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一种用于不良结局途径网络置信度评估的定量证据权重法:以化学物质诱导的肝脂肪变性为例

A quantitative weight-of-evidence method for confidence assessment of adverse outcome pathway networks: A case study on chemical-induced liver steatosis.

作者信息

Verhoeven Anouk, van Ertvelde Jonas, Boeckmans Joost, Gatzios Alexandra, Jover Ramiro, Lindeman Birgitte, Lopez-Soop Graciela, Rodrigues Robim M, Rapisarda Anna, Sanz-Serrano Julen, Stinckens Marth, Sepehri Sara, Teunis Marc, Vinken Mathieu, Jiang Jian, Vanhaecke Tamara

机构信息

Entity of In Vitro Toxicology and Dermato-Cosmetology, Department of Pharmaceutical and Pharmacological Sciences, Vrije Universiteit Brussel, Brussels, Belgium.

Joint Research Unit in Experimental Hepatology, University of Valencia, Health Research Institute Hospital La Fe & CIBER of Hepatic and Digestive Diseases, Valencia, Spain.

出版信息

Toxicology. 2024 Jun;505:153814. doi: 10.1016/j.tox.2024.153814. Epub 2024 Apr 25.

Abstract

The field of chemical toxicity testing is undergoing a transition to overcome the limitations of in vivo experiments. This evolution involves implementing innovative non-animal approaches to improve predictability and provide a more precise understanding of toxicity mechanisms. Adverse outcome pathway (AOP) networks are pivotal in organizing existing mechanistic knowledge related to toxicological processes. However, these AOP networks are dynamic and require regular updates to incorporate the latest data. Regulatory challenges also persist due to concerns about the reliability of the information they offer. This study introduces a generic Weight-of-Evidence (WoE) scoring method, aligned with the tailored Bradford-Hill criteria, to quantitatively assess the confidence levels in key event relationships (KERs) within AOP networks. We use the previously published AOP network on chemical-induced liver steatosis, a prevalent form of human liver injury, as a case study. Initially, the existing AOP network is optimized with the latest scientific information extracted from PubMed using the free SysRev platform for artificial intelligence (AI)-based abstract inclusion and standardized data collection. The resulting optimized AOP network, constructed using Cytoscape, visually represents confidence levels through node size (key event, KE) and edge thickness (KERs). Additionally, a Shiny application is developed to facilitate user interaction with the dataset, promoting future updates. Our analysis of 173 research papers yielded 100 unique KEs and 221 KERs among which 72 KEs and 170 KERs, respectively, have not been previously documented in the prior AOP network or AOP-wiki. Notably, modifications in de novo lipogenesis, fatty acid uptake and mitochondrial beta-oxidation, leading to lipid accumulation and liver steatosis, garnered the highest KER confidence scores. In conclusion, our study delivers a generic methodology for developing and assessing AOP networks. The quantitative WoE scoring method facilitates in determining the level of support for KERs within the optimized AOP network, offering valuable insights into its utility in both scientific research and regulatory contexts. KERs supported by robust evidence represent promising candidates for inclusion in an in vitro test battery for reliably predicting chemical-induced liver steatosis within regulatory frameworks.

摘要

化学毒性测试领域正在经历一场变革,以克服体内实验的局限性。这一演变涉及采用创新的非动物方法来提高预测能力,并更精确地理解毒性机制。不良结局途径(AOP)网络在组织与毒理学过程相关的现有机制知识方面起着关键作用。然而,这些AOP网络是动态的,需要定期更新以纳入最新数据。由于对其提供信息的可靠性存在担忧,监管挑战也依然存在。本研究引入了一种通用的证据权重(WoE)评分方法,该方法与定制的布拉德福德-希尔标准相一致,用于定量评估AOP网络中关键事件关系(KER)的置信水平。我们以先前发表的关于化学诱导肝脂肪变性(一种常见的人类肝损伤形式)的AOP网络为例进行研究。首先,利用免费的SysRev平台从PubMed中提取最新科学信息,对现有的AOP网络进行优化,该平台基于人工智能进行摘要筛选和标准化数据收集。使用Cytoscape构建的优化后的AOP网络通过节点大小(关键事件,KE)和边的粗细(KER)直观地表示置信水平。此外,还开发了一个Shiny应用程序,以促进用户与数据集的交互,推动未来的更新。我们对173篇研究论文的分析产生了100个独特的KE和221个KER,其中分别有72个KE和170个KER在先前的AOP网络或AOP维基中未曾记录。值得注意的是,从头脂肪生成、脂肪酸摄取和线粒体β氧化的改变导致脂质积累和肝脂肪变性,获得了最高的KER置信度得分。总之,我们的研究提供了一种开发和评估AOP网络的通用方法。定量的WoE评分方法有助于确定优化后的AOP网络中KER的支持水平,为其在科学研究和监管背景下的效用提供有价值的见解。有充分证据支持的KER是有望纳入体外测试组合的候选者,以便在监管框架内可靠地预测化学诱导的肝脂肪变性。

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