从观察到的数据中估算出有效的连通性,将这些模型反演具有挑战性。在这里,我们建议使用基于分类的方法来近似这种复杂模型反演的结果。给定多元时间序列作为输入,分类器可预测因果相互作用的模式。通过大量对多元时间序列和因果相互作用的相应模式对分类器进行训练,这些因果相互作用是通过神经网络模型的模拟生成的。在模拟实验中,我们表明,与当前的最佳实践方法相比,该方法在检测时间序列的因果结构方面更为准确。此外,我们提供了进一步的结果来表征神经网络模型的有效性以及分类器适应数据生成模型的能力。

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