推进毒性预测:新一代风险评估中的体内外推断综述

Peiling Han, Xuehua Li*, Jingyuan Yang, Yuxuan Zhang and Jingwen Chen, 
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引用次数: 0

摘要

作为下一代风险评估(NGRA)的关键步骤,体外到体内外推法(IVIVE)旨在调动对毒理学基于机理的理解,将从体外实验中获得的生物活性化学品浓度转化为可能诱发体内生物活性的相应暴露量。这种转换可以通过基于生理学的毒物动力学(PBTK)模型和机器学习(ML)算法来实现。过去 5 年是 IVIVE 快速发展的时期,与 IVIVE 相关的论文数量每年都在增加。本综述旨在:(1)全面概述IVIVE的起源以及多个国家机构为促进其发展而采取的举措;(2)对IVIVE相关论文进行汇编和分类,并对其高频关键词进行聚类分析,以捕捉关键研究热点;(3)全面回顾过去5年发表的基于PBTK和ML模型的IVIVE研究,以了解研究方向和方法论的发展;以及(4)从扩大应用范围和整合新技术两个方面提出IVIVE的未来展望。前者包括关注代谢物毒性,对易感人群开展 IVIVE 研究,推进基于 ML 的定量 IVIVE 模型,以及将研究扩展到生态效应。后者包括将系统生物学、多组学和不良后果网络与 IVIVE 相结合,旨在进行更微观、更机理和更全面的毒性预测。本综述强调了 IVIVE 在 NGRA 中的重要价值,目的是为其在化学品优先排序、危害评估和监管决策中的常规使用提供信心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advancing Toxicity Predictions: A Review on in Vitro to in Vivo Extrapolation in Next-Generation Risk Assessment

Advancing Toxicity Predictions: A Review on in Vitro to in Vivo Extrapolation in Next-Generation Risk Assessment

As a key step in next-generation risk assessment (NGRA), in vitro to in vivo extrapolation (IVIVE) aims to mobilize a mechanism-based understanding of toxicology to translate bioactive chemical concentrations obtained from in vitro assays to corresponding exposures likely to induce bioactivity in vivo. This conversion can be achieved via physiologically-based toxicokinetic (PBTK) models and machine learning (ML) algorithms. The last 5 years have witnessed a period of rapid development in IVIVE, with the number of IVIVE-related publications increasing annually. This Review aims to (1) provide a comprehensive overview of the origin of IVIVE and initiatives undertaken by multiple national agencies to promote its development; (2) compile and sort out IVIVE-related publications and perform a clustering analysis of their high-frequency keywords to capture key research hotspots; (3) comprehensively review PBTK and ML model-based IVIVE studies published in the last 5 years to understand the research directions and methodology developments; and (4) propose future perspectives for IVIVE from two aspects: expanding the scope of application and integrating new technologies. The former includes focusing on metabolite toxicity, conducting IVIVE studies on susceptible populations, advancing ML-based quantitative IVIVE models, and extending research to ecological effects. The latter includes combining systems biology, multiomics, and adverse outcome networks with IVIVE, aiming at a more microscopic, mechanistic, and comprehensive toxicity prediction. This Review highlights the important value of IVIVE in NGRA, with the goal of providing confidence for its routine use in chemical prioritization, hazard assessment, and regulatory decision making.

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来源期刊
Environment & Health
Environment & Health 环境科学、健康科学-
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期刊介绍: Environment & Health a peer-reviewed open access journal is committed to exploring the relationship between the environment and human health.As a premier journal for multidisciplinary research Environment & Health reports the health consequences for individuals and communities of changing and hazardous environmental factors. In supporting the UN Sustainable Development Goals the journal aims to help formulate policies to create a healthier world.Topics of interest include but are not limited to:Air water and soil pollutionExposomicsEnvironmental epidemiologyInnovative analytical methodology and instrumentation (multi-omics non-target analysis effect-directed analysis high-throughput screening etc.)Environmental toxicology (endocrine disrupting effect neurotoxicity alternative toxicology computational toxicology epigenetic toxicology etc.)Environmental microbiology pathogen and environmental transmission mechanisms of diseasesEnvironmental modeling bioinformatics and artificial intelligenceEmerging contaminants (including plastics engineered nanomaterials etc.)Climate change and related health effectHealth impacts of energy evolution and carbon neutralizationFood and drinking water safetyOccupational exposure and medicineInnovations in environmental technologies for better healthPolicies and international relations concerned with environmental health
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