<div><p>The discovery of genetic or genomic markers plays a central role in the development of personalized medicine. A notable challenge exists when dealing with the high dimensionality of the data sets, as thousands of genes or millions of genetic variants are collected on a relatively small number of subjects. Traditional gene-wise selection methods using univariate analyses face difficulty to incorporate correlational, structural, or functional structures amongst the molecular measures. For microarray gene expression data, we first summarize solutions in dealing with ‘large p, small n’ problems, and then propose an integrative Bayesian variable selection (iBVS) framework for simultaneously identifying causal or marker genes and regulato...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
Background: In high density arrays, the identification of relevant genes for disease classification ...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
License, which permits unrestricted use, distribution, and reproduction in anymedium, provided the o...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
A substantial focus of research in molecular biology are gene regulatory networks: the set of transc...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
© 2014 Zhang et al.Background: Genome-wide Association Studies (GWAS) are typically designed to iden...
<div><p>Significant advances in biotechnology have allowed for simultaneous measurement of molecular...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
Background: In high density arrays, the identification of relevant genes for disease classification ...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
The discovery of genetic or genomic markers plays a central role in the development of personalized ...
License, which permits unrestricted use, distribution, and reproduction in anymedium, provided the o...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
A substantial focus of research in molecular biology are gene regulatory networks: the set of transc...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
© 2014 Zhang et al.Background: Genome-wide Association Studies (GWAS) are typically designed to iden...
<div><p>Significant advances in biotechnology have allowed for simultaneous measurement of molecular...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
Background: In high density arrays, the identification of relevant genes for disease classification ...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...