环境化学毒性统计QSAR模型的最新趋势。

Q2 Medicine
Alexander Tropsha
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引用次数: 16

摘要

定量化学信息学方法,如QSAR建模,在化学品风险评估中得到越来越多的应用。传统的方法依赖于使用计算的分子化学描述符和相对较小的训练集。然而,近年来,有一种趋势是越来越多地使用体外生物试验方法,以减少实验研究的长度和化学风险评估的动物使用。此外,还更加强调使用外部数据集进行模型验证,以便可靠地使用计算模型作为监管决策的一部分。在本章中,研究了强调在模型开发和严格模型验证之前需要仔细管理实验数据的最新趋势。此外,最近的化学毒性预测方法采用化学描述符和体外筛选数据来开发新的混合化学/生物模型。本文描述了各自应用研究的例子,这些应用研究采用新颖的工作流进行模型开发,并讨论了最近由几个学术、非营利和工业团体开始将数据,特别是模型置于公共领域的重要努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent trends in statistical QSAR modeling of environmental chemical toxicity.

Quantitative cheminformatics approaches such as QSAR modeling find growing applications in chemical risk assessment. Traditional methods rely on the use of calculated chemical descriptors of molecules and relatively small training sets. However, in recent years, there is a trend toward the increased use of in vitro biological testing approaches to reduce both the length of experimental studies and the animal use for chemical risk assessment. Furthermore, there is also much greater emphasis on model validation using external datasets to enable the reliable use of computational models as part of regulatory decision making. In this chapter, recent trends emphasizing the need for both careful curation of experimental data prior to model development and rigorous model validation are investigated. Furthermore, recent approaches to chemical toxicity prediction that employ both chemical descriptors and in vitro screening data for developing novel hybrid chemical/biological models are being reviewed. Examples of respective application studies that employ novel workflows for model developments are described and recent important efforts by several academic, nonprofit, and industrial groups to start placing both data and, especially, models in the public domain are discussed.

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来源期刊
Experientia supplementum (2012)
Experientia supplementum (2012) Medicine-Medicine (all)
CiteScore
3.30
自引率
0.00%
发文量
24
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