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Using Transcriptomics Data and Adverse Outcome Pathway Networks to Explore Endocrine Disrupting Properties of Cadmium and PCB-126.

Environment international(2025)

Institute of Environmental Medicine

Cited 0|Views1
Abstract
Omics-technologies such as transcriptomics offer valuable insights into toxicity mechanisms. However, integrating this type of data into regulatory frameworks remains challenging due to uncertainties regarding toxicological relevance and links to adverse outcomes. Furthermore, current assessments of endocrine disruptors (EDs) relevant to human health require substantial amounts of data, and primarily rely on standardized animal studies. Identifying EDs is a high priority in the EU, but so are efforts to replace and reduce animal testing. Alternative methods to investigate EDs are needed, and so are health risk assessment methods that support uptake of novel mechanistic information. This study aims to utilize Adverse Outcome Pathways (AOPs) to integrate transcriptomics data for identifying EDs, by establishing a link between molecular data and adverse outcomes. Cadmium (Cd) and 3,3',4,4',5-pentachlorobiphenyl (PCB126) were used as model compounds due to their observed effects on the endocrine system. An AOP network for the estrogen, androgen, thyroid, and steroidogenesis (EATS)-modalities was constructed. RNA sequencing (RNA-Seq) was conducted on zebrafish (Danio rerio) embryos exposed to Cd or PCB126 for 4 days. RNA-Seq data were then linked to the AOP network via Gene Ontology (GO) terms. Enrichment Maps in Cytoscape and the QIAGEN Ingenuity Pathway Analysis (IPA) software were also used to identify potential ED properties and to support the assessment. Potentially EATS-related GO Biological Process (BP) terms were identified for both compounds. A lack of accurate standardized terms in KEs of the AOP network hindered a data-driven mapping approach. Instead, manual mapping of GO BP terms onto the AOP network revealed more connections, underscoring the need for harmonizing AOP development for regulatory use. Both the Enrichment Maps and the IPA results further supported potentially EATS-related effects of both compounds. While AOP networks show promise in integrating RNA-Seq data, several challenges remain.
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要点】:本研究利用转录组学数据与不良反应途径网络(AOPs)探索镉(Cd)和PCB-126的内分泌干扰特性,为替代动物实验提供了一种新方法。

方法】:通过建立与不良后果相连的分子数据,将转录组学数据整合到AOP网络中。

实验】:对暴露于Cd或PCB-126的斑马鱼(Danio rerio)胚胎进行4天的RNA测序(RNA-Seq),使用基因本体(GO)术语将数据与AOP网络相链接,并利用Cytoscape富集图和QIAGEN Ingenuity Pathway Analysis(IPA)软件进行潜在内分泌干扰特性的识别和评估。结果显示两种化合物均与EATS相关的GO生物学过程(BP)术语相关联。