Classification models and SAR analysis on thromboxane A2 synthase inhibitors by machine learning methods.

IF 4.5 1区 社会学 Q1 INTERNATIONAL RELATIONS International Organization Pub Date : 2022-06-01 Epub Date: 2022-06-09 DOI:10.1080/1062936X.2022.2078880
Y Ji, R Li, Y Tian, G Chen, A Yan
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Abstract

Thromboxane A2 synthase (TXS) is a promising drug target for cardiovascular diseases and cancer. In this work, we conducted a structure-activity relationship (SAR) study on 526 TXS inhibitors for bioactivity prediction. Three types of descriptors (MACCS fingerprints, ECFP4 fingerprints, and MOE descriptors) were utilized to characterize inhibitors, 24 classification models were developed by support vector machine (SVM), random forest (RF), extreme gradient boosting (XGBoost), and deep neural networks (DNN). Then we reduced the number of fingerprints according to the contribution of descriptors to the models, and constructed 16 extra models on simplified fingerprints. In general, Model_4D built by DNN algorithm and 67 bits MACCS fingerprints performs best. The prediction accuracy of the model on the test set is 0.969, and Matthews correlation coefficient (MCC) is 0.936. The distance between compound and model (dSTD-PRO) was used to characterize the application domain of the model. In the test set of Model_4D, dSTD-PRO of 91.5% compounds is lower than the corresponding training set threshold (threshold0.90 = 0.1055), and the accuracy of these compounds is 0.983. In addition, the important descriptors were summarized and further analyzed. It showed that aromatic nitrogenous heterocyclic groups were beneficial to improve the bioactivity of TXS inhibitors.

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利用机器学习方法对血栓素 A2 合成酶抑制剂进行分类模型和 SAR 分析。
血栓素 A2 合酶(TXS)是治疗心血管疾病和癌症的一个很有前景的药物靶点。在这项工作中,我们对 526 种 TXS 抑制剂进行了结构-活性关系(SAR)研究,以预测其生物活性。我们利用三种描述符(MACCS指纹、ECFP4指纹和MOE描述符)来描述抑制剂,并通过支持向量机(SVM)、随机森林(RF)、极梯度提升(XGBoost)和深度神经网络(DNN)建立了24个分类模型。然后,我们根据描述符对模型的贡献程度减少了指纹数量,并在简化指纹上构建了 16 个额外的模型。总体而言,使用 DNN 算法和 67 比特 MACCS 指纹构建的模型_4D 性能最佳。该模型在测试集上的预测准确率为 0.969,马修斯相关系数(MCC)为 0.936。化合物与模型之间的距离(dSTD-PRO)用于描述模型的应用领域。在 Model_4D 的测试集中,91.5% 的化合物的 dSTD-PRO 低于相应的训练集阈值(阈值 0.90 = 0.1055),这些化合物的准确度为 0.983。此外,还对重要的描述因子进行了总结和进一步分析。结果表明,芳香含氮杂环基团有利于提高 TXS 抑制剂的生物活性。
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来源期刊
CiteScore
14.50
自引率
1.30%
发文量
25
期刊介绍: International Organization (IO) is a prominent peer-reviewed journal that comprehensively covers the field of international affairs. Its subject areas encompass foreign policies, international relations, political economy, security policies, environmental disputes, regional integration, alliance patterns, conflict resolution, economic development, and international capital movements. Continuously ranked among the top journals in the field, IO does not publish book reviews but instead features high-quality review essays that survey new developments, synthesize important ideas, and address key issues for future scholarship.
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