Abstract Background Aggregating gene expression data across experiments via meta-analysis is expected to increase the precision of the effect estimates and to increase the statistical power to detect a certain fold change. This study evaluates the potential benefit of using a meta-analysis approach as a gene selection method prior to predictive modeling in gene expression data. Results Six raw datasets from different gene expression experiments in acute myeloid leukemia (AML) and 11 different classification methods were used to build classification models to classify samples as either AML or healthy control. First, the classification models were trained on gene expression data from single experiments using conventional supervised variable s...
Abstract Background In cancer studies, it is common that multiple microarray experiments are conduct...
Most of the discoveries from gene expression data are driven by a study claiming an optimal subset o...
Combining multiple microarray datasets increases sample size and leads to improved reproducibility i...
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...
BACKGROUND: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Background: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
textabstractMost of the discoveries from gene expression data are driven by a study claiming an opti...
Most of the discoveries from gene expression data are driven by a study claiming an optimal subset o...
This paper develops an alternative method for gene selection that combines model based clustering an...
This paper develops an alternative method for gene selection that combines model based clustering an...
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...
Abstract Background In cancer studies, it is common that multiple microarray experiments are conduct...
Most of the discoveries from gene expression data are driven by a study claiming an optimal subset o...
Combining multiple microarray datasets increases sample size and leads to improved reproducibility i...
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...
BACKGROUND: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Background: Aggregating gene expression data across experiments via meta-analysis is expected to inc...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
textabstractMost of the discoveries from gene expression data are driven by a study claiming an opti...
Most of the discoveries from gene expression data are driven by a study claiming an optimal subset o...
This paper develops an alternative method for gene selection that combines model based clustering an...
This paper develops an alternative method for gene selection that combines model based clustering an...
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...
Abstract Background In cancer studies, it is common that multiple microarray experiments are conduct...
Most of the discoveries from gene expression data are driven by a study claiming an optimal subset o...
Combining multiple microarray datasets increases sample size and leads to improved reproducibility i...