A hierarchical random effects state-space model for modeling brain activities from electroencephalogram data
Document Type
Article
Publication Date
12-1-2024
Abstract
Mental disorders present challenges in diagnosis and treatment due to their complex and heterogeneous nature. Electroencephalogram (EEG) has shown promise as a source of potential biomarkers for these disorders. However, existing methods for analyzing EEG signals have limitations in addressing heterogeneity and capturing complex brain activity patterns between regions. This paper proposes a novel random effects state-space model (RESSM) for analyzing large-scale multi-channel resting-state EEG signals, accounting for the heterogeneity of brain connectivities between groups and individual subjects. We incorporate multi-level random effects for temporal dynamical and spatial mapping matrices and address non-stationarity so that the brain connectivity patterns can vary over time. The model is fitted under a Bayesian hierarchical model framework coupled with a Gibbs sampler. Compared to previous mixed-effects state-space models, we directly model high-dimensional random effects matrices of interest without structural constraints and tackle the challenge of identifiability. Through extensive simulation studies, we demonstrate that our approach yields valid estimation and inference. We apply RESSM to a multi-site clinical trial of major depressive disorder (MDD). Our analysis uncovers significant differences in resting-state brain temporal dynamics among MDD patients compared to healthy individuals. In addition, we show the subject-level EEG features derived from RESSM exhibit a superior predictive value for the heterogeneous treatment effect compared to the EEG frequency band power, suggesting the potential of EEG as a valuable biomarker for MDD.
Identifier
85208597244 (Scopus)
Publication Title
Biometrics
External Full Text Location
https://doi.org/10.1093/biomtc/ujae130
e-ISSN
15410420
ISSN
0006341X
PubMed ID
39504537
Issue
4
Volume
80
Grant
MH123487
Fund Ref
National Institutes of Health
Recommended Citation
Guo, Xingche; Yang, Bin; Loh, Ji Meng; Wang, Qinxia; and Wang, Yuanjia, "A hierarchical random effects state-space model for modeling brain activities from electroencephalogram data" (2024). Faculty Publications. 34.
https://digitalcommons.njit.edu/fac_pubs/34