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

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 pa...

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Main Authors: Agus Hartoyo, Peter J Cadusch, David T J Liley, Damien G Hicks
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-05-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1006694
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spelling doaj-34ce293b7a4e4e479cd2500fabfc18542021-04-21T15:11:09ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582019-05-01155e100669410.1371/journal.pcbi.1006694Parameter estimation and identifiability in a neural population model for electro-cortical activity.Agus HartoyoPeter J CaduschDavid T J LileyDamien G HicksElectroencephalography (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.https://doi.org/10.1371/journal.pcbi.1006694
collection DOAJ
language English
format Article
sources DOAJ
author Agus Hartoyo
Peter J Cadusch
David T J Liley
Damien G Hicks
spellingShingle Agus Hartoyo
Peter J Cadusch
David T J Liley
Damien G Hicks
Parameter estimation and identifiability in a neural population model for electro-cortical activity.
PLoS Computational Biology
author_facet Agus Hartoyo
Peter J Cadusch
David T J Liley
Damien G Hicks
author_sort Agus Hartoyo
title Parameter estimation and identifiability in a neural population model for electro-cortical activity.
title_short Parameter estimation and identifiability in a neural population model for electro-cortical activity.
title_full Parameter estimation and identifiability in a neural population model for electro-cortical activity.
title_fullStr Parameter estimation and identifiability in a neural population model for electro-cortical activity.
title_full_unstemmed Parameter estimation and identifiability in a neural population model for electro-cortical activity.
title_sort parameter estimation and identifiability in a neural population model for electro-cortical activity.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2019-05-01
description 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.
url https://doi.org/10.1371/journal.pcbi.1006694
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