利用传统的机器学习和先进的深度学习技术进行herg毒性预测

IF 2.9 Q2 TOXICOLOGY Current Research in Toxicology Pub Date : 2023-01-01 DOI:10.1016/j.crtox.2023.100121
Erik Ylipää , Swapnil Chavan , Maria Bånkestad , Johan Broberg , Björn Glinghammar , Ulf Norinder , Ian Cotgreave
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引用次数: 0

摘要

基于人工智能的算法的兴起在制药开发领域引起了人们的极大兴趣。我们的研究证明了传统机器学习技术的利用,如随机森林(RF)、支持向量机(SVM)、极限梯度提升(XGBoost)、深度神经网络(DNN),以及先进的深度学习技术,如基于门控递归单元的DNN(GRU-DNN)和图神经网络(GNN),预测人类醚相关基因(hERG)衍生的毒性。使用迄今为止最大的hERG数据集,我们分别使用203853和87366种化合物来训练和测试模型。结果表明,GNN、SVM、XGBoost、DNN、RF和GRU-DNN均表现良好,验证集AUC ROC得分分别为0.96、0.95、0.95、0.94、0.94和0.94。基于预测能力和可推广性,GNN被发现是性能最好的模型。GNN技术没有任何特征工程步骤,同时具有最小的人工干预。GNN方法可以作为预测毒理学全面自动化的基础。我们相信,这里提出的模型可能是一个很有前途的工具,无论是学术机构还是制药行业,都可以预测新分子结构中的hERG责任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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hERG-toxicity prediction using traditional machine learning and advanced deep learning techniques

The rise of artificial intelligence (AI) based algorithms has gained a lot of interest in the pharmaceutical development field. Our study demonstrates utilization of traditional machine learning techniques such as random forest (RF), support-vector machine (SVM), extreme gradient boosting (XGBoost), deep neural network (DNN) as well as advanced deep learning techniques like gated recurrent unit-based DNN (GRU-DNN) and graph neural network (GNN), towards predicting human ether-á-go-go related gene (hERG) derived toxicity. Using the largest hERG dataset derived to date, we have utilized 203,853 and 87,366 compounds for training and testing the models, respectively. The results show that GNN, SVM, XGBoost, DNN, RF, and GRU-DNN all performed well, with validation set AUC ROC scores equals 0.96, 0.95, 0.95, 0.94, 0.94 and 0.94, respectively. The GNN was found to be the top performing model based on predictive power and generalizability. The GNN technique is free of any feature engineering steps while having a minimal human intervention. The GNN approach may serve as a basis for comprehensive automation in predictive toxicology. We believe that the models presented here may serve as a promising tool, both for academic institutes as well as pharmaceutical industries, in predicting hERG-liability in new molecular structures.

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来源期刊
Current Research in Toxicology
Current Research in Toxicology Environmental Science-Health, Toxicology and Mutagenesis
CiteScore
4.70
自引率
3.00%
发文量
33
审稿时长
82 days
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