A great deal of recent research has focused on the challenging task of selecting differentially expressed genes from microarray data ('gene selection'). Numerous gene selection algorithms have been proposed in the literature, but it is often unclear exactly how these algorithms respond to conditions like small sample-sizes or differing variances. Choosing an appropriate algorithm can therefore be difficult in many cases. In this paper we propose a theoretical analysis of gene selection, in which the probability of successfully selecting relevant genes, using a given gene ranking function, is explicitly calculated in terms of population parameters. The theory developed is applicable to any ranking function which has a known sampling distribu...
This paper presents an empirical study that aims to explain the relationship between the number of s...
Gene selection is a very important problem in microarray data analysis and has critical implications...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
A great deal of recent research has focused on the challenging task of selecting differentially expr...
A great deal of recent research has focused on the challenging task of selecting differentially expr...
In microarray data, gene selection can make data analysis efficient and biological interpretations o...
DNA microarrays have been used for the purpose of monitoring expression levels of thousands of genes...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
This paper addresses the issue of the stability of lists of genes identified as differentially expre...
Gene selection methods aim at determining biologically relevant subsets of genes in DNA microarray e...
Gene-expression data gathered with microarrays play an important role in detection, classification, ...
Abstract:- This paper presents adaptive algorithms for ranking and selecting differentially expresse...
Abstract Background The number of genes declared differentially expressed is a random variable and i...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
This thesis investigates three most challenging statistical problems that relate to three important ...
This paper presents an empirical study that aims to explain the relationship between the number of s...
Gene selection is a very important problem in microarray data analysis and has critical implications...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...
A great deal of recent research has focused on the challenging task of selecting differentially expr...
A great deal of recent research has focused on the challenging task of selecting differentially expr...
In microarray data, gene selection can make data analysis efficient and biological interpretations o...
DNA microarrays have been used for the purpose of monitoring expression levels of thousands of genes...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
This paper addresses the issue of the stability of lists of genes identified as differentially expre...
Gene selection methods aim at determining biologically relevant subsets of genes in DNA microarray e...
Gene-expression data gathered with microarrays play an important role in detection, classification, ...
Abstract:- This paper presents adaptive algorithms for ranking and selecting differentially expresse...
Abstract Background The number of genes declared differentially expressed is a random variable and i...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
This thesis investigates three most challenging statistical problems that relate to three important ...
This paper presents an empirical study that aims to explain the relationship between the number of s...
Gene selection is a very important problem in microarray data analysis and has critical implications...
230 p.One problem with discriminant analysis of DNA microarray data is that each sample is represent...