Learning Nonlinear Brain Dynamics: van der Pol Meets LSTM

Author:

Abrevaya Germán,Aravkin Aleksandr,Cecchi Guillermo,Rish Irina,Polosecki Pablo,Zheng Peng,Dawson Silvina Ponce

Abstract

AbstractMany real-world data sets, especially in biology, are produced by highly multivariate and nonlinear complex dynamical systems. In this paper, we focus on brain imaging data, including both calcium imaging and functional MRI data. Standard vector-autoregressive models are limited by their linearity assumptions, while nonlinear general-purpose, large-scale temporal models, such as LSTM networks, typically require large amounts of training data, not always readily available in biological applications; furthermore, such models have limited interpretability. We introduce here a novel approach for learning a nonlinear differential equation model aimed at capturing brain dynamics. Specifically, we propose a variable-projection optimization approach to estimate the parameters of the multivariate (coupled) van der Pol oscillator, and demonstrate that such a model can accurately represent nonlinear dynamics of the brain data. Furthermore, in order to improve the predictive accuracy when forecasting future brain-activity time series, we use this analytical model as an unlimited source of simulated data for pretraining LSTM; such model-specific data augmentation approach consistently improves LSTM performance on both calcium and fMRI imaging data.

Publisher

Cold Spring Harbor Laboratory

Reference31 articles.

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. P-Bifurcation of Stochastic van der Pol Model as a Dynamical System in Neuroscience;Communications on Applied Mathematics and Computation;2022-03-09

2. The method of successive approximations for constructing a model of dynamic polynomial regression;Vestnik of Saint Petersburg University. Applied Mathematics. Computer Science. Control Processes;2022

3. Beautiful chaotic patterns generated using simple untrained recurrent neural networks under harmonic excitation;Nonlinear Dynamics;2020-06

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