High-dimensional datasets with large amounts of redundant information are nowadays available for hypothesis-free exploration of scientific questions. A particular case is genome-wide association analysis, where variations in the genome are searched for effects on disease or other traits. Bayesian variable selection has been demonstrated as a possible analysis approach, which can account for the multifactorial nature of the genetic effects in a linear regression model.Yet, the computation presents a challenge and application to large-scale data is not routine. Here, we study aspects of the computation using the Metropolis-Hastings algorithm for the variable selection: finite adaptation of the proposal distributions, multistep moves for chang...
Genome-wide association (GWA) studies utilize a large number of genetic variants, usually single nuc...
© 2016 Dr Zeyu ZhouA Genome Wide Association Study(GWAS) aims to find genetic variants that are asso...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
VK: coin hiitHigh-dimensional datasets with large amounts of redundant information are nowadays avai...
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...
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...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Over the past several years genetic variation has been the centre of attention for different branche...
Motivation: Genome-wide association studies (GWAS) involving half a million or more single nucleotid...
Over the past several years genetic variation has been the centre of attention for different branche...
Abstract Background The success achieved by genome-wide association (GWA) studies in the identificat...
Genome-wide association (GWA) studies utilize a large number of genetic variants, usually single nuc...
© 2016 Dr Zeyu ZhouA Genome Wide Association Study(GWAS) aims to find genetic variants that are asso...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
VK: coin hiitHigh-dimensional datasets with large amounts of redundant information are nowadays avai...
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...
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...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clin...
Over the past several years genetic variation has been the centre of attention for different branche...
Motivation: Genome-wide association studies (GWAS) involving half a million or more single nucleotid...
Over the past several years genetic variation has been the centre of attention for different branche...
Abstract Background The success achieved by genome-wide association (GWA) studies in the identificat...
Genome-wide association (GWA) studies utilize a large number of genetic variants, usually single nuc...
© 2016 Dr Zeyu ZhouA Genome Wide Association Study(GWAS) aims to find genetic variants that are asso...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...