综合证据评估危害和风险的框架。

IF 5.7 2区 医学 Q1 TOXICOLOGY
Critical Reviews in Toxicology Pub Date : 2024-05-01 Epub Date: 2024-05-29 DOI:10.1080/10408444.2024.2342447
Sandra I Sulsky, Tracy Greene, P Robinan Gentry
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引用次数: 0

摘要

要准确描述人类健康危害的特征,必须整合人类、动物和机理数据,并考虑所有三种证据与研究问题的相关性。机理数据通常是全面整合动物和人类数据以及确定相关性和不确定性的关键。这种新颖的证据整合框架(EIF)提供了一种方法,用于综合来自流行病学和毒理学文献(包括体内和体外机理研究)的全面、系统和基于质量的评估数据。它根据观察到的人类健康影响和化学品的作用机制来组织数据,提供了一种支持证据综合的方法。以疾病为基础的部分使用最优质的流行病学文献中研究的人类健康结果证据,根据作者声明的目的组织毒理学数据,由疾病的病理生理学决定毒理学数据的潜在相关性。以机制为基础的组件根据建议的效应机制和支持导致每个终点的事件的数据来组织数据,流行病学数据可能提供佐证信息。EIF 包括一种交叉分类和描述数据一致性的方法,以及描述其不确定性的方法。有时,两种组织数据的方法可能会得出不同的结论。这有助于找出知识差距,并显示不确定性对因果推论强度的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework for integrating evidence to assess hazards and risk.

To accurately characterize human health hazards, human, animal, and mechanistic data must be integrated and the relevance to the research question of all three lines of evidence must be considered. Mechanistic data are often critical to the full integration of animal and human data and to characterizing relevance and uncertainty. This novel evidence integration framework (EIF) provides a method for synthesizing data from comprehensive, systematic, quality-based assessments of the epidemiological and toxicological literature, including in vivo and in vitro mechanistic studies. It organizes data according to both the observed human health effects and the mechanism of action of the chemical, providing a method to support evidence synthesis. The disease-based component uses the evidence of human health outcomes studied in the best quality epidemiological literature to organize the toxicological data according to authors' stated purpose, with the pathophysiology of the disease determining the potential relevance of the toxicological data. The mechanism-based component organizes the data based on the proposed mechanisms of effect and data supporting events leading to each endpoint, with the epidemiological data potentially providing corroborating information. The EIF includes a method to cross-classify and describe the concordance of the data, and to characterize its uncertainty. At times, the two methods of organizing the data may lead to different conclusions. This facilitates identification of knowledge gaps and shows the impact of uncertainties on the strength of causal inference.

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来源期刊
CiteScore
9.50
自引率
1.70%
发文量
29
期刊介绍: Critical Reviews in Toxicology provides up-to-date, objective analyses of topics related to the mechanisms of action, responses, and assessment of health risks due to toxicant exposure. The journal publishes critical, comprehensive reviews of research findings in toxicology and the application of toxicological information in assessing human health hazards and risks. Toxicants of concern include commodity and specialty chemicals such as formaldehyde, acrylonitrile, and pesticides; pharmaceutical agents of all types; consumer products such as macronutrients and food additives; environmental agents such as ambient ozone; and occupational exposures such as asbestos and benzene.
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