Motivation: Statistical tests for the detection of differentially expressed genes lead to a large collection of p-values one for each gene comparison. Without any further adjustment, these p-values may lead to a large number of false positives, simply because the number of genes to be tested is huge, which might mean wastage of laboratory resources. To account for multiple hypotheses, these p-values are typically adjusted using a single step method or a step-down method in order to achieve an overall control of the error rate (the so called familywise error rate). In many applications, this may lead to an overly conservative strategy leading to too few genes being flagged. Results: In this paper we introduce a novel empirical Bayes screeni...
Microarrays enable to measure the expression levels of tens of thousands of genes simultaneously. On...
This thesis focuses on analyzing the type of data returned by two pieces of technology, the older an...
This project concentrates on developing a nonparametric Empirical Bayes (EB) method on predicting pa...
Motivation: Statistical tests for the detection of differentially expressed genes lead to a large co...
In recent microarray experiments thousands of gene expressions are simultaneously tested in comparin...
An efficient method to reduce the dimensionality of microarray gene expression data from thousands o...
Background: When analyzing microarray data a primary objective is often to find differentially expre...
Gene expression microarrays have become powerful tools in many areas of biological and biomedical re...
Simultaneously testing multiple hypotheses is important in high-dimensional biological studies. In ...
The burgeoning field of genomics has revived interest in multiple testing procedures by raising new ...
Case-control studies of genetic polymorphisms and gene-environment interactions are reporting large ...
cDNA microarrays is one of the first high-throughput gene expression technologies that has emerged w...
Recently, the field of multiple hypothesis testing has experienced a great expansion, basically beca...
Microarray technology has been widely used in biological and medical studies. Different statistical ...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Microarrays enable to measure the expression levels of tens of thousands of genes simultaneously. On...
This thesis focuses on analyzing the type of data returned by two pieces of technology, the older an...
This project concentrates on developing a nonparametric Empirical Bayes (EB) method on predicting pa...
Motivation: Statistical tests for the detection of differentially expressed genes lead to a large co...
In recent microarray experiments thousands of gene expressions are simultaneously tested in comparin...
An efficient method to reduce the dimensionality of microarray gene expression data from thousands o...
Background: When analyzing microarray data a primary objective is often to find differentially expre...
Gene expression microarrays have become powerful tools in many areas of biological and biomedical re...
Simultaneously testing multiple hypotheses is important in high-dimensional biological studies. In ...
The burgeoning field of genomics has revived interest in multiple testing procedures by raising new ...
Case-control studies of genetic polymorphisms and gene-environment interactions are reporting large ...
cDNA microarrays is one of the first high-throughput gene expression technologies that has emerged w...
Recently, the field of multiple hypothesis testing has experienced a great expansion, basically beca...
Microarray technology has been widely used in biological and medical studies. Different statistical ...
High-throughput gene analysis technology such as cDNA microarray and oligonucleotide arrays has enab...
Microarrays enable to measure the expression levels of tens of thousands of genes simultaneously. On...
This thesis focuses on analyzing the type of data returned by two pieces of technology, the older an...
This project concentrates on developing a nonparametric Empirical Bayes (EB) method on predicting pa...