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T1000: a reduced gene set prioritized for toxicogenomic studies

机译:T1000:优先用于毒理基因组研究的简化基因集

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摘要

There is growing interest within regulatory agencies and toxicological research communities to develop, test, and apply new approaches, such as toxicogenomics, to more efficiently evaluate chemical hazards. Given the complexity of analyzing thousands of genes simultaneously, there is a need to identify reduced gene sets. Though several gene sets have been defined for toxicological applications, few of these were purposefully derived using toxicogenomics data. Here, we developed and applied a systematic approach to identify 1,000 genes (called Toxicogenomics-1000 or T1000) highly responsive to chemical exposures. First, a co-expression network of 11,210 genes was built by leveraging microarray data from the Open TG-GATEs program. This network was then re-weighted based on prior knowledge of their biological (KEGG, MSigDB) and toxicological (CTD) relevance. Finally, weighted correlation network analysis was applied to identify 258 gene clusters. T1000 was defined by selecting genes from each cluster that were most associated with outcome measures. For model evaluation, we compared the performance of T1000 to that of other gene sets (L1000, S1500, Genes selected by Limma, and random set) using two external datasets based on the rat model. Additionally, a smaller (T384) and a larger version (T1500) of T1000 were used for dose-response modeling to test the effect of gene set size. Our findings demonstrated that the T1000 gene set is predictive of apical outcomes across a range of conditions (e.g., in vitro and in vivo, dose-response, multiple species, tissues, and chemicals), and generally performs as well, or better than other gene sets available.
机译:监管机构和毒理学研究界对开发,测试和应用新方法(如毒理基因组学)以更有效地评估化学危害的兴趣日益浓厚。鉴于同时分析成千上万个基因的复杂性,有必要确定减少的基因集。尽管已经为毒理学应用定义了几个基因集,但其中很少几个是使用毒理基因组学数据有目的地推导的。在这里,我们开发并应用了系统的方法来鉴定对化学暴露高度敏感的1,000个基因(称为Toxicogenomics-1000或T1000)。首先,利用Open TG-GATEs程序中的微阵列数据,构建了一个包含11,210个基因的共表达网络。然后根据其生物学(KEGG,MSigDB)和毒理学(CTD)相关性的先验知识对该网络进行加权。最后,通过加权相关网络分析确定了258个基因簇。通过从每个簇中选择与结局指标最相关的基因来定义T1000。为了进行模型评估,我们使用了两个基于大鼠模型的外部数据集,将T1000的性能与其他基因集(L1000,S1500,Limma选择的基因和随机集)的性能进行了比较。此外,使用较小的(T384)和较大的版本(T1500)的T1000进行剂量反应模型,以测试基因组大小的影响。我们的发现表明,T1000基因集可预测各种条件下的根尖结局(例如,体外和体内,剂量反应,多种物种,组织和化学物质),并且通常表现良好或优于其他条件基因集可用。

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