To perform a joint analysis of multivariate neuroimaging phenotypes and candidate genetic markers obtained from longitudinal studies, we develop a Bayesian longitudinal low-rank regression (L2R2) model. The L2R2 model integrates three key methodologies: a low-rank matrix for approximating the high-dimensional regression coefficient matrices corresponding to the genetic main effects and their interactions with time, penalized splines for characterizing the overall time effect, and a sparse factor analysis model coupled with random effects for capturing within-subject spatio-temporal correlations of longitudinal phenotypes. Posterior computation proceeds via an efficient Markov chainMonte Carlo algorithm. Simulations show that the L2R2 model ...
Advances in technology for brain imaging and genotyping have motivated studies examining the relatio...
There is growing interest in performing genome-wide searches for associations between genetic varian...
There is growing interest in performing genome-wide searches for associations between genetic varian...
To perform a joint analysis of multivariate neuroimaging phenotypes and candidate genetic markers ob...
We propose a Bayesian generalized low rank regression model (GLRR) for the analysis of both high-dim...
We propose a Bayesian generalized low rank regression model (GLRR) for the analysis of both high-dim...
We propose a Bayesian generalized low-rank regression model (GLRR) for the analysis of both high-dim...
With rapid progress in high-throughput genotyping and neuroimaging, imaging genetics has gained sign...
Big data presents the overwhelming challenge of estimating a large number of parameters, which is mu...
Motivation: Neuroimaging genetics identifies the relationships between genetic variants (i.e., the s...
University of Minnesota Ph.D. dissertation. April 2019. Major: Statistics. Advisors: Galin Jones, Ma...
We present a new method for the detection of gene pathways associated with a multivariate quantitati...
Linear mixed effects (LME) modelling under both frequentist and Bayesian frameworks can be used to s...
AbstractWe present a new method for the detection of gene pathways associated with a multivariate qu...
Advances in technology for brain imaging and genotyping have motivated studies examining the relatio...
Advances in technology for brain imaging and genotyping have motivated studies examining the relatio...
There is growing interest in performing genome-wide searches for associations between genetic varian...
There is growing interest in performing genome-wide searches for associations between genetic varian...
To perform a joint analysis of multivariate neuroimaging phenotypes and candidate genetic markers ob...
We propose a Bayesian generalized low rank regression model (GLRR) for the analysis of both high-dim...
We propose a Bayesian generalized low rank regression model (GLRR) for the analysis of both high-dim...
We propose a Bayesian generalized low-rank regression model (GLRR) for the analysis of both high-dim...
With rapid progress in high-throughput genotyping and neuroimaging, imaging genetics has gained sign...
Big data presents the overwhelming challenge of estimating a large number of parameters, which is mu...
Motivation: Neuroimaging genetics identifies the relationships between genetic variants (i.e., the s...
University of Minnesota Ph.D. dissertation. April 2019. Major: Statistics. Advisors: Galin Jones, Ma...
We present a new method for the detection of gene pathways associated with a multivariate quantitati...
Linear mixed effects (LME) modelling under both frequentist and Bayesian frameworks can be used to s...
AbstractWe present a new method for the detection of gene pathways associated with a multivariate qu...
Advances in technology for brain imaging and genotyping have motivated studies examining the relatio...
Advances in technology for brain imaging and genotyping have motivated studies examining the relatio...
There is growing interest in performing genome-wide searches for associations between genetic varian...
There is growing interest in performing genome-wide searches for associations between genetic varian...