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整合高通量表型分析和转录组分析,以预测全氟和多氟烷基物质引起的肝脂肪变性效应。

Integrating high-throughput phenotypic profiling and transcriptomic analyses to predict the hepatosteatosis effects induced by per- and polyfluoroalkyl substances.

机构信息

Institute of Food Safety and Health, College of Public Health, National Taiwan University, Taipei City, Taiwan; Master of Public Health Program, College of Public Health, National Taiwan University, Taipei City, Taiwan.

Institute of Food Safety and Health, College of Public Health, National Taiwan University, Taipei City, Taiwan.

出版信息

J Hazard Mater. 2024 May 5;469:133891. doi: 10.1016/j.jhazmat.2024.133891. Epub 2024 Feb 27.

DOI:10.1016/j.jhazmat.2024.133891
PMID:38457971
Abstract

Per- and polyfluoroalkyl substances (PFAS) is a large compound class (n > 12,000) that is extensively present in food, drinking water, and aquatic environments. Reduced serum triglycerides and hepatosteatosis appear to be the common phenotypes for different PFAS chemicals. However, the hepatosteatosis potential of most PFAS chemicals remains largely unknown. This study aims to investigate PFAS-induced hepatosteatosis using in vitro high-throughput phenotype profiling (HTPP) and high-throughput transcriptomic (HTTr) data. We quantified the in vitro hepatosteatosis effects and mitochondrial damage using high-content imaging, curated the transcriptomic data from the Gene Expression Omnibus (GEO) database, and then calculated the point of departure (POD) values for HTPP phenotypes or HTTr transcripts, using the Bayesian benchmark dose modeling approach. Our results indicated that PFAS compounds with fully saturated C-F bonds, sulfur- and nitrogen-containing functional groups, and a fluorinated carbon chain length greater than 8 have the potential to produce biological effects consistent with hepatosteatosis. PFAS primarily induced hepatosteatosis via disturbance in lipid transport and storage. The potency rankings of PFAS compounds are highly concordant among in vitro HTPP, HTTr, and in vivo hepatosteatosis phenotypes (ρ = 0.60-0.73). In conclusion, integrating the information from in vitro HTPP and HTTr analyses can accurately project in vivo hepatosteatosis effects induced by PFAS compounds.

摘要

全氟和多氟烷基物质(PFAS)是一个庞大的化合物类别(n>12000),广泛存在于食品、饮用水和水生环境中。血清甘油三酯降低和肝脂肪变性似乎是不同 PFAS 化学物质的共同表型。然而,大多数 PFAS 化学物质的肝脂肪变性潜力在很大程度上仍然未知。本研究旨在使用体外高通量表型分析(HTPP)和高通量转录组学(HTTr)数据来研究 PFAS 诱导的肝脂肪变性。我们使用高内涵成像技术量化了体外肝脂肪变性效应和线粒体损伤,从基因表达综合数据库(GEO)中整理了转录组数据,然后使用贝叶斯基准剂量建模方法计算 HTPP 表型或 HTTr 转录物的起点(POD)值。我们的结果表明,具有完全饱和 C-F 键、含硫和含氮官能团以及大于 8 的氟化碳链长的 PFAS 化合物有可能产生与肝脂肪变性一致的生物学效应。PFAS 主要通过干扰脂质转运和储存来诱导肝脂肪变性。PFAS 化合物在体外 HTPP、HTTr 和体内肝脂肪变性表型中的效力排名高度一致(ρ=0.60-0.73)。总之,整合来自体外 HTPP 和 HTTr 分析的信息可以准确预测 PFAS 化合物引起的体内肝脂肪变性效应。

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