A Bayesian State-Space Approach to Mapping Directional Brain Networks

12/21/2020
by   Huazhang Li, et al.
0

The human brain is a directional network system of brain regions involving directional connectivity. Seizures are a directional network phenomenon as abnormal neuronal activities start from a seizure onset zone (SOZ) and propagate to otherwise healthy regions. To localize the SOZ of an epileptic patient, clinicians use iEEG to record the patient's intracranial brain activity in many small regions. iEEG data are high-dimensional multivariate time series. We build a state-space multivariate autoregression (SSMAR) for iEEG data to model the underlying directional brain network. To produce scientifically interpretable network results, we incorporate into the SSMAR the scientific knowledge that the underlying brain network tends to have a cluster structure. Specifically, we assign to the SSMAR parameters a stochastic-blockmodel-motivated prior, which reflects the cluster structure. We develop a Bayesian framework to estimate the SSMAR, infer directional connections, and identify clusters for the unobserved network edges. The new method is robust to violations of model assumptions and outperforms existing network methods. By applying the new method to an epileptic patient's iEEG data, we reveal seizure initiation and propagation in the patient's brain network. Our method can also accurately localize the SOZ. Overall, this paper provides a tool to study the human brain network.

READ FULL TEXT
research
08/16/2022

High-Dimensional Directional Brain Network Analysis for Focal Epileptic Seizures

The brain is a high-dimensional directional network system consisting of...
research
01/22/2020

Causality based Feature Fusion for Brain Neuro-Developmental Analysis

Human brain development is a complex and dynamic process that is affecte...
research
01/03/2023

Covariate-guided Bayesian mixture model for multivariate time series

With rapid development of techniques to measure brain activity and struc...
research
07/20/2023

Gaussian Partial Information Decomposition: Bias Correction and Application to High-dimensional Data

Recent advances in neuroscientific experimental techniques have enabled ...
research
08/09/2022

Cluster extent inference revisited: quantification and localization of brain activity

Cluster inference based on spatial extent thresholding is the most popul...
research
09/06/2019

A framework for seizure detection using effective connectivity, graph theory and deep modular neural networks

Objective The electrical characteristics of the EEG signals can be use...

Please sign up or login with your details

Forgot password? Click here to reset