In silico prediction of anti-malarial hit molecules based on machine learning methods.

Q4 Pharmacology, Toxicology and Pharmaceutics
Madhulata Kumari, Subhash Chandra
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引用次数: 5

Abstract

Machine learning techniques have been widely used in drug discovery and development in the areas of cheminformatics. Aspartyl aminopeptidase (M18AAP) of Plasmodium falciparum is crucial for survival of malaria parasite. We have created predictive models using weka and evaluated their performance based on various statistical parameters. Random Forest based model was found to be the most specificity (97.94%), with best accuracy (97.3%), MCC (0.306) as well as ROC (86.1%). The accuracy and MCC of these models indicated that they could be used to classify huge dataset of unknown compounds to predict their antimalarial compounds to develop effective drugs. Further, we deployed best predictive model on NCI diversity set IV. As result we found 59 bioactive anti-malarial molecules inhibiting M18AAP. Further, we obtained 18 non-toxic hit molecules out of 59 bioactive compounds. We suggest that such machine learning approaches could be applied to reduce the cost and length of time of drug discovery.
基于机器学习方法的抗疟疾分子的计算机预测。
机器学习技术已广泛应用于化学信息学领域的药物发现和开发。恶性疟原虫的天冬氨酸氨基肽酶(M18AAP)对疟原虫的生存至关重要。我们使用weka创建了预测模型,并根据各种统计参数评估了它们的性能。基于随机森林的模型特异性最高(97.94%),准确率最高(97.3%),MCC(0.306)和ROC(86.1%)。这些模型的准确性和MCC表明,它们可以用于对庞大的未知化合物数据集进行分类,以预测其抗疟疾化合物,从而开发有效的药物。此外,我们在NCI多样性集IV上部署了最佳预测模型,结果发现59种生物活性抗疟疾分子抑制M18AAP。此外,我们从59种生物活性化合物中获得了18种无毒的击中分子。我们建议这种机器学习方法可以应用于降低药物发现的成本和时间长度。
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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来源期刊
International Journal of Computational Biology and Drug Design
International Journal of Computational Biology and Drug Design Pharmacology, Toxicology and Pharmaceutics-Drug Discovery
CiteScore
1.00
自引率
0.00%
发文量
8
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