首页> 外文期刊>Journal of chemical information and modeling >Multi-Descriptor Read Across (MuDRA): A Simple and Transparent Approach for Developing Accurate Quantitative Structure-Activity Relationship Models
【24h】

Multi-Descriptor Read Across (MuDRA): A Simple and Transparent Approach for Developing Accurate Quantitative Structure-Activity Relationship Models

机译:读取的多描述符(Mudra):一种简单透明的方法,用于开发准确的定量结构 - 活动关系模型

获取原文
获取原文并翻译 | 示例
       

摘要

Multiple approaches to quantitative structure-activity relationship (QSAR) modeling using various statistical or machine learning techniques and different types of chemical descriptors have been developed over the years. Oftentimes models are used in consensus to make more accurate predictions at the expense of model interpretation. We propose a simple, fast, and reliable method termed Multi-Descriptor Read Across (MuDRA) for developing both accurate and interpretable models. The method is conceptually related to the well-known kNN approach but uses different types of chemical descriptors simultaneously for similarity assessment. To benchmark the new method, we have built MuDRA models for six different end points (Ames mutagenicity, aquatic toxicity, hepatotoxicity, hERG liability, skin sensitization, and endocrine disruption) and compared the results with those generated with conventional consensus QSAR modeling. We find that models built with MuDRA show consistently high external accuracy similar to that of conventional QSAR models. However, MuDRA models excel in terms of transparency, interpretability, and computational efficiency. We posit that due to its methodological simplicity and reliable predictive accuracy, MuDRA provides a powerful alternative to a much more complex consensus QSAR modeling. MuDRA is implemented and freely available at the Chembench web portal (https://chembench.mml.unc.edu/mudra).
机译:多年来已经开发了使用各种统计或机器学习技术和不同类型的化学描述符进行定量结构 - 活动关系(QSAR)建模的多种方法。通常用于共识的模型,以牺牲模型解释的牺牲更准确的预测。我们提出了一种简单,快速,可靠的方法,用于跨越(Mudra)的多描述符,用于开发准确和可解释的模型。该方法在概念上与众所周知的KNN方法相关,但同时使用不同类型的化学描述符进行相似性评估。为了基准新方法,我们建立了六种不同终点的Mudra模型(Ames致突变性,水生毒性,肝毒性,HERG责任,皮肤致敏和内分泌破坏),并将结果与​​传统共识QSAR建模产生的结果进行了比较。我们发现,使用Mudra建造的型号显示出与传统QSAR模型类似的外部精度始终如一的外部精度。然而,Mudra在透明度,可解释性和计算效率方面的擅长卓越。我们对这种方法论简单且可靠的预测准确性,Mudra提供了更强大的替代方案,更复杂的QSAR建模。 Mudra在Chembench网站(HTTPS://chembench.mml.unc.edu/mudra)中实施和自由提供。

著录项

  • 来源
  • 作者单位

    Univ N Carolina Lab Mol Modeling Div Chem Biol &

    Med Chem UNC Eshelman Sch Pharm Chapel Hill NC 27599 USA;

    Univ N Carolina Lab Mol Modeling Div Chem Biol &

    Med Chem UNC Eshelman Sch Pharm Chapel Hill NC 27599 USA;

    Univ N Carolina Lab Mol Modeling Div Chem Biol &

    Med Chem UNC Eshelman Sch Pharm Chapel Hill NC 27599 USA;

    Univ N Carolina Dept Comp Sci Chapel Hill NC 27599 USA;

    Univ N Carolina Dept Comp Sci Chapel Hill NC 27599 USA;

    Univ N Carolina Dept Comp Sci Chapel Hill NC 27599 USA;

    Univ N Carolina Dept Comp Sci Chapel Hill NC 27599 USA;

    Univ Fed Goias Dept Pharm Lab Mol Modeling &

    Design BR-74605170 Goiania Go Brazil;

    Univ N Carolina Lab Mol Modeling Div Chem Biol &

    Med Chem UNC Eshelman Sch Pharm Chapel Hill NC 27599 USA;

    Univ N Carolina Lab Mol Modeling Div Chem Biol &

    Med Chem UNC Eshelman Sch Pharm Chapel Hill NC 27599 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 化学;化学工业;
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号