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首页> 外文期刊>Journal of Medicinal Chemistry >Interpretation of Compound Activity Predictions from Complex Machine Learning Models Using Local Approximations and Shapley Values
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Interpretation of Compound Activity Predictions from Complex Machine Learning Models Using Local Approximations and Shapley Values

机译:使用局部近似和福曲值从复杂机器学习模型的复合活动预测解释

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摘要

In qualitative or quantitative studies of structure-activity relationships (SARs), machine learning (ML) models are trained to recognize structural patterns that differentiate between active and inactive compounds. Understanding model decisions is challenging but of critical importance to guide compound design. Moreover, the interpretation of ML results provides an additional level of model validation based on expert knowledge. A number of complex ML approaches, especially deep learning (DL) architectures, have distinctive black-box character. Herein, a locally interpretable explanatory method termed Shapley additive explanations (SHAP) is introduced for rationalizing activity predictions of any ML algorithm, regardless of its complexity. Models resulting from random forest (RF), nonlinear support vector machine (SVM), and deep neural network (DNN) learning are interpreted, and structural patterns determining the predicted probability of activity are identified and mapped onto test compounds. The results indicate that SHAP has high potential for rationalizing predictions of complex ML models.
机译:在结构 - 活性关系(SARS)的定性或定量研究中,训练机器学习(ML)模型以识别区分活性和无活性化合物的结构模式。了解模型决策是具有挑战性的,但重要的重要性是指导复合设计。此外,ML结果的解释提供了基于专家知识的额外模型验证水平。许多复杂的ML方法,尤其是深度学习(DL)架构,具有独特的黑匣子字符。这里,引入了局部可解释的解释方法,其被称为福利添加剂解释(SHAC),用于合理化任何ML算法的活性预测,无论其复杂性如何。随机森林(RF),非线性支持向量机(SVM)和深神经网络(DNN)学习产生的模型被解释,并且确定了确定预测活性概率的结构模式并映射到测试化合物上。结果表明,Shav具有高潜力,用于合理化复杂ML模型的预测。

著录项

  • 来源
    《Journal of Medicinal Chemistry》 |2020年第16期|共17页
  • 作者单位

    Rhein Friedrich Wilhelm Univ LIMES Program Unit Chem Biol &

    Med Chem Dept Life Sci Informat B IT Endenicher Allee 19c D-53115 Bonn Germany;

    Rhein Friedrich Wilhelm Univ LIMES Program Unit Chem Biol &

    Med Chem Dept Life Sci Informat B IT Endenicher Allee 19c D-53115 Bonn Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 药学;
  • 关键词

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