Background: In high density arrays, the identification of relevant genes for disease classification is complicated by not only the curse of dimensionality but also the highly correlated nature of the array data. In this paper, we are interested in the question of how many and which genes should be selected for a disease class prediction. Our work consists of a Bayesian supervised statistical learning approach to refine gene signatures with a regularization which penalizes for the correlation between the variables selected. Results: Our simulation results show that we can most often recover the correct subset of genes that predict the class as compared to other methods, even when accuracy and subset size remain the same. On real microarray d...
Cancer can develop through a series of genetic events in combination with external influential facto...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Microarrays are being increasingly used in cancer research for a better understanding of the molecul...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
Gene expression analysis aims at identifying the genes able to accurately predict biological paramet...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
Thesis (Ph.D.)--University of Hawaii at Manoa, 2008.DNA microarray technology has provided researche...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Computing methods that allow the efficient and accurate processing of experimentally gathered data p...
Gene expression analysis aims at identifying the genes able to accurately predict biological paramet...
Analysis of gene expression is one of the main research areas of bioinformatics. The advances in mol...
Identifying molecular signatures of disease phenotypes is studied using two mainstream approaches: (...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Cancer can develop through a series of genetic events in combination with external influential facto...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...
Microarrays are being increasingly used in cancer research for a better understanding of the molecul...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
Gene expression analysis aims at identifying the genes able to accurately predict biological paramet...
We review the use of Bayesian methods for analyzing gene expression data. We focus on methods which ...
Thesis (Ph.D.)--University of Hawaii at Manoa, 2008.DNA microarray technology has provided researche...
Microarray data routinely contain gene expression levels of thousands of genes. In the context of me...
Computing methods that allow the efficient and accurate processing of experimentally gathered data p...
Gene expression analysis aims at identifying the genes able to accurately predict biological paramet...
Analysis of gene expression is one of the main research areas of bioinformatics. The advances in mol...
Identifying molecular signatures of disease phenotypes is studied using two mainstream approaches: (...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Cancer can develop through a series of genetic events in combination with external influential facto...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
With the rise of high throughput technologies in biomedical research, large volumes of expression pr...