We introduce a mass-univariate framework for the analysis of whole-brain structural trajectories using longitudinal Voxel-Based Morphometry data and Bayesian inference. Our approach to developmental and aging longitudinal studies characterizes heterogeneous structural growth/decline between and within groups. In particular, we propose a probabilistic generative model that parameterizes individual and ensemble average changes in brain structure using linear mixed-effects models of age and subject-specific covariates. Model inversion uses Expectation Maximization (EM), while voxelwise (empirical) priors on the size of individual differences are estimated from the data. Bayesian inference on individual and group trajectories is realized using ...
IntroductionWe characterize long-term disease dynamics from cognitively healthy to dementia using da...
We used a data-driven Bayesian model to automatically identify distinct latent factors of overlappin...
University of Minnesota Ph.D. dissertation. April 2019. Major: Statistics. Advisors: Galin Jones, Ma...
We introduce a mass-univariate framework for the analysis of whole-brain structural trajectories usi...
We introduce a mass-univariate framework for the analysis of whole-brain structural trajectories usi...
AbstractWe introduce a mass-univariate framework for the analysis of whole-brain structural trajecto...
Objectives In recent years, large scale longitudinal neuroimaging studies have improved our understa...
International audienceWe propose a generic Bayesian mixed-effects model to estimate the temporal pro...
The aging brain’s structural development constitutes a spatiotemporal process that is accessible by ...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
Early detection of neurodegeneration, and prediction of when neurodegenerative diseases will lead to...
International audienceIn this study we propose a deformation-based framework to jointly model the in...
It is important to characterize the temporal trajectories of disease-related biomarkers in order to ...
This thesis develops and applies statistical methodologies to model brain atrophy in humans among mu...
Both normal aging and neurodegenerative disorders such as Alzheimer's disease (AD) cause morphologic...
IntroductionWe characterize long-term disease dynamics from cognitively healthy to dementia using da...
We used a data-driven Bayesian model to automatically identify distinct latent factors of overlappin...
University of Minnesota Ph.D. dissertation. April 2019. Major: Statistics. Advisors: Galin Jones, Ma...
We introduce a mass-univariate framework for the analysis of whole-brain structural trajectories usi...
We introduce a mass-univariate framework for the analysis of whole-brain structural trajectories usi...
AbstractWe introduce a mass-univariate framework for the analysis of whole-brain structural trajecto...
Objectives In recent years, large scale longitudinal neuroimaging studies have improved our understa...
International audienceWe propose a generic Bayesian mixed-effects model to estimate the temporal pro...
The aging brain’s structural development constitutes a spatiotemporal process that is accessible by ...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
Early detection of neurodegeneration, and prediction of when neurodegenerative diseases will lead to...
International audienceIn this study we propose a deformation-based framework to jointly model the in...
It is important to characterize the temporal trajectories of disease-related biomarkers in order to ...
This thesis develops and applies statistical methodologies to model brain atrophy in humans among mu...
Both normal aging and neurodegenerative disorders such as Alzheimer's disease (AD) cause morphologic...
IntroductionWe characterize long-term disease dynamics from cognitively healthy to dementia using da...
We used a data-driven Bayesian model to automatically identify distinct latent factors of overlappin...
University of Minnesota Ph.D. dissertation. April 2019. Major: Statistics. Advisors: Galin Jones, Ma...