Ryan Natalia, Chorley Brian, Tice Raymond R, Judson Richard, Corton J Christopher
*Oak Ridge Institute for Science and Education (ORISE) Integrated Systems Toxicology Division, US-EPA.
Integrated Systems Toxicology Division, US-EPA.
Toxicol Sci. 2016 May;151(1):88-103. doi: 10.1093/toxsci/kfw026. Epub 2016 Feb 10.
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 cells. Most of the biomarker genes were shown to be directly regulated by ERα as determined by ESR1 gene knockdown using siRNA as well as through chromatin immunoprecipitation coupled with DNA sequencing analysis of ERα-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 ERα 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 ERα signaling. For 114 chemicals, the balanced accuracies were 95% and 98% for activation or suppression, respectively. These results demonstrate that the ERα gene expression biomarker can accurately identify ERα modulators in large collections of microarray data derived from MCF-7 cells.
化学诱导效应的微阵列分析正越来越多地以中高通量形式使用。本文描述了计算方法,以雌激素受体α(ERα)为例,从全基因组微阵列数据中识别分子靶点,ERα常受潜在内分泌干扰化学物质调节。通过在ERα阳性MCF-7细胞中暴露于7种结构多样的ERα激动剂和3种ERα拮抗剂后其一致表达,鉴定出ERα生物标志物基因。通过使用siRNA敲低ESR1基因以及通过染色质免疫沉淀结合ERα-DNA相互作用的DNA测序分析,确定大多数生物标志物基因受ERα直接调控。通过基于倍数变化排名的运行费舍尔算法,与来自使用MCF-7细胞的实验的注释基因表达数据集进行比较,将该生物标志物评估为一种预测工具,这些实验包括评估激素和化学物质的转录效应的实验。使用来自化学处理和激素处理细胞的141次比较,该生物标志物对ERα激活或抑制预测的平衡准确率分别为94%和93%。该生物标志物能够正确分类21种ER参考化学物质中的18种(86%),包括“非常弱”的激动剂。重要的是,该生物标志物预测准确地复制了基于18种体外高通量筛选试验的预测,这些试验查询了ERα信号传导的不同步骤。对于114种化学物质,激活或抑制的平衡准确率分别为95%和98%。这些结果表明,ERα基因表达生物标志物可以在源自MCF-7细胞的大量微阵列数据中准确识别ERα调节剂。