Currently used gene intensity-dependent normalization methods, based on regression smoothing techniques, usually approach the two problems of location bias detrending and data re-scaling without taking into account the censoring characteristic of certain gene expressions produced by experiment measurement constraints or by previous normalization steps. Moreover, the bias vs variance balance control of normalization procedures is not often discussed but left to the user\u27s experience. Here an approximate maximum likelihood procedure to fit a model smoothing the dependences of log-fold gene expression differences on average gene intensities is presented. Central tendency and scaling factor were modeled by means of B-splines smoothing tech...
In this paper, the problem of identifying differentially expressed genes under different condi-tions...
<div><p>In this paper, the problem of identifying differentially expressed genes under different con...
This paper considers statistical issues in the analysis of a designed experiment to investigate diff...
Currently used gene intensity-dependent normalization methods, based on regression smoothing techniq...
Current gene intensity-dependent normalization methods, based on regression smoothing techniques, us...
Motivation: Numerical output of spotted microarrays displays censoring of pixel intensities at some ...
[[abstract]]This paper investigates subset normalization to adjust for location biases (e.g., splotc...
This paper investigates subset normalization to adjust for location biases (e.g., splotches) combine...
Abstract\ud \ud \ud \ud Background\ud ...
After normalization, the distribution of gene expressions for very different organisms have a simila...
Background: Various normalisation techniques have been developed in the context of microarray analy...
Normalization procedures are widely used in high-throughput genomic data analyses to remove various ...
We introduce a statistical model for microarray gene expression data that comprises data calibration...
Studies on high-throughput global gene expression using microarray technology have generated ever la...
Background: Various normalisation techniques have been developed in the context of microarray analy...
In this paper, the problem of identifying differentially expressed genes under different condi-tions...
<div><p>In this paper, the problem of identifying differentially expressed genes under different con...
This paper considers statistical issues in the analysis of a designed experiment to investigate diff...
Currently used gene intensity-dependent normalization methods, based on regression smoothing techniq...
Current gene intensity-dependent normalization methods, based on regression smoothing techniques, us...
Motivation: Numerical output of spotted microarrays displays censoring of pixel intensities at some ...
[[abstract]]This paper investigates subset normalization to adjust for location biases (e.g., splotc...
This paper investigates subset normalization to adjust for location biases (e.g., splotches) combine...
Abstract\ud \ud \ud \ud Background\ud ...
After normalization, the distribution of gene expressions for very different organisms have a simila...
Background: Various normalisation techniques have been developed in the context of microarray analy...
Normalization procedures are widely used in high-throughput genomic data analyses to remove various ...
We introduce a statistical model for microarray gene expression data that comprises data calibration...
Studies on high-throughput global gene expression using microarray technology have generated ever la...
Background: Various normalisation techniques have been developed in the context of microarray analy...
In this paper, the problem of identifying differentially expressed genes under different condi-tions...
<div><p>In this paper, the problem of identifying differentially expressed genes under different con...
This paper considers statistical issues in the analysis of a designed experiment to investigate diff...