利益相关者
一致性(知识库)
风险评估
监管科学
人类健康
风险分析(工程)
考试(生物学)
管理科学
计算机科学
过程管理
业务
工程类
政治学
医学
公共关系
环境卫生
古生物学
计算机安全
生物
病理
人工智能
作者
Stanley T. Parish,Michael Aschner,Warren Casey,Marco Corvaro,Michelle R. Embry,Suzanne Fitzpatrick,Darren Kidd,Nicole Kleinstreuer,Beatriz Silva Lima,Raja S. Settivari,Douglas C. Wolf,Daiju Yamazaki,Alan R. Boobis
标识
DOI:10.1016/j.yrtph.2020.104592
摘要
The need to develop new tools and increase capacity to test pharmaceuticals and other chemicals for potential adverse impacts on human health and the environment is an active area of development. Much of this activity was sparked by two reports from the US National Research Council (NRC) of the National Academies of Sciences, Toxicity Testing in the Twenty-first Century: A Vision and a Strategy (2007) and Science and Decisions: Advancing Risk Assessment (2009), both of which advocated for "science-informed decision-making" in the field of human health risk assessment. The response to these challenges for a "paradigm shift" toward using new approach methodologies (NAMS) for safety assessment has resulted in an explosion of initiatives by numerous organizations, but, for the most part, these have been carried out independently and are not coordinated in any meaningful way. To help remedy this situation, a framework that presents a consistent set of criteria, universal across initiatives, to evaluate a NAM's fit-for-purpose was developed by a multi-stakeholder group of industry, academic, and regulatory experts. The goal of this framework is to support greater consistency across existing and future initiatives by providing a structure to collect relevant information to build confidence that will accelerate, facilitate and encourage development of new NAMs that can ultimately be used within the appropriate regulatory contexts. In addition, this framework provides a systematic approach to evaluate the currently-available NAMs and determine their suitability for potential regulatory application. This 3-step evaluation framework along with the demonstrated application with case studies, will help build confidence in the scientific understanding of these methods and their value for chemical assessment and regulatory decision-making.
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