代谢组学同时得出基准剂量估计值,并发现大鼠生物测定中的代谢生物转化。

IF 3.7 3区 医学 Q2 CHEMISTRY, MEDICINAL
Elena Sostare, Tara J. Bowen, Thomas N. Lawson, Anne Freier, Xiaojing Li, Gavin R. Lloyd, Lukáš Najdekr, Andris Jankevics, Thomas Smith, Dorsa Varshavi, Christian Ludwig, John K. Colbourne, Ralf J. M. Weber, David M. Crizer, Scott S. Auerbach, John R. Bucher and Mark R. Viant*, 
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引用次数: 0

摘要

基准剂量(BMD)建模可估算出导致基线扰动的化学品剂量。事实证明,转录基准剂量与顶点终点基准剂量相对一致,这为使用分子基准剂量推导基于人类健康的化学品暴露指导值打开了大门。代谢组学测量小分子内源性代谢物对化学品暴露的反应,通过描述与顶端终点更密切相关的下游分子表型,对转录组学进行补充。本研究的目的是将 BMD 模型应用于体内代谢组学数据,将代谢 BMD 与转录 BMD 和顶端终点 BMD 进行比较。这建立在我们之前将转录组学和 BMD 建模应用于为期 5 天的磷酸三苯酯(TPhP)大鼠研究的基础上,将代谢组学应用于相同的存档组织。具体来说,研究人员使用液相色谱-质谱法和基于 1H 核磁共振波谱的代谢组学对暴露于五种剂量 TPhP 的大鼠肝脏进行了研究。应用 BMDExpress2 软件后,2903 个内源代谢特征产生了可行的剂量反应模型,证实了肝脏代谢组受到了干扰。代谢 BMD 估计值与转录 BMD 相似,比临床化学和顶端终点 BMD 更敏感。多组学数据集的通路分析表明,暴露于 TPhP 对胆固醇(及下游)通路有重大影响,这与临床化学测量结果一致。此外,转录组学数据表明,TPhP 激活了异生物代谢途径,这一点通过利用代谢组学检测异生物相关化合物的未充分开发的功能得到了证实。发现了 11 种 TPhP 的生物转化产物,它们的水平与多种异生物代谢基因高度相关。这项工作提供了一个案例研究,展示了代谢组学和转录组学如何从机理上估计出发点。此外,该研究还展示了代谢组学如何还能发现生物转化产物,这在监管环境中可能具有价值,例如,可作为经合组织测试指南 417(毒物代谢动力学)的增强版。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Metabolomics Simultaneously Derives Benchmark Dose Estimates and Discovers Metabolic Biotransformations in a Rat Bioassay

Metabolomics Simultaneously Derives Benchmark Dose Estimates and Discovers Metabolic Biotransformations in a Rat Bioassay

Benchmark dose (BMD) modeling estimates the dose of a chemical that causes a perturbation from baseline. Transcriptional BMDs have been shown to be relatively consistent with apical end point BMDs, opening the door to using molecular BMDs to derive human health-based guidance values for chemical exposure. Metabolomics measures the responses of small-molecule endogenous metabolites to chemical exposure, complementing transcriptomics by characterizing downstream molecular phenotypes that are more closely associated with apical end points. The aim of this study was to apply BMD modeling to in vivo metabolomics data, to compare metabolic BMDs to both transcriptional and apical end point BMDs. This builds upon our previous application of transcriptomics and BMD modeling to a 5-day rat study of triphenyl phosphate (TPhP), applying metabolomics to the same archived tissues. Specifically, liver from rats exposed to five doses of TPhP was investigated using liquid chromatography–mass spectrometry and 1H nuclear magnetic resonance spectroscopy-based metabolomics. Following the application of BMDExpress2 software, 2903 endogenous metabolic features yielded viable dose-response models, confirming a perturbation to the liver metabolome. Metabolic BMD estimates were similarly sensitive to transcriptional BMDs, and more sensitive than both clinical chemistry and apical end point BMDs. Pathway analysis of the multiomics data sets revealed a major effect of TPhP exposure on cholesterol (and downstream) pathways, consistent with clinical chemistry measurements. Additionally, the transcriptomics data indicated that TPhP activated xenobiotic metabolism pathways, which was confirmed by using the underexploited capability of metabolomics to detect xenobiotic-related compounds. Eleven biotransformation products of TPhP were discovered, and their levels were highly correlated with multiple xenobiotic metabolism genes. This work provides a case study showing how metabolomics and transcriptomics can estimate mechanistically anchored points-of-departure. Furthermore, the study demonstrates how metabolomics can also discover biotransformation products, which could be of value within a regulatory setting, for example, as an enhancement of OECD Test Guideline 417 (toxicokinetics).

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来源期刊
CiteScore
7.90
自引率
7.30%
发文量
215
审稿时长
3.5 months
期刊介绍: Chemical Research in Toxicology publishes Articles, Rapid Reports, Chemical Profiles, Reviews, Perspectives, Letters to the Editor, and ToxWatch on a wide range of topics in Toxicology that inform a chemical and molecular understanding and capacity to predict biological outcomes on the basis of structures and processes. The overarching goal of activities reported in the Journal are to provide knowledge and innovative approaches needed to promote intelligent solutions for human safety and ecosystem preservation. The journal emphasizes insight concerning mechanisms of toxicity over phenomenological observations. It upholds rigorous chemical, physical and mathematical standards for characterization and application of modern techniques.
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