Brain Model State Space Reconstruction Using an LSTM Neural Network

01/20/2023
by   Yueyang Liu, et al.
0

Objective Kalman filtering has previously been applied to track neural model states and parameters, particularly at the scale relevant to EEG. However, this approach lacks a reliable method to determine the initial filter conditions and assumes that the distribution of states remains Gaussian. This study presents an alternative, data-driven method to track the states and parameters of neural mass models (NMMs) from EEG recordings using deep learning techniques, specifically an LSTM neural network. Approach An LSTM filter was trained on simulated EEG data generated by a neural mass model using a wide range of parameters. With an appropriately customised loss function, the LSTM filter can learn the behaviour of NMMs. As a result, it can output the state vector and parameters of NMMs given observation data as the input. Main Results Test results using simulated data yielded correlations with R squared of around 0.99 and verified that the method is robust to noise and can be more accurate than a nonlinear Kalman filter when the initial conditions of the Kalman filter are not accurate. As an example of real-world application, the LSTM filter was also applied to real EEG data that included epileptic seizures, and revealed changes in connectivity strength parameters at the beginnings of seizures. Significance Tracking the state vector and parameters of mathematical brain models is of great importance in the area of brain modelling, monitoring, imaging and control. This approach has no need to specify the initial state vector and parameters, which is very difficult to do in practice because many of the variables being estimated cannot be measured directly in physiological experiments. This method may be applied using any neural mass model and, therefore, provides a general, novel, efficient approach to estimate brain model variables that are often difficult to measure.

READ FULL TEXT

page 10

page 11

page 13

research
08/23/2016

The discriminative Kalman filter for nonlinear and non-Gaussian sequential Bayesian filtering

The Kalman filter (KF) is used in a variety of applications for computin...
research
08/26/2020

Bellman filtering for state-space models

This article presents a new filter for state-space models based on Bellm...
research
12/19/2019

Identication of abrupt stiffness changes of structures with tuned mass dampers under sudden events

This paper presents a recursive system identification method for multi-d...
research
10/18/2021

Unsupervised Learned Kalman Filtering

In this paper we adapt KalmanNet, which is a recently pro-posed deep neu...
research
08/26/2022

Solving large-scale MEG/EEG source localization and functional connectivity problems simultaneously using state-space models

State-space models are used in many fields when dynamics are unobserved....
research
12/19/2019

Identification of abrupt stiffness changes of structures with tuned mass dampers under sudden events

This paper presents a recursive system identification method for multi-d...
research
11/21/2021

Automated Controller Calibration by Kalman Filtering

This paper proposes a method for calibrating control parameters. Example...

Please sign up or login with your details

Forgot password? Click here to reset