利用机器学习模型预测化合物抗sars - cov -2活性

Beihong Ji, Yuhui Wu, Elena N. Thomas, Jocelyn N. Edwards, Xibing He, Junmei Wang
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引用次数: 0

摘要

为了加速发现2019冠状病毒病(COVID-19)治疗的新型候选药物,我们报告了一系列基于机器学习(ML)的模型,以准确预测筛选化合物的抗sars - cov -2活性。我们探索了6种流行的ML算法,结合来自NCATS托管的COVID-19开放数据门户网站中9种筛选试验的15种分子结构描述符。结果表明,使用分子描述符GAFF+RDKit构建的k-nearest neighbors (KNN)模型的总体性能最好,平均准确率最高,为0.68,接受者工作特征曲线下的平均面积也相对较高,为0.74,优于其他ML算法。同时,使用GAFF+RDKit描述符的KNN模型优于使用其他描述符的所有检测。我们开发的模型整体性能优于REDIAL-2020 (R)。开发了web服务器(https://clickff.org/amberweb/covid-19-cp),使用户能够使用COVID-19-CP (P)模型预测任意化合物的抗sars - cov -2活性。除了基于描述符的机器学习模型外,我们还为9项分析开发了基于图的细心FP (A)模型。我们发现,细心FP模型的性能与COVID-19-CP相当,优于REDIAL-2020模型。与使用Wilcoxon符号秩检验的其他三种模型(R, P, A)相比,同时使用COVID-19- cp和attention FP的共识预测可以显著提高预测精度,从而最终提高COVID-19药物发现的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting anti-SARS-CoV-2 activities of chemical compounds using machine learning models

To accelerate the discovery of novel drug candidates for Coronavirus Disease 2019 (COVID-19) therapeutics, we reported a series of machine learning (ML)-based models to accurately predict the anti-SARS-CoV-2 activities of screening compounds. We explored 6 popular ML algorithms in combination with 15 molecular descriptors for molecular structures from 9 screening assays in the COVID-19 OpenData Portal hosted by NCATS. As a result, the models constructed by k-nearest neighbors (KNN) using the molecular descriptor GAFF+RDKit achieved the best overall performance with the highest average accuracy of 0.68 and relatively high average area under the receiver operating characteristic curve of 0.74, better than other ML algorithms. Meanwhile, The KNN model for all assays using GAFF+RDKit descriptor outperformed using other descriptors. The overall performance of our developed models was better than REDIAL-2020 (R). A web server (https://clickff.org/amberweb/covid-19-cp) was developed to enable users to predict anti-SARS-CoV-2 activities of arbitrary compounds using the COVID-19-CP (P) models. Besides the descriptor-based machine learning models, we also developed graph-based Attentive FP (A) models for the 9 assays. We found that the Attentive FP models achieved a comparable performance to that of COVID-19-CP and outperformed the REDIAL-2020 models. The consensus prediction utilizing both COVID-19-CP and Attentive FP can significantly boost the prediction accuracy as assessed by comparing its performance with other three individual models (R, P, A) utilizing the Wilcoxon signed-rank test, thus can ultimately improve the success rate of COVID-19 drug discovery.

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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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