使用标准剂量-反应模型对连续毒理学数据进行基准剂量分析。

IF 5.7 2区 医学 Q1 TOXICOLOGY
Wout Slob, Martine I Bakker, Bas G H Bokkers, Guangchao Chen, Weihsueh A Chiu, Wim Mennes, M Alina Nicolaie, R Woodrow Setzer, Paul A White
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引用次数: 0

摘要

基准剂量(BMD)方法采用剂量-反应模型来确定与相对于背景反应的微小变化相关的剂量。在这里,我们介绍了一个基于关键风险评估原则和要求的连续数据建模的概念框架。基于这一框架,我们定义了一类剂量反应模型,它们具有相同的四个生物学可解释的模型参数,同时展示了从风险评估角度来看必不可少的五个共同特性:这些模型被称为“规范”模型。前两个规范性质很简单:性质1。模型只能预测正值(因为连续端点的测量通常是正值)和性质2。结果不应该依赖于测量单位。典型性质3反映了与不同亚群(如物种、性别和暴露持续时间)相关的毒理学剂量反应数据通常(至少近似)在对数剂量尺度上平行的观察结果,这同时是定义基本毒理学概念的隐含假设,如外推因子、相对效力因子(RPFs)和相对敏感性因子(RSFs)。需要性质4来比较最大响应不同的端点的灵敏度。第五个规范属性反映了我们的观点,即关于剂量-反应模型表达式的选择、组内变化的假设分布和正在使用的基准反应(BMR)应该是内部一致的。我们讨论的规范模型适用于拟合与不同亚群(如物种、性别和暴露持续时间)相关的组合数据集的平行剂量-反应曲线。这样做提供了一种工具来检查所分析的特定数据的规范属性3。我们提供的经验证据表明,这一属性具有普遍的有效性,这是非常幸运的,因为这使得外推因素和rfp在风险评估中的使用合法化。然后,我们评估了欧洲食品安全局(EFSA)或美国环境保护署(US-EPA)目前BMD指南中的方法在多大程度上符合标准剂量-反应模型的原则,得出的结论是,这只是部分情况。后者可能产生不利的,有时甚至是深远的后果。例如,当改变测量单位(例如µg到mg)时,一些推荐的非规范模型会产生不同的bmd。作为另一个例子,EFSA最近开发的BMD工具以这样一种方式实现协变量分析,即规范属性3不可能由任何模型表示。另一个缺点是,非规范模型妨碍了贝叶斯方法中先验分布的有效开发和使用。最后,我们认为仅使用规范模型的一个重要优势是BMD方法将更加透明,因此风险评估者将能够更好地理解它,并且具有高社会影响的BMD可以更容易地进行辩护。本文可能是一个有用的工具,毒理学家和风险评估人员在概念层面上严格跟踪BMD方法的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of canonical dose-response models for benchmark dose analysis of continuous toxicological data.

The benchmark dose (BMD) approach employs dose-response modeling to determine the dose associated with a small change in response relative to the background response. Here, we introduce a conceptual framework for modeling continuous data that is based on key risk assessment principles and requirements. Based on this framework, we define a class of dose-response models sharing the same four biologically interpretable model parameters, while exhibiting five common properties that are essential from a risk assessment perspective: such models are denoted as "canonical" models. The first two canonical properties are straightforward: property 1. The models should predict positive values only (as measurements of continuous endpoints are typically positive) and property 2. the outcomes should not depend on the measurement unit. Canonical property 3 reflects the observation that toxicological dose-response data related to different subgroups (e.g. species, sexes, and exposure durations) are typically (at least approximately) parallel on a log-dose scale, which is at the same time an implicit assumption in defining fundamental toxicological concepts, such as extrapolation factors, relative potency factors (RPFs), and relative sensitivity factors (RSFs). Property 4 is needed to enable comparisons of the sensitivity of endpoints differing in maximum response. A fifth canonical property reflects our view that choices regarding the dose-response model expression, the assumed distribution for the within-group variation, and the benchmark response (BMR) that is being used should be internally consistent. The canonical models that we discuss are suitable to fit parallel dose-response curves to combined datasets related to different subgroups (e.g. species, sexes, and exposure durations). Doing so provides a tool to check canonical property 3 of the particular data analyzed. We provide a review of empirical evidence indicating that this property has general validity, which is highly fortunate, as this legitimizes the use of extrapolation factors and RPFs in risk assessment. We then evaluate to what extent the approaches in current BMD guidance by European Food Safety Authority (EFSA) or U.S. Environmental Protection Agency (US-EPA) comply with the principles of canonical dose-response modeling, concluding that this is only partly the case. The latter can have unfavorable and sometimes far-reaching consequences. For instance, some of the recommended non-canonical models result in different BMDs when changing the measurement unit (e.g. µg to mg). As another example, the BMD tool recently developed by EFSA implements covariate analysis in such a way that canonical property 3 cannot possibly be represented by any of the models. As another disadvantage, non-canonical models preclude the effective development and use of prior distributions in a Bayesian approach. Finally, we argue that a concomitant but important advantage of only using canonical models is that BMD methodology will be more transparent, so that risk assessors will be better able to understand it, and BMDs with high societal impact can be more easily defended. The present paper may be a helpful tool for toxicologists and risk assessors to critically follow the developments in BMD methodology at the conceptual level.

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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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