TY - CHAP
T1 - Hierarchical Spatio-Temporal Modeling of Resting State fMRI Data
AU - Caponera, Alessia
AU - Denti, Francesco
AU - Rigon, Tommaso
AU - Sottosanti, Andrea
AU - Gelfand, Alan
PY - 2018
Y1 - 2018
N2 - In recent years, state of the art brain imaging techniques like Functional Magnetic Resonance Imaging (fMRI), have raised new challenges to the statistical community, which is asked to provide new frameworks for modeling and data analysis. Here, motivated by resting state fMRI data, which can be seen as a collection of spatially dependent functional observations among brain regions, we propose a parsimonious but flexible representation of their dependence structure leveraging a Bayesian time-dependent latent factor model. Adopting an assumption of separability of the covariance structure in space and time, we are able to substantially reduce the computational cost and, at the same time, provide interpretable results. Theoretical properties of the model along with identifiability conditions are discussed. For model fitting, we propose a mcmc algorithm to enable posterior inference. We illustrate our work through an application to a dataset coming from the enkirs project, discussing the estimated covariance structure and also performing model selection along with network analysis. Our modeling is preliminary but offers ideas for developing fully Bayesian fMRI models, incorporating a plausible space and time dependence structure.
AB - In recent years, state of the art brain imaging techniques like Functional Magnetic Resonance Imaging (fMRI), have raised new challenges to the statistical community, which is asked to provide new frameworks for modeling and data analysis. Here, motivated by resting state fMRI data, which can be seen as a collection of spatially dependent functional observations among brain regions, we propose a parsimonious but flexible representation of their dependence structure leveraging a Bayesian time-dependent latent factor model. Adopting an assumption of separability of the covariance structure in space and time, we are able to substantially reduce the computational cost and, at the same time, provide interpretable results. Theoretical properties of the model along with identifiability conditions are discussed. For model fitting, we propose a mcmc algorithm to enable posterior inference. We illustrate our work through an application to a dataset coming from the enkirs project, discussing the estimated covariance structure and also performing model selection along with network analysis. Our modeling is preliminary but offers ideas for developing fully Bayesian fMRI models, incorporating a plausible space and time dependence structure.
KW - Bayesian factor analysis
KW - Gaussian processes
KW - Low-rank factorizations
KW - Separable models
KW - Bayesian factor analysis
KW - Gaussian processes
KW - Low-rank factorizations
KW - Separable models
UR - http://hdl.handle.net/10807/201727
U2 - 10.1007/978-3-030-00039-4_7
DO - 10.1007/978-3-030-00039-4_7
M3 - Chapter
SN - 978-3-030-00038-7
VL - 257
T3 - SPRINGER PROCEEDINGS IN MATHEMATICS & STATISTICS
SP - 111
EP - 130
BT - Studies in Neural Data Science
A2 - Antonio Canale, Daniele Durante, Lucia Paci, Bruno Scarpa
ER -