A genetic programming-based approach and machine learning approaches to the classification of multiclass anti-malarial datasets

Madhulata Kumari, Neeraj Tiwari, N. Subbarao
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引用次数: 3

Abstract

Feature selection approaches have been widely applied to deal with the various sample size problem in the classification of activity of datasets. The present work focuses on the understanding system of descriptors of anti-malarial inhibitors by Genetic programming (GP) to understand the impact of descriptors on inhibitory effects. The experimental dataset of inhibitors of anti-malarial was used to derive the optimised system by GP. Additionally, we have developed machine learning models using the random forest, decision tree, support vector machine (SVM) and Naive Bayes on an antimalarial dataset obtained from ChEMBL database and evaluated for their predictive capability. Based on the statistical evaluation, Random Forest model showed the higher area under the curve (AUC), better accuracy, sensitivity, and specificity in the cross-validation tests as compared to others. The statistical results indicated that the RF model was the best predictive model with 82.51% accuracy, 89.7% ROC. We deployed the RF classifier model on three datasets; phytochemical compound dataset, NCI natural product dataset IV and approved drugs dataset containing 918, 423 and 1554 compounds resulting 153, 81 and 250 compounds respectively as anti-malarial compounds. Further, to prioritise drug-like compounds, Lipinski's rule was applied on active phytochemicals which resulted in 13 hit anti-malarial molecules. Thus, such predictive models are useful to find out novel hit anti-malarial compounds and could also be used to discover novel drugs for other diseases.
基于遗传规划和机器学习的多类抗疟疾数据集分类方法
特征选择方法已被广泛应用于处理数据集活动分类中的各种样本大小问题。利用遗传规划(GP)技术构建抗疟疾抑制剂描述子的理解系统,了解描述子对抑制效果的影响。利用抗疟疾抑制剂实验数据集,通过GP推导出优化后的系统。此外,我们利用随机森林、决策树、支持向量机(SVM)和朴素贝叶斯在ChEMBL数据库获得的抗疟疾数据集上开发了机器学习模型,并对其预测能力进行了评估。经统计评价,随机森林模型在交叉验证试验中具有较高的曲线下面积(AUC)、较高的准确性、敏感性和特异性。统计结果表明,RF模型为最佳预测模型,准确率为82.51%,ROC为89.7%。我们在三个数据集上部署了RF分类器模型;植物化学化合物数据集、NCI天然产物数据集IV和获批药物数据集分别包含918、423和1554种化合物,分别产生153、81和250种抗疟疾化合物。此外,为了优选类似药物的化合物,利平斯基的规则被应用于活性植物化学物质,结果产生了13种有效的抗疟疾分子。因此,这种预测模型有助于发现新的抗疟疾化合物,也可用于发现治疗其他疾病的新药。
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