Ledbetter Victoria, Auerbach Scott, Everett Logan J, Vallanat Beena, Lowit Anna, Akerman Gregory, Gwinn William, Wehmas Leah C, Hughes Michael F, Devito Michael, Corton J Christopher
Center for Computational Toxicology and Exposure, US Environmental Protection Agency, Durham, NC, United States.
Oak Ridge Associated Universities (ORAU), Oak Ridge, TN, United States.
Front Toxicol. 2024 Oct 17;6:1422325. doi: 10.3389/ftox.2024.1422325. eCollection 2024.
Current methods for cancer risk assessment are resource-intensive and not feasible for most of the thousands of untested chemicals. In earlier studies, we developed a new approach methodology (NAM) to identify liver tumorigens using gene expression biomarkers and associated tumorigenic activation levels (TALs) after short-term exposures in rats. The biomarkers are used to predict the six most common rodent liver cancer molecular initiating events. In the present study, we wished to confirm that our approach could be used to identify liver tumorigens at only one time point/dose and if the approach could be applied to (targeted) RNA-Seq analyses. Male rats were exposed for 4 days by daily gavage to 15 chemicals at doses with known chronic outcomes and liver transcript profiles were generated using Affymetrix arrays. Our approach had 75% or 85% predictive accuracy using TALs derived from the TG-GATES or DrugMatrix studies, respectively. In a dataset generated from the livers of male rats exposed to 16 chemicals at up to 10 doses for 5 days, we found that our NAM coupled with targeted RNA-Seq (TempO-Seq) could be used to identify tumorigenic chemicals with predictive accuracies of up to 91%. Overall, these results demonstrate that our NAM can be applied to both microarray and (targeted) RNA-Seq data generated from short-term rat exposures to identify chemicals, their doses, and mode of action that would induce liver tumors, one of the most common endpoints in rodent bioassays.
目前的癌症风险评估方法资源消耗大,对数以千计未经测试的化学物质中的大多数而言并不可行。在早期研究中,我们开发了一种新的方法学(NAM),通过大鼠短期暴露后的基因表达生物标志物和相关的致癌激活水平(TALs)来识别肝脏致癌物。这些生物标志物用于预测六种最常见的啮齿动物肝癌分子起始事件。在本研究中,我们希望确认我们的方法是否可用于仅在一个时间点/剂量下识别肝脏致癌物,以及该方法是否可应用于(靶向)RNA测序分析。雄性大鼠通过每日灌胃暴露于15种化学物质4天,这些化学物质的剂量具有已知的慢性结果,并使用Affymetrix芯片生成肝脏转录谱。分别使用来自TG-GATES或DrugMatrix研究的TALs,我们的方法具有75%或85%的预测准确性。在一个由雄性大鼠肝脏生成的数据集里,这些大鼠暴露于16种化学物质,剂量高达10种,持续5天,我们发现我们的NAM与靶向RNA测序(TempO-Seq)相结合可用于识别致癌化学物质,预测准确率高达91%。总体而言,这些结果表明,我们的NAM可应用于从大鼠短期暴露生成的微阵列和(靶向)RNA测序数据,以识别会诱发肝脏肿瘤的化学物质、其剂量和作用模式,肝脏肿瘤是啮齿动物生物测定中最常见的终点之一。