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推进抗疟药物研发:用于预测PfPK6抑制剂活性的集成机器学习模型

Advancing antimalarial drug discovery: ensemble machine learning models for predicting PfPK6 inhibitor activity.

作者信息

Gholami Maryam, Asadollahi-Baboli Mohammad

机构信息

Department of Chemistry, Faculty of Science, Babol Noshirvani University of Technology, Babol, 47148-71167, Mazandaran, Iran.

出版信息

Mol Divers. 2025 Apr 22. doi: 10.1007/s11030-025-11203-9.

Abstract

Malaria is a significant global health challenge, causing high morbidity and mortality. The rise of drug resistance highlights the urgent need for new antimalarial agents. This study focuses on predictive modeling of 104 Plasmodium falciparum protein kinase 6 (PfPK6) inhibitors, employing a range of machine learning techniques to develop ensemble regression and classification models. Molecular descriptors were refined using classification and regression trees (CART) to identify the most relevant features. Six machine learning algorithms (Random Forest (RF), Relevance Vector Machine (RVM), Support Vector Machine (SVM), Cubist, Artificial Neural Networks (ANN), and XGBoost) were utilized to construct regression models. The consensus model demonstrated superior predictive performance, achieving R = 0.94, SE = 0.20, Q = 0.90, and SE = 0.25, outperforming individual models. For classification tasks, five algorithms were evaluated and a majority voting approach yielded an accuracy of 91% and a sensitivity of 93%. The robustness of the models was confirmed through applicability domain analysis (96% coverage) and y-randomization tests, ensuring that the predictive outcomes were not due to chance correlations. This study highlights the effectiveness of ensemble machine learning approaches in predictive modeling and provides critical insights for the rational design of novel PfPK6 inhibitors.

摘要

疟疾是一项重大的全球健康挑战,会导致高发病率和高死亡率。耐药性的上升凸显了对新型抗疟药物的迫切需求。本研究聚焦于对104种恶性疟原虫蛋白激酶6(PfPK6)抑制剂进行预测建模,采用一系列机器学习技术来开发集成回归和分类模型。使用分类与回归树(CART)对分子描述符进行优化,以识别最相关的特征。利用六种机器学习算法(随机森林(RF)、相关向量机(RVM)、支持向量机(SVM)、Cubist、人工神经网络(ANN)和XGBoost)构建回归模型。共识模型表现出卓越的预测性能,R = 0.94,SE = 0.20,Q = 0.90,SE = 0.25,优于单个模型。对于分类任务,评估了五种算法,多数投票方法的准确率为91%,灵敏度为93%。通过适用域分析(覆盖率96%)和y随机化测试证实了模型的稳健性,确保预测结果不是由于偶然相关性。本研究突出了集成机器学习方法在预测建模中的有效性,并为新型PfPK6抑制剂的合理设计提供了关键见解。

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