第 19 届 FRAME 年度讲座,2022 年 11 月:更安全的化学品和可持续创新将通过现代安全科学的监管使用而非更多的动物试验来实现。

IF 2.4 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Julia H Fentem
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引用次数: 0

摘要

我们必须根据现有的最佳科学数据和知识,为消费者、工人和环境做出有关化学品安全的决策。生物学、细胞技术和检测方法以及分析和计算方法的快速发展,产生了新型的高度相关的科学数据。这些数据使我们能够改进我们做出的安全决定,同时也使我们能够避免动物试验。在英国和欧盟禁止对化妆品进行动物实验的推动下,下一代风险评估(NGRA)方法应运而生,该方法整合了各种类型的非动物科学数据,用于评估化妆品和其他消费品中使用的化学成分的安全性。与此形成鲜明对比的是,欧洲和世界其他地区的化学品法规却没有跟上现代安全科学的步伐,监管机构现在甚至强制要求进行更多的动物试验。要坚持欧盟的立法要求,即任何动物试验都是不得已而为之,就必须尽快缩小这一科学与监管之间的差距。英国和欧盟正在对化学品战略和法规进行修订,这为从根本上改变设计和评估范式提供了契机,通过应用现有的最佳科学和工具,而不是继续沿用几十年前的动物试验,可以从根本上支持安全和更具可持续性的创新。为了满足这一迫切需求,英国和欧盟最近发起了一系列倡议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The 19th FRAME Annual Lecture, November 2022: Safer Chemicals and Sustainable Innovation Will Be Achieved by Regulatory Use of Modern Safety Science, Not by More Animal Testing.

The decisions we make on chemical safety, for consumers, workers and the environment, must be based on the best scientific data and knowledge available. Rapid advances in biology, in cell-based technologies and assays, and in analytical and computational approaches, have led to new types of highly relevant scientific data being generated. Such data enable us to improve the safety decisions we make, whilst also enabling us to avoid animal testing. Stimulated by the UK and EU bans on animal testing for cosmetics, Next Generation Risk Assessment (NGRA) approaches, which integrate various types of non-animal scientific data, have been established for assessing the safety of chemical ingredients used in cosmetics and other consumer products. In stark contrast, the chemicals regulations in Europe and other parts of the world have not kept pace with modern safety science and regulators are now mandating even more animal testing. Urgently closing this science-regulation gap is essential to upholding the EU's legislative requirement that any animal testing is a last resort. The ongoing revisions of UK and EU chemicals strategy and regulations provide an opportunity to fundamentally change the design and assessment paradigm needed to underpin safe and more sustainable innovation, through applying the best science and tools available rather than continuing to be anchored in animal tests dating back many decades. A range of initiatives have recently been launched in response to this urgent need, in the UK as well as in the EU.

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来源期刊
CiteScore
3.80
自引率
3.70%
发文量
60
审稿时长
>18 weeks
期刊介绍: Alternatives to Laboratory Animals (ATLA) is a peer-reviewed journal, intended to cover all aspects of the development, validation, implementation and use of alternatives to laboratory animals in biomedical research and toxicity testing. In addition to the replacement of animals, it also covers work that aims to reduce the number of animals used and refine the in vivo experiments that are still carried out.
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