Most statistical methods for microarray data analysis consider one gene at a time, and they may miss subtle changes at the single gene level. This limitation may be overcome by considering a set of genes simultaneously where the gene sets are derived from prior biological knowledge. We call a pathway as a predefined set of genes that serve a particular cellular or physiological function. Limited work has been done in the regression settings to study the effects of clinical covariates and expression levels of genes in a pathway on a continuous clinical outcome. A semiparametric regression approach for identifying pathways related to a continuous outcome was proposed by Liu et al. (2007), who demonstrated the connection between a least square...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Identifying perturbed or dysregulated pathways is critical to understanding the biological processes...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
Many statistical methods for microarray data analysis consider one gene at a time, and they may miss...
The wide application of the genomic microarray technology triggers a tremendous need in the developm...
SUMMARY. We consider a semiparametric regression model that relates a normal outcome to covariates a...
We consider a semiparametric regression model that relates a normal outcome to covariates and a gene...
BACKGROUND: Growing interest on biological pathways has called for new statistical methods for mode...
Multiple methods have been proposed to estimate pathway activities from expression profiles, and yet...
After many years of biomedical research, biologists have accumulated much knowledge about genes\u27 ...
Gene class, ontology, or pathway testing analysis has become increasingly popular in microarray data...
Motivation: Although numerous methods have been developed to better capture biological information f...
A variety of new procedures have been devised to handle the two sample comparison (e.g., tumor versu...
Abstract Background Microarray experiments examine th...
<div><p>Standard approaches to data analysis in genome-wide association studies (GWAS) ignore any po...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Identifying perturbed or dysregulated pathways is critical to understanding the biological processes...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
Many statistical methods for microarray data analysis consider one gene at a time, and they may miss...
The wide application of the genomic microarray technology triggers a tremendous need in the developm...
SUMMARY. We consider a semiparametric regression model that relates a normal outcome to covariates a...
We consider a semiparametric regression model that relates a normal outcome to covariates and a gene...
BACKGROUND: Growing interest on biological pathways has called for new statistical methods for mode...
Multiple methods have been proposed to estimate pathway activities from expression profiles, and yet...
After many years of biomedical research, biologists have accumulated much knowledge about genes\u27 ...
Gene class, ontology, or pathway testing analysis has become increasingly popular in microarray data...
Motivation: Although numerous methods have been developed to better capture biological information f...
A variety of new procedures have been devised to handle the two sample comparison (e.g., tumor versu...
Abstract Background Microarray experiments examine th...
<div><p>Standard approaches to data analysis in genome-wide association studies (GWAS) ignore any po...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Identifying perturbed or dysregulated pathways is critical to understanding the biological processes...
The development of microarray technology allows the simultaneous measurement of the expression of ma...