Genomics profiling based on high dimensional data from high throughput experiments that measure the expression of tens of thousands of genes or biomarkers holds great promises for clinical application. Diagnosis, prognosis and treatment selection for individual patient can become more accurate with strong statistical prediction models based on robust informative gene lists. Numerous studies have been published claiming to have built accurate prediction models. However the initial enthusiasm has been tempered by the uncovering of many false claims. The reason for these false claims lies mainly in the inadequate statistical methodology that is being used to develop the quantitative model underlying prediction or classification. Predictive ...
Differential expression (DE) is commonly used to explore molecular mechanisms of biological conditio...
With the advent of high-throughput technologies, biomedical research has been dramatically reshaped ...
<p>The barplots show validation success of the various meta-analysis methods in simulated data with ...
BACKGROUND: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
textabstractBackground: Aggregating gene expression data across experiments via meta-analysis is exp...
BACKGROUND: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Abstract Background Aggregating gene expression data across experiments via meta-analysis is expecte...
Background: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Copyright © 2012 John H. Phan et al. This is an open access article distributed under the Creative C...
Abstract Background Our goal was to examine how various aspects of a gene signature influence the su...
Motivation: Class predicting with gene expression is widely used to generate diagnostic and/or progn...
Motivation: Class predicting with gene expression is widely used to generate diagnostic and/or progn...
Background: Class prediction models have been shown to have varying performances in clinical gene ex...
Combining multiple microarray datasets increases sample size and leads to improved reproducibility i...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
Differential expression (DE) is commonly used to explore molecular mechanisms of biological conditio...
With the advent of high-throughput technologies, biomedical research has been dramatically reshaped ...
<p>The barplots show validation success of the various meta-analysis methods in simulated data with ...
BACKGROUND: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
textabstractBackground: Aggregating gene expression data across experiments via meta-analysis is exp...
BACKGROUND: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Abstract Background Aggregating gene expression data across experiments via meta-analysis is expecte...
Background: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Copyright © 2012 John H. Phan et al. This is an open access article distributed under the Creative C...
Abstract Background Our goal was to examine how various aspects of a gene signature influence the su...
Motivation: Class predicting with gene expression is widely used to generate diagnostic and/or progn...
Motivation: Class predicting with gene expression is widely used to generate diagnostic and/or progn...
Background: Class prediction models have been shown to have varying performances in clinical gene ex...
Combining multiple microarray datasets increases sample size and leads to improved reproducibility i...
The use of diagnostic rules based on microarray gene expression data has received wide attention in ...
Differential expression (DE) is commonly used to explore molecular mechanisms of biological conditio...
With the advent of high-throughput technologies, biomedical research has been dramatically reshaped ...
<p>The barplots show validation success of the various meta-analysis methods in simulated data with ...