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Toxicity Mechanisms Identification via Gene Set Enrichment Analysis of Time-Series Toxicogenomics Data: Impact of Time and Concentration

机译:通过时间序列毒物基因组学数据的基因集富集分析确定毒性机制:时间和浓度的影响

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摘要

The advance in high-throughput “toxicogenomics” technologies, which allows for concurrent monitoring of cellular responses globally upon exposure to chemical toxicants, presents promises for next-generation toxicity assessment. It is recognized that cellular responses to toxicants have a highly dynamic nature, and exhibit both temporal complexity and dose-response shifts. Most current gene enrichment or pathway analysis lack the recognition of the inherent correlation within time series data, and may potentially miss important pathways or yield biased and inconsistent results that ignore dynamic patterns and time-sensitivity. In this study, we investigated the application of two score metrics for GSEA (gene set enrichment analysis) to rank the genes that consider the temporal gene expression profile. One applies a novel time series CPCA (common principal components analysis) to generate scores for genes based on their contributions to the common temporal variation among treatments for a given chemical at different concentrations. Another one employs an integrated altered gene expression quantifier-TELI (transcriptional effect level index) that integrates altered gene expression magnitude over the exposure time. By comparing the GSEA results using two different ranking metrics for examining the dynamic responses of reporter cells treated with various dose levels of three model toxicants, mitomycin C, hydrogen peroxide, and lead nitrate, the analysis identified and revealed different toxicity mechanisms of these chemicals that exhibit chemical-specific, as well as time-aware and dose-sensitive nature. The ability, advantages, and disadvantages of varying ranking metrics were discussed. These findings support the notion that toxicity bioassays should account for the cells’ complex dynamic responses, thereby implying that both data acquisition and data analysis should look beyond simple traditional end point responses.
机译:高通量“毒理基因组学”技术的进步允许在暴露于化学毒物的同时在全球范围内同时监测细胞反应,这为下一代毒性评估提供了希望。公认的是,细胞对毒物的反应具有高度动态的性质,并且表现出时间复杂性和剂量反应变化。当前大多数基因富集或途径分析缺乏对时间序列数据内在相关性的认识,并可能潜在地错过重要途径或产生偏倚且不一致的结果,从而忽略了动态模式和时间敏感性。在这项研究中,我们调查了两个评分指标在GSEA(基因集富集分析)中的应用,以对考虑了时间基因表达谱的基因进行排名。一种方法是应用新颖的时间序列CPCA(通用主成分分析),基于基因对给定化学物质在不同浓度下的处理之间共同的时间变化的贡献,来生成基因得分。另一个使用整合的改变的基因表达量词-TELI(转录效应水平指数),其在暴露时间内整合改变的基因表达量。通过使用两种不同的排名指标比较GSEA结果来检查用不同剂量水平的三种模型毒物,丝裂霉素C,过氧化氢和硝酸铅处理的报告细胞的动态响应,分析确定并揭示了这些化学物质的不同毒性机制,表现出化学特异性,以及时间感知和剂量敏感性。讨论了不同排名指标的能力,优点和缺点。这些发现支持以下观点:毒性生物测定应解释细胞的复杂动态响应,从而暗示数据采集和数据分析均应超越简单的传统终点响应。

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