European Commission, Joint Research Centre (JRC), Ispra, Italy.
RTI International, Research Triangle Park, NC, USA.
ALTEX. 2024 Jan 9;41(1):50-56. doi: 10.14573/altex.2307131. Epub 2023 Aug 1.
Adverse outcome pathways (AOPs) provide evidence for demonstrating and assessing causality between measurable toxicological mechanisms and human or environmental adverse effects. AOPs have gained increasing attention over the past decade and are believed to provide the necessary steppingstone for more effective risk assessment of chemicals and materials and moving beyond the need for animal testing. However, as with all types of data and knowledge today, AOPs need to be reusable by machines, i.e., machine-actionable, in order to reach their full impact potential. Machine-actionability is supported by the FAIR principles, which guide findability, accessibility, interoperability, and reusability of data and knowledge. Here, we describe why AOPs need to be FAIR and touch on aspects such as the improved visibility and the increased trust that FAIRification of AOPs provides.
不良结局途径 (AOP) 提供了证明和评估可测量的毒理学机制与人类或环境不良影响之间因果关系的证据。在过去十年中,AOP 受到了越来越多的关注,被认为是为化学品和材料的更有效风险评估提供必要的垫脚石,超越了对动物测试的需求。然而,与当今所有类型的数据和知识一样,AOP 需要能够被机器重复使用,即具有机器可操作性,才能发挥其全部潜力。机器可操作性得到了 FAIR 原则的支持,该原则指导数据和知识的可发现性、可访问性、互操作性和可重复性。在这里,我们描述了为什么 AOP 需要具有 FAIR 性,并探讨了 FAIR 化 AOP 提供的改进可见性和增加信任等方面。