We consider a Bayesian hierarchical model for the integration of gene expression levels with comparative genomic hybridization (CGH) array measurements collected on the same subjects. The approach defines a measurement error model that relates the gene expression levels to latent copy number states. In turn, the latent states are related to the observed surrogate CGH measurements via a hidden Markov model. The model further incorporates variable selection with a spatial prior based on a probit link that exploits dependencies across adjacent DNA segments. Posterior inference is carried out via Markov chain Monte Carlo stochastic search techniques. We study the performance of the model in simulations and show better results than those achieve...
The last decade has been characterized by an explosion of biological sequence information. When the ...
We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian...
We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
Genomic alterations have been linked to the development and progression of cancer. The technique of ...
We describe a method for the integration of high-throughput data from different sources. More specif...
We describe a method for the integration of high-throughput data from different sources. More specif...
We describe a method for the integration of high-throughput data from different sources. More specif...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
This dissertation introduces a novel approach for addressing the complexities of mapping a complex d...
Genomic alterations have been linked to the development and progression of cancer. The technique of ...
The last decade has been characterized by an explosion of biological sequence information. When the ...
We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian...
We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
A number of statistical models have been successfully developed for the analysis of high-throughput ...
Genomic alterations have been linked to the development and progression of cancer. The technique of ...
We describe a method for the integration of high-throughput data from different sources. More specif...
We describe a method for the integration of high-throughput data from different sources. More specif...
We describe a method for the integration of high-throughput data from different sources. More specif...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
This dissertation introduces a novel approach for addressing the complexities of mapping a complex d...
Genomic alterations have been linked to the development and progression of cancer. The technique of ...
The last decade has been characterized by an explosion of biological sequence information. When the ...
We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian...
We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian...