We consider modeling jointly microarray RNA expression and DNA copy number data. We propose Bayesian mixture models that define latent Gaussian probit scores for the DNA and RNA, and integrate between the two platforms via a regression of the RNA probit scores on the DNA probit scores. Such a regression conveniently allows us to include additional sample specific covariates such as biological conditions and clinical outcomes. The two developed methods are aimed respectively to make inference on differential behaviour of genes in patients showing different subtypes of breast cancer and to predict the pathological complete response (pCR) of patients borrowing strength across the genomic platforms. Posterior inference is carried out via MCMC s...
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 ...
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...
Filippo Trentini , University Centre of Statistics in the Biomedical Sciences, Vita-Salute San Raffa...
Abstract Copy number aberration is a common form of genomic instability in cancer. Gene expression i...
In DNA microarray analysis, it is an important problem to detect differentials of gene expression. W...
Summary. We propose model-based inference for differential gene expression, using a non-parametric B...
We present a Bayesian hierarchical model for detecting differentially expressed genes using a mixtur...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
Through the use of microarray technology researchers are now able to si-multaneously measure the exp...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
we develop a bayesian hierarchical model to integrate different genomic platform and discuss the nat...
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 ...
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...
Filippo Trentini , University Centre of Statistics in the Biomedical Sciences, Vita-Salute San Raffa...
Abstract Copy number aberration is a common form of genomic instability in cancer. Gene expression i...
In DNA microarray analysis, it is an important problem to detect differentials of gene expression. W...
Summary. We propose model-based inference for differential gene expression, using a non-parametric B...
We present a Bayesian hierarchical model for detecting differentially expressed genes using a mixtur...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
We consider a Bayesian hierarchical model for the integration of gene expression levels with compara...
Through the use of microarray technology researchers are now able to si-multaneously measure the exp...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
we develop a bayesian hierarchical model to integrate different genomic platform and discuss the nat...
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 ...