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Characterisation of the REACH Pre-Registered Substances List by Chemical Structure and Physicochemical Properties

机译:通过化学结构和理化性质表征REACH预注册物质清单

摘要

In the European Union, the registrants of chemical substances under the REACH legislation are explicitly encouraged, and even required, to use non-testing methods as a means of identifying the presence or absence of hazardous properties of substances in order to meet the information requirements of REACH while at the same time minimising testing on vertebrate animals. The need to use non-testing methods or other alternative (non-animal) methods such as in vitro tests, has led to the development and implementation of Integrated Testing Strategies based as far as possible on the integrated use of non-animal data. The use of non-testing methods within such strategies implies the need for computational tools and a structured workflow to facilitate their application. The list of pre-registered substances (PRS) published by the European Chemicals Agency includes chemicals that industry may to register in accordance with the deadlines specified in the REACH legislation. The PRS list does not include information on chemical structures, which are a prerequisite for the development and application of non-testing methods. Therefore, in order to facilitate the implementation of non-testing methods for the regulatory assessment of REACH chemicals, the Computational Toxicology Group within the Joint Research Centre (JRC) has:¿ generated structures for the PRS were by using the ACDLabs Name-to-Structure (NTS) software and validated them with a random sample¿ processed the structures to generate substance identifiers such as IUPAC name, InChI codes and SMILES strings¿ processed the structures to obtain information on chemical characteristics suitable for a preliminary assessment of the hazard and exposure¿ indicated the availability of experimental toxicological data with DSSTOX and FOOTPRINT tags¿ created a ¿QSAR-ready¿ data file to support the application of non-testing methods, such as QSARsThe application of ACD NTS resulted in a high rate of yield for the generation of structures (85%) for mono-constituent substances with a high reliability ¿ in total, about 80,000 structures were generated. By comparing these results with inventories of structures available from other publicly available sources of information, additional high quality structures including precise information on stereochemistry were generated. A quality review resulted in the assignment of quality labels to the structures and in the further checking of about 5500 structures.To support QSAR predictions and to estimate key physicochemical properties of the substances, these structures were processed to obtain an inventory of PRS parent substances, which serves as a standardised input for computational tools containing about 62,000 records. For these parent compounds the key features of the structures were calculated and key physicochemical properties were estimated using EPISUITE, Pipeline Pilot and ADMET Predictor.This chemical characterisation of the parent substances can be used to support a preliminary assessment of hazard and exposure. The data highlight the importance of ionisation to predict hazard and exposure for about 40% of the substances in the inventory.
机译:在欧洲联盟中,明确鼓励甚至要求在REACH法规下使用化学物质的注册人使用非测试方法作为识别物质是否存在危险特性的方法,从而满足化学品的信息要求。 REACH,同时将对脊椎动物的测试减至最少。由于需要使用非测试方法或其他替代(非动物)方法(例如体外测试),因此已导致尽可能多地基于非动物数据的综合使用来制定和实施综合测试策略。在此类策略中使用非测试方法意味着需要计算工具和结构化的工作流程以促进其应用。欧洲化学品管理局(European Chemicals Agency)发布的预注册物质(PRS)清单包括行业可能根据REACH法规中规定的期限注册的化学品。 PRS列表不包括有关化学结构的信息,这是开发和应用非测试方法的先决条件。因此,为了促进实施用于REACH化学品法规评估的非测试方法,联合研究中心(JRC)内的计算毒理学小组具有:?PRS的生成结构是通过使用ACDLabs命名为结构(NTS)软件并通过随机抽样对其进行验证-处理该结构以生成物质标识符,例如IUPAC名称,InChI代码和SMILES字符串-处理该结构以获得适合于初步评估危害和暴露的化学特性信息表示使用DSSTOX和FOOTPRINT标签提供了实验毒理学数据。创建了一个QSAR-ready数据文件以支持诸如QSARs的非测试方法的应用ACD NTS的应用产生了高收率单组分物质的结构(85%)具有很高的可靠性-总共产生了约80,000个结构。通过将这些结果与可从其他公共信息源获得的结构清单进行比较,生成了包括立体化学精确信息在内的其他高质量结构。通过质量审查,为该结构分配了质量标签,并进一步检查了约5500个结构。为支持QSAR预测并估算物质的关键理化特性,对这些结构进行了处理,以获取PRS母体物质的清单,它用作包含约62,000条记录的计算工具的标准输入。对于这些母体化合物,使用EPISUITE,Pipeline Pilot和ADMET Predictor对结构的关键特征进行了计算,并评估了关键的理化性质。母体物质的这种化学特性可用于支持对危害和暴露的初步评估。数据强调了电离​​对于预测清单中约40%物质的危害和暴露的重要性。

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    DAGINNUS Klaus;

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  • 年度 2009
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  • 原文格式 PDF
  • 正文语种 ENG
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