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Moving Toward Integrating Gene Expression Profiling Into High-Throughput Testing: A Gene Expression Biomarker Accurately Predicts Estrogen Receptor ? Modulation in a Microarray Compendium.


ABSTRACT: Microarray profiling of chemical-induced effects is being increasingly used in medium- and high-throughput formats. Computational methods are described here to identify molecular targets from whole-genome microarray data using as an example the estrogen receptor ? (ER?), often modulated by potential endocrine disrupting chemicals. ER? biomarker genes were identified by their consistent expression after exposure to 7 structurally diverse ER? agonists and 3 ER? antagonists in ER?-positive MCF-7 cells. Most of the biomarker genes were shown to be directly regulated by ER? as determined by ESR1 gene knockdown using siRNA as well as through chromatin immunoprecipitation coupled with DNA sequencing analysis of ER?-DNA interactions. The biomarker was evaluated as a predictive tool using the fold-change rank-based Running Fisher algorithm by comparison to annotated gene expression datasets from experiments using MCF-7 cells, including those evaluating the transcriptional effects of hormones and chemicals. Using 141 comparisons from chemical- and hormone-treated cells, the biomarker gave a balanced accuracy for prediction of ER? activation or suppression of 94% and 93%, respectively. The biomarker was able to correctly classify 18 out of 21 (86%) ER reference chemicals including "very weak" agonists. Importantly, the biomarker predictions accurately replicated predictions based on 18 in vitro high-throughput screening assays that queried different steps in ER? signaling. For 114 chemicals, the balanced accuracies were 95% and 98% for activation or suppression, respectively. These results demonstrate that the ER? gene expression biomarker can accurately identify ER? modulators in large collections of microarray data derived from MCF-7 cells.

SUBMITTER: Ryan N 

PROVIDER: S-EPMC4900138 | biostudies-literature | 2016 May

REPOSITORIES: biostudies-literature

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Moving Toward Integrating Gene Expression Profiling Into High-Throughput Testing: A Gene Expression Biomarker Accurately Predicts Estrogen Receptor α Modulation in a Microarray Compendium.

Ryan Natalia N   Chorley Brian B   Tice Raymond R RR   Judson Richard R   Corton J Christopher JC  

Toxicological sciences : an official journal of the Society of Toxicology 20160210 1


Microarray profiling of chemical-induced effects is being increasingly used in medium- and high-throughput formats. Computational methods are described here to identify molecular targets from whole-genome microarray data using as an example the estrogen receptor α (ERα), often modulated by potential endocrine disrupting chemicals. ERα biomarker genes were identified by their consistent expression after exposure to 7 structurally diverse ERα agonists and 3 ERα antagonists in ERα-positive MCF-7 ce  ...[more]

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