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首页> 外文期刊>Combinatorial chemistry & high throughput screening >A random forest model to predict the activity of a large set of soluble epoxide hydrolase inhibitors solely based on a set of simple fragmental descriptors
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A random forest model to predict the activity of a large set of soluble epoxide hydrolase inhibitors solely based on a set of simple fragmental descriptors

机译:一种随机森林模型,以预测一组简单的碎片描述符仅基于一组简单的颗粒可溶性环氧化物水解酶抑制剂的活性

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ABSTRACT: Background: The Soluble Epoxide Hydrolase (sEH) is a ubiquitously expressed enzyme in various tissues. The inhibition of the sEH has shown promising results to treat hypertension, alleviate pain and inflammation. Objective: In this study, the power of machine learning has been employed to develop a predictive QSAR model for a large set of sEH inhibitors. Methods: In this study, the random forest method was employed to make a valid model for the prediction of sEH inhibition. Besides, two new methods (Treeinterpreter python package and LIME, Local Interpretable Model-agnostic Explanations) have been exploited to explain and interpret the model. Results: The performance metrics of the model were as follows: R2=0.831, Q2=0.565, RMSE=0.552 and R2pred=0.595. The model also demonstrated good predictability on the two extra external test sets at least in terms of ranking. The Spearman’s rank correlation coefficients for external test set 1 and 2 were 0.872 and 0.673, respectively. The external test set 2 was a diverse one compared to the training set. Therefore, the model could be used for virtual screening to enrich potential sEH inhibitors among a diverse compound library. Conclusion: As the model was solely developed based on a set of simple fragmental descriptors, the model was explained by two local interpretation algorithms, and this could guide medicinal chemists to design new sEH inhibitors. Moreover, the most important general descriptors (fragments) suggested by the model were consistent with the available crystallographic data. The model is available as an executable binary at http://www.pharm-sbg.com and https://github.com/shamsaraj. ? 2019 Bentham Science Publishers.
机译:摘要:背景:可溶环氧化物水解酶(SEH)是各种组织中普遍表达的酶。 SEH的抑制表明了对治疗高血压,缓解疼痛和炎症的有希望的结果。目的:在这项研究中,已经采用了机器学习的力量为大量SEH抑制剂开发了预测的QSAR模型。方法:在本研究中,采用随机森林方法来制定有效模型,用于预测SEH抑制。此外,已经利用了两种新方法(TreeCreterProper Python Package和Lime,本地可解释的模型 - 不可知解释)解释和解释模型。结果:模型的性能指标如下:R2 = 0.831,Q2 = 0.565,RMSE = 0.552和R2PRED = 0.595。该模型在排名中至少在两个额外的外部测试集上展示了良好的预测性。外部测试组1和2的Spearman的等级相关系数分别为0.872和0.673。与训练集相比,外部测试组2是多元化的。因此,该模型可用于虚拟筛选,以富集各种复合文库中的潜在SEH抑制剂。结论:由于模型仅基于一组简单的碎片描述符开发,该模型由两个本地解释算法解释,这可以指导药用化学家设计新的SEH抑制剂。此外,模型建议的最重要的一般描述符(片段)与可用的晶体数据一致。该模型可作为在http://www.pharm-sbg.com和https://github.com/shamsaraj中的可执行二进制文件。还2019年Bentham Scients Publishers。

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