An increasing challenge in analysis of microarray data is how to interpret and gain biological insight of profiles of thousands of genes. This paper provides a review of statistical methods for analysis of microarray data by incorporating prior biological knowledge using gene sets and biological pathways, which consist of groups of biolog-ically similar genes. We first discuss issues of individual gene analysis. We compare several methods for analysis of gene sets including over-representation anlaysis, gene set enrichment analysis, principal component analysis, global test, and kernel machine. We discuss the assumptions of these methods and their pros and cons. We illustrate these methods by application to a type II diabetes data set
Gene set analysis (GSA) is used to elucidate genome-wide data, in particular transcriptome data. A m...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
University of Minnesota Ph.D. dissertation. April 2009. Major:Biostatistics. Advisor: Wei Pan. 1 com...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Microarray technology allows measurement of the expression levels of thousand of genes simultaneousl...
AbstractGene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to ...
We review several commonly used methods for the design and analysis of microarray data. To begin wit...
Microarrays are a powerful tool for studying differential gene expression. However, lists of many di...
Abstract Background Gene-set analysis evaluates the expression of biological pathways, or a priori d...
We review several commonly used methods for the design and analysis of microarray data. To begin wit...
We review several commonly used methods for the design and analysis of microarray data. To begin wit...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
This paper discusses the problem of identifying differentially expressed groups of genes from a micr...
Background: Sets of genes that are known to be associated with each other can be used to interpret m...
Ph.D. Dissertation ThesisRecently, gene set analysis has become the first choice for gaining insight...
Gene set analysis (GSA) is used to elucidate genome-wide data, in particular transcriptome data. A m...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
University of Minnesota Ph.D. dissertation. April 2009. Major:Biostatistics. Advisor: Wei Pan. 1 com...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Microarray technology allows measurement of the expression levels of thousand of genes simultaneousl...
AbstractGene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to ...
We review several commonly used methods for the design and analysis of microarray data. To begin wit...
Microarrays are a powerful tool for studying differential gene expression. However, lists of many di...
Abstract Background Gene-set analysis evaluates the expression of biological pathways, or a priori d...
We review several commonly used methods for the design and analysis of microarray data. To begin wit...
We review several commonly used methods for the design and analysis of microarray data. To begin wit...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
This paper discusses the problem of identifying differentially expressed groups of genes from a micr...
Background: Sets of genes that are known to be associated with each other can be used to interpret m...
Ph.D. Dissertation ThesisRecently, gene set analysis has become the first choice for gaining insight...
Gene set analysis (GSA) is used to elucidate genome-wide data, in particular transcriptome data. A m...
The development of microarray technology allows the simultaneous measurement of the expression of ma...
University of Minnesota Ph.D. dissertation. April 2009. Major:Biostatistics. Advisor: Wei Pan. 1 com...