Functional Associations by Response Overlap (FARO), a Functional Genomics Approach Matching Gene Expression Phenotypes
Open Access
- 1 August 2007
- journal article
- research article
- Published by Public Library of Science (PLoS) in PLOS ONE
- Vol. 2 (8) , e676
- https://doi.org/10.1371/journal.pone.0000676
Abstract
The systematic comparison of transcriptional responses of organisms is a powerful tool in functional genomics. For example, mutants may be characterized by comparing their transcript profiles to those obtained in other experiments querying the effects on gene expression of many experimental factors including treatments, mutations and pathogen infections. Similarly, drugs may be discovered by the relationship between the transcript profiles effectuated or impacted by a candidate drug and by the target disease. The integration of such data enables systems biology to predict the interplay between experimental factors affecting a biological system. Unfortunately, direct comparisons of gene expression profiles obtained in independent, publicly available microarray experiments are typically compromised by substantial, experiment-specific biases. Here we suggest a novel yet conceptually simple approach for deriving ‘Functional Association(s) by Response Overlap’ (FARO) between microarray gene expression studies. The transcriptional response is defined by the set of differentially expressed genes independent from the magnitude or direction of the change. This approach overcomes the limited comparability between studies that is typical for methods that rely on correlation in gene expression. We apply FARO to a compendium of 242 diverse Arabidopsis microarray experimental factors, including phyto-hormones, stresses and pathogens, growth conditions/stages, tissue types and mutants. We also use FARO to confirm and further delineate the functions of Arabidopsis MAP kinase 4 in disease and stress responses. Furthermore, we find that a large, well-defined set of genes responds in opposing directions to different stress conditions and predict the effects of different stress combinations. This demonstrates the usefulness of our approach for exploiting public microarray data to derive biologically meaningful associations between experimental factors. Finally, our results indicate that FARO is more powerful in associating mutants in common pathways than existing methods such as co-expression analysis.Keywords
This publication has 42 references indexed in Scilit:
- Statistical tools for synthesizing lists of differentially expressed features in related experimentsGenome Biology, 2007
- The Connectivity Map: Using Gene-Expression Signatures to Connect Small Molecules, Genes, and DiseaseScience, 2006
- The MicroArray Quality Control (MAQC) project shows inter- and intraplatform reproducibility of gene expression measurementsNature Biotechnology, 2006
- Combinatorial Microarray Analysis Revealing Arabidopsis Genes Implicated in Cytokinin Responses through the His→Asp Phosphorelay CircuitryPlant and Cell Physiology, 2005
- Involvement of MPK4 in osmotic stress response pathways in cell suspensions and plantlets of Arabidopsis thaliana: activation by hypoosmolarity and negative role in hyperosmolarity toleranceFEBS Letters, 2004
- Microarray reality checks in the context of a complex diseaseNature Biotechnology, 2004
- NASCArrays: a repository for microarray data generated by NASC's transcriptomics serviceNucleic Acids Research, 2004
- Exploration, normalization, and summaries of high density oligonucleotide array probe level dataBiostatistics, 2003
- CTR1, a negative regulator of the ethylene response pathway in arabidopsis, encodes a member of the Raf family of protein kinasesCell, 1993
- On the Interpretation of χ 2 from Contingency Tables, and the Calculation of PJournal of the Royal Statistical Society, 1922