Abstract Background When DNA microarray data are used for gene clustering, genotype/phenotype correlation studies, or tissue classification the signal intensities are usually transformed and normalized in several steps in order to improve comparability and signal/noise ratio. These steps may include subtraction of an estimated background signal, subtracting the reference signal, smoothing (to account for nonlinear measurement effects), and more. Different authors use different approaches, and it is generally not clear to users which method they should prefer. Results We used the ratio between biological variance and measurement variance (which is an F-like statistic) as a quality measure for transformation methods, and we demonstrate a meth...
We derive and validate an estimator for the parameters of a transformation for the joint calibration...
Abstract Microarrays allow researchers to measure the expression of thousands of genes in a single e...
Abstract Background In DNA microarray experiments, measurements from different biological samples ar...
Motivation: Most methods of analyzing microarray data or doing power calculations have an underlying...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
Studies in genetics involving microarray experiments allow simultaneous comparison and quantificatio...
Abstract Background ...
BACKGROUND:Microarray experiments offer a potent solution to the problem of making and comparing lar...
Abstract Background With microarray technology, variability in experimental environments such as RNA...
Normalisation is a process of removing systematic variation that affects measured gene expression le...
Motivation: Most methods of analyzing microarray data or doing power calculations have an underlying...
We introduce a statistical model for microarray gene expression data that comprises data calibration...
Abstract Background DNA microarrays provide data for genome wide patterns of expression between obse...
Motivation: Standard statistical techniques often assume that data are normally distributed, with co...
Microarrays allow researchers to measure the expression of thousands of genes in a single experiment...
We derive and validate an estimator for the parameters of a transformation for the joint calibration...
Abstract Microarrays allow researchers to measure the expression of thousands of genes in a single e...
Abstract Background In DNA microarray experiments, measurements from different biological samples ar...
Motivation: Most methods of analyzing microarray data or doing power calculations have an underlying...
DNA microarray technologies have the capability of simultaneously measuring the abundance of thousan...
Studies in genetics involving microarray experiments allow simultaneous comparison and quantificatio...
Abstract Background ...
BACKGROUND:Microarray experiments offer a potent solution to the problem of making and comparing lar...
Abstract Background With microarray technology, variability in experimental environments such as RNA...
Normalisation is a process of removing systematic variation that affects measured gene expression le...
Motivation: Most methods of analyzing microarray data or doing power calculations have an underlying...
We introduce a statistical model for microarray gene expression data that comprises data calibration...
Abstract Background DNA microarrays provide data for genome wide patterns of expression between obse...
Motivation: Standard statistical techniques often assume that data are normally distributed, with co...
Microarrays allow researchers to measure the expression of thousands of genes in a single experiment...
We derive and validate an estimator for the parameters of a transformation for the joint calibration...
Abstract Microarrays allow researchers to measure the expression of thousands of genes in a single e...
Abstract Background In DNA microarray experiments, measurements from different biological samples ar...