Crizer David M, Ramaiahgari Sreenivasa C, Ferguson Stephen S, Rice Julie R, Dunlap Paul E, Sipes Nisha S, Auerbach Scott S, Merrick Bruce Alex, DeVito Michael J
Division of the National Toxicology Program, National Institute of Environmental Health Sciences, National Institutes of Health, Research Triangle Park, North Carolina 27709, USA.
Toxicol Sci. 2021 May 27;181(2):175-186. doi: 10.1093/toxsci/kfab036.
Interpretation of untargeted metabolomics data from both in vivo and physiologically relevant in vitro model systems continues to be a significant challenge for toxicology research. Potency-based modeling of toxicological responses has served as a pillar of interpretive context and translation of testing data. In this study, we leverage the resolving power of concentration-response modeling through benchmark concentration (BMC) analysis to interpret untargeted metabolomics data from differentiated cultures of HepaRG cells exposed to a panel of reference compounds and integrate data in a potency-aligned framework with matched transcriptomic data. For this work, we characterized biological responses to classical human liver injury compounds and comparator compounds, known to not cause liver injury in humans, at 10 exposure concentrations in spent culture media by untargeted liquid chromatography-mass spectrometry analysis. The analyte features observed (with limited metabolites identified) were analyzed using BMC modeling to derive compound-induced points of departure. The results revealed liver injury compounds produced concentration-related increases in metabolomic response compared to those rarely associated with liver injury (ie, sucrose, potassium chloride). Moreover, the distributions of altered metabolomic features were largely comparable with those observed using high throughput transcriptomics, which were further extended to investigate the potential for in vitro observed biological responses to be observed in humans with exposures at therapeutic doses. These results demonstrate the utility of BMC modeling of untargeted metabolomics data as a sensitive and quantitative indicator of human liver injury potential.
对来自体内和生理相关体外模型系统的非靶向代谢组学数据进行解读,仍然是毒理学研究面临的一项重大挑战。基于效力的毒理学反应建模一直是解读背景和测试数据转化的支柱。在本研究中,我们通过基准浓度(BMC)分析利用浓度-反应建模的分辨能力,来解读暴露于一组参考化合物的HepaRG细胞分化培养物的非靶向代谢组学数据,并将数据整合到与匹配的转录组学数据对齐的效力框架中。对于这项工作,我们通过非靶向液相色谱-质谱分析,在10个暴露浓度下,对已知在人类中不会引起肝损伤的经典人类肝损伤化合物和对照化合物在废培养基中的生物学反应进行了表征。使用BMC建模对观察到的分析物特征(已鉴定的代谢物有限)进行分析,以得出化合物诱导的起始点。结果显示,与那些很少与肝损伤相关的化合物(即蔗糖、氯化钾)相比,肝损伤化合物在代谢组学反应中产生了与浓度相关的增加。此外,代谢组学特征改变的分布与使用高通量转录组学观察到的分布在很大程度上具有可比性,进一步扩展以研究在治疗剂量暴露的人类中观察到体外观察到的生物学反应的可能性。这些结果证明了对非靶向代谢组学数据进行BMC建模作为人类肝损伤潜力的敏感和定量指标的实用性。