Department of Environmental and Health Sciences, Istituto di Ricerche Farmacologiche Mario Negri IRCCS, Via La Masa 19, Milano, Italy.
University of Chester, Parkgate Road, Chester CH1 4BJ, United Kingdom.
Environ Int. 2019 Oct;131:105060. doi: 10.1016/j.envint.2019.105060. Epub 2019 Aug 1.
In silico methods and models are increasingly used for predicting properties of chemicals for hazard identification and hazard characterisation in the absence of experimental toxicity data. Many in silico models are available and can be used individually or in an integrated fashion. Whilst such models offer major benefits to toxicologists, risk assessors and the global scientific community, the lack of a consistent framework for the integration of in silico results can lead to uncertainty and even contradictions across models and users, even for the same chemicals. In this context, a range of methods for integrating in silico results have been proposed on a statistical or case-specific basis. Read-across constitutes another strategy for deriving reference points or points of departure for hazard characterisation of untested chemicals, from the available experimental data for structurally-similar compounds, mostly using expert judgment. Recently a number of software systems have been developed to support experts in this task providing a formalised and structured procedure. Such a procedure could also facilitate further integration of the results generated from in silico models and read-across. This article discusses a framework on weight of evidence published by EFSA to identify the stepwise approach for systematic integration of results or values obtained from these "non-testing methods". Key criteria and best practices for selecting and evaluating individual in silico models are also described, together with the means to combining the results, taking into account any limitations, and identifying strategies that are likely to provide consistent results.
在缺乏实验毒性数据的情况下,计算方法和模型越来越多地被用于预测化学品的特性,以进行危害识别和危害特征描述。有许多可用的计算模型,可以单独使用或集成使用。虽然这些模型为毒理学家、风险评估人员和全球科学界提供了重大利益,但由于缺乏整合计算结果的一致框架,即使对于相同的化学品,不同模型和用户之间也可能存在不确定性甚至矛盾。在这种情况下,已经提出了一系列基于统计或特定情况的整合计算结果的方法。从头预测是另一种策略,用于根据结构相似化合物的可用实验数据,为未经测试的化学品的危害特征描述推导出参考点或起始点,主要使用专家判断。最近,已经开发了一些软件系统来支持专家完成这项任务,提供了一个正式和结构化的程序。该程序还可以促进进一步整合来自计算模型和从头预测的结果。本文讨论了 EFSA 发布的证据权重框架,以确定系统整合这些“非测试方法”获得的结果或值的逐步方法。还描述了选择和评估单个计算模型的关键标准和最佳实践,以及结合结果的方法,同时考虑到任何限制,并确定可能提供一致结果的策略。