Abstract Background Genome-wide or application-targeted microarrays containing a subset of genes of interest have become widely used as a research tool with the prospect of diagnostic application. Intrinsic variability of microarray measurements poses a major problem in defining signal thresholds for absent/present or differentially expressed genes. Most strategies have used fold-change threshold values, but variability at low signal intensities may invalidate this approach and it does not provide information about false-positives and false negatives. Results We introduce a method to filter false-positives and false-negatives from DNA microarray experiments. This is achieved by evaluating a set of positive and negative controls by receiver ...
Microarray technology has transformed the field of cancer biology by enabling the simultaneous evalu...
In this research, we have addressed several questions on bioinformatics from statistical perspective...
In microarray data mining, one of the key problems is how to handle weak signals. Based on a bent pi...
The use of a constant fold-change to determine significant changes in gene expression has been widel...
The use of a constant fold-change to determine significant changes in gene expression has been widel...
*Corresponding authors Gene expression signatures from microarray experiments promise to provide imp...
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
[[abstract]]Abstract Cancer is due to gene mutation. At present, there are two kinds of genes, oncog...
In this paper, fluorescent microarray images and various analysis techniques are described to improv...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
In this paper, fluorescent microarray images and various analysis techniques are described to improv...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Much has been studied about cancer and one of the most extensively researched areas has been in canc...
Abstract Background The goal of most microarray studies is either the identification of genes that a...
MOTIVATION: Statistical methods are used to test for the differential expression of genes in microar...
Microarray technology has transformed the field of cancer biology by enabling the simultaneous evalu...
In this research, we have addressed several questions on bioinformatics from statistical perspective...
In microarray data mining, one of the key problems is how to handle weak signals. Based on a bent pi...
The use of a constant fold-change to determine significant changes in gene expression has been widel...
The use of a constant fold-change to determine significant changes in gene expression has been widel...
*Corresponding authors Gene expression signatures from microarray experiments promise to provide imp...
The methodological advancement in microarray data analysis on the basis of false discovery rate (FDR...
[[abstract]]Abstract Cancer is due to gene mutation. At present, there are two kinds of genes, oncog...
In this paper, fluorescent microarray images and various analysis techniques are described to improv...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
In this paper, fluorescent microarray images and various analysis techniques are described to improv...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Much has been studied about cancer and one of the most extensively researched areas has been in canc...
Abstract Background The goal of most microarray studies is either the identification of genes that a...
MOTIVATION: Statistical methods are used to test for the differential expression of genes in microar...
Microarray technology has transformed the field of cancer biology by enabling the simultaneous evalu...
In this research, we have addressed several questions on bioinformatics from statistical perspective...
In microarray data mining, one of the key problems is how to handle weak signals. Based on a bent pi...