Investigations of transcript levels on a genomic scale using hybridization-based arrays led to formidable advances in our understanding of the biology of many human illnesses. At the same time, these investigations have generated controversy, because of the probabilistic nature of the conclusions, and the surfacing of noticeable discrepancies between the results of studies addressing the same biological question. In this article we present simple and effective data analysis and visualization tools for gauging the degree to which the finding of one study are reproduced by others, and for integrating multiple studies in a single analysis. We describe these approaches in the context of studies of breast cancer, and illustrate that it is possi...
>Magister Scientiae - MScA large volume of gene expression data exists in public repositories like t...
Multi-study analysis adds value to microarray experiments. However, because of significant technical...
AbstractData analysis – not data production – is becoming the bottleneck in gene expression research...
With widespread use of microarray technology as a potential diagnostics tool, the comparison of resu...
Background: Microarray-based gene expression analysis is widely used in cancer research to discover ...
Human disease studies using DNA microarrays in both clinical/observational and experimental/controll...
Human disease studies using DNA microarrays in both clinical/observational and experimental/controll...
BACKGROUND: Human tissue displays a remarkable diversity in structure and function. To understand ho...
Background: Human tissue displays a remarkable diversity in structure and function. To understand ho...
*Corresponding authors Gene expression signatures from microarray experiments promise to provide imp...
Human disease studies using DNA microarrays in both clinical/observational and experimental/controll...
DNA microarray technology has been extensively utilized in the biomedical field, becoming a standard...
This is a copy of an article published in the Journal of Computational Biology © 2001 Mary Ann Lieb...
A common and important goal in cancer research is the identification of genetic markers such as gene...
Background: Microarray co-expression signatures are an important tool for studying gene function and...
>Magister Scientiae - MScA large volume of gene expression data exists in public repositories like t...
Multi-study analysis adds value to microarray experiments. However, because of significant technical...
AbstractData analysis – not data production – is becoming the bottleneck in gene expression research...
With widespread use of microarray technology as a potential diagnostics tool, the comparison of resu...
Background: Microarray-based gene expression analysis is widely used in cancer research to discover ...
Human disease studies using DNA microarrays in both clinical/observational and experimental/controll...
Human disease studies using DNA microarrays in both clinical/observational and experimental/controll...
BACKGROUND: Human tissue displays a remarkable diversity in structure and function. To understand ho...
Background: Human tissue displays a remarkable diversity in structure and function. To understand ho...
*Corresponding authors Gene expression signatures from microarray experiments promise to provide imp...
Human disease studies using DNA microarrays in both clinical/observational and experimental/controll...
DNA microarray technology has been extensively utilized in the biomedical field, becoming a standard...
This is a copy of an article published in the Journal of Computational Biology © 2001 Mary Ann Lieb...
A common and important goal in cancer research is the identification of genetic markers such as gene...
Background: Microarray co-expression signatures are an important tool for studying gene function and...
>Magister Scientiae - MScA large volume of gene expression data exists in public repositories like t...
Multi-study analysis adds value to microarray experiments. However, because of significant technical...
AbstractData analysis – not data production – is becoming the bottleneck in gene expression research...