Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clinical and various kinds of molecular data may be available from a single study. Classical genetic association studies regress a single clinical outcome on many genetic variants one by one, but there is an increasing demand for joint analysis of many molecular outcomes and genetic variants in order to unravel functional interactions. Unfortunately, most existing approaches to joint modeling are either too simplistic to be powerful or are impracticable for computational reasons. Inspired by Richardson and others (2010, Bayesian Statistics 9), we consider a sparse multivariate regression model that allows simultaneous selection of predictors and ...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
Over the past several years genetic variation has been the centre of attention for different branche...
Motivated by genetic association studies of pleiotropy, we propose a Bayesian latent variable approa...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Most genome-wide association studies search for genetic variants associated to a single trait of int...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
VK: coin hiitHigh-dimensional datasets with large amounts of redundant information are nowadays avai...
Motivation: Both single marker and simultaneous analysis face chal-lenges in GWAS due to the large n...
High-dimensional datasets with large amounts of redundant information are nowadays available for hyp...
<div><p>High-dimensional datasets with large amounts of redundant information are nowadays available...
High-dimensional datasets with large amounts of redundant information are nowadays available for hyp...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
In this paper we propose a Bayesian modeling approach to the analysis of genome-wide association stu...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
Over the past several years genetic variation has been the centre of attention for different branche...
Motivated by genetic association studies of pleiotropy, we propose a Bayesian latent variable approa...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Most genome-wide association studies search for genetic variants associated to a single trait of int...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
Although complex diseases and traits are thought to have multifactorial genetic basis, the common me...
VK: coin hiitHigh-dimensional datasets with large amounts of redundant information are nowadays avai...
Motivation: Both single marker and simultaneous analysis face chal-lenges in GWAS due to the large n...
High-dimensional datasets with large amounts of redundant information are nowadays available for hyp...
<div><p>High-dimensional datasets with large amounts of redundant information are nowadays available...
High-dimensional datasets with large amounts of redundant information are nowadays available for hyp...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
In this paper we propose a Bayesian modeling approach to the analysis of genome-wide association stu...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
Over the past several years genetic variation has been the centre of attention for different branche...
Motivated by genetic association studies of pleiotropy, we propose a Bayesian latent variable approa...