Interdisciplinary Faculty of Toxicology, College Station, Texas 77843, USA.
Department of Veterinary Physiology and Pharmacology, Texas A&M University, College Station, Texas 77843, USA.
Toxicol Sci. 2023 May 31;193(2):219-233. doi: 10.1093/toxsci/kfad041.
Hazard evaluation of substances of "unknown or variable composition, complex reaction products and biological materials" (UVCBs) remains a major challenge in regulatory science because their chemical composition is difficult to ascertain. Petroleum substances are representative UVCBs and human cell-based data have been previously used to substantiate their groupings for regulatory submissions. We hypothesized that a combination of phenotypic and transcriptomic data could be integrated to make decisions as to selection of group-representative worst-case petroleum UVCBs for subsequent toxicity evaluation in vivo. We used data obtained from 141 substances from 16 manufacturing categories previously tested in 6 human cell types (induced pluripotent stem cell [iPSC]-derived hepatocytes, cardiomyocytes, neurons, and endothelial cells, and MCF7 and A375 cell lines). Benchmark doses for gene-substance combinations were calculated, and both transcriptomic and phenotype-derived points of departure (PODs) were obtained. Correlation analysis and machine learning were used to assess associations between phenotypic and transcriptional PODs and to determine the most informative cell types and assays, thus representing a cost-effective integrated testing strategy. We found that 2 cell types-iPSC-derived-hepatocytes and -cardiomyocytes-contributed the most informative and protective PODs and may be used to inform selection of representative petroleum UVCBs for further toxicity evaluation in vivo. Overall, although the use of new approach methodologies to prioritize UVCBs has not been widely adopted, our study proposes a tiered testing strategy based on iPSC-derived hepatocytes and cardiomyocytes to inform selection of representative worst-case petroleum UVCBs from each manufacturing category for further toxicity evaluation in vivo.
“未知或可变成分、复杂反应产物和生物材料”(UVCB)物质的危害评估仍然是监管科学中的一个主要挑战,因为它们的化学成分难以确定。石油物质是具有代表性的 UVCB,先前已经使用基于人类细胞的数据来证实它们的分组,以便在监管提交中使用。我们假设可以结合表型和转录组数据,就选择具有代表性的最差情况石油 UVCB 用于随后的体内毒性评估做出决策。我们使用了来自 16 个制造类别中的 141 种物质的数据,这些物质先前在 6 个人类细胞类型(诱导多能干细胞 [iPSC] 衍生的肝细胞、心肌细胞、神经元和内皮细胞以及 MCF7 和 A375 细胞系)中进行了测试。计算了基因-物质组合的基准剂量,并获得了转录组和表型衍生的临界点(POD)。相关性分析和机器学习用于评估表型和转录 POD 之间的关联,并确定最具信息量的细胞类型和测定方法,从而代表一种具有成本效益的综合测试策略。我们发现,2 种细胞类型-iPSC 衍生的肝细胞和心肌细胞-提供了最具信息量和保护性的 POD,可以用于告知选择具有代表性的石油 UVCB 进行进一步的体内毒性评估。总体而言,尽管尚未广泛采用使用新方法学方法对 UVCB 进行优先级排序,但我们的研究提出了一种基于 iPSC 衍生的肝细胞和心肌细胞的分层测试策略,用于从每个制造类别中告知选择具有代表性的最差情况石油 UVCB 进行进一步的体内毒性评估。