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国际环境诱变剂和致癌物防护委员会。构效关系方法在与致癌性和诱变性相关的非同类数据库中的应用:问题与方法。

International Commission for Protection Against Environmental Mutagens and Carcinogens. Application of SAR methods to non-congeneric data bases associated with carcinogenicity and mutagenicity: issues and approaches.

作者信息

Richard A M

机构信息

United States Environmental Protection Agency, Carcinogenesis and Metabolism Branch (MD-68), Research Triangle Park, NC 27711.

出版信息

Mutat Res. 1994 Feb 1;305(1):73-97. doi: 10.1016/0027-5107(94)90127-9.

Abstract

In both industry and government, structure-activity relationships (SAR) are capable of playing an important decision-support role in estimating the potential mutagenicity or carcinogenicity of chemicals for which bioassay test results are unavailable. Traditional SAR modeling approaches, however, are usually restricted to the consideration of structurally similar chemical congeners. The highly structurally diverse nature of current carcinogenicity and mutagenicity data bases has motivated development of more general SAR approaches, potentially applicable to the treatment of diverse, non-congeneric mutagenicity and carcinogenicity data bases. Three specific approaches are considered in some detail--Ashby's structural alerts model, classified as a "rule-based" SAR approach, and the computerized CASE fragment-based method and TOPKAT linear discriminant equation method, both classified as "correlative" SAR approaches. Relative strengths and limitations, and a number of common features and important distinctions between these 3 methods are discussed. Rule-base methods are highly flexible and able to incorporate many different types of relevant information, yet are biased towards current knowledge, viewpoints, and mechanistic assumptions, that may or may not hold true. Correlative SAR methods are less biased and offer the promise of "discovering" potentially new SAR associations that could lend fresh insight into the basis for a structure-activity association. However, problems associated with their application to non-congeneric data bases relate to: modeling multiple or overlapping mechanisms of action with a single relationship; defining the range of applicability of models in complex multi-dimensional structure-activity space; assigning confidence levels to predictions in the absence of knowledge concerning mechanisms of activity; and determining the potential mechanistic significance of diverse model parameters. It is argued that many of these concerns can be partially alleviated by careful application of statistical procedures, scrutiny of model results, and establishment of reasoned limits to the range of model applicability. The most significant confidence-building measure, however, will be a rationalization of the correlative SAR model and model parameters in terms of principles of chemical reactivity and postulated molecular mechanism(s) for the biological activity. Hence, it is recommended that models and model descriptors be designed to facilitate mechanistic interpretation and hypothesis generation. Finally, problems in comparing the relative predictive capabilities of different SAR approaches are discussed, and strategies for SAR investigation involving integration of existing techniques are suggested.

摘要

在工业界和政府部门,构效关系(SAR)在评估生物测定试验结果不可用的化学物质的潜在致突变性或致癌性方面能够发挥重要的决策支持作用。然而,传统的SAR建模方法通常局限于考虑结构相似的化学同系物。当前致癌性和致突变性数据库在结构上具有高度多样性,这推动了更通用的SAR方法的发展,这些方法可能适用于处理多样的、非同系的致突变性和致癌性数据库。本文较为详细地考虑了三种具体方法——阿什比的结构警示模型,归类为“基于规则”的SAR方法;以及计算机化的基于CASE片段的方法和TOPKAT线性判别方程方法,二者都归类为“相关”SAR方法。讨论了这三种方法的相对优势和局限性,以及它们之间的一些共同特征和重要区别。基于规则的方法高度灵活,能够纳入许多不同类型的相关信息,但偏向于当前的知识、观点和可能成立也可能不成立的机理假设。相关SAR方法的偏差较小,并有望“发现”潜在的新的SAR关联,从而为构效关系的基础提供新的见解。然而,将其应用于非同系数据库时存在的问题包括:用单一关系对多种或重叠的作用机制进行建模;在复杂的多维构效空间中定义模型的适用范围;在缺乏关于活性机制的知识的情况下为预测赋予置信水平;以及确定不同模型参数的潜在机理意义。有人认为,通过谨慎应用统计程序、仔细审查模型结果以及合理确定模型适用范围的限制,可以部分缓解其中许多问题。然而,最重要的增强置信度的措施将是根据化学反应性原理和假定的生物活性分子机制,对相关SAR模型和模型参数进行合理化。因此,建议设计模型和模型描述符以促进机理解释和假设生成。最后,讨论了比较不同SAR方法相对预测能力时存在的问题,并提出了涉及整合现有技术的SAR研究策略。

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