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In silico approach to screen compounds active against parasitic nematodes of major socio-economic importance

机译:计算机方法筛选对主要社会经济意义上的寄生性线虫有活性的化合物

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Background Infections due to parasitic nematodes are common causes of morbidity and fatality around the world especially in developing nations. At present however, there are only three major classes of drugs for treating human nematode infections. Additionally the scientific knowledge on the mechanism of action and the reason for the resistance to these drugs is poorly understood. Commercial incentives to design drugs that are endemic to developing countries are limited therefore, virtual screening in academic settings can play a vital role is discovering novel drugs useful against neglected diseases. In this study we propose to build robust machine learning model to classify and screen compounds active against parasitic nematodes. Results A set of compounds active against parasitic nematodes were collated from various literature sources including PubChem while the inactive set was derived from DrugBank database. The support vector machine (SVM) algorithm was used for model development, and stratified ten-fold cross validation was used to evaluate the performance of each classifier. The best results were obtained using the radial basis function kernel. The SVM method achieved an accuracy of 81.79% on an independent test set. Using the model developed above, we were able to indentify novel compounds with potential anthelmintic activity. Conclusion In this study, we successfully present the SVM approach for predicting compounds active against parasitic nematodes which suggests the effectiveness of computational approaches for antiparasitic drug discovery. Although, the accuracy obtained is lower than the previously reported in a similar study but we believe that our model is more robust because we intentionally employed stringent criteria to select inactive dataset thus making it difficult for the model to classify compounds. The method presents an alternative approach to the existing traditional methods and may be useful for predicting hitherto novel anthelmintic compounds.
机译:背景技术寄生线虫引起的感染是世界范围内发病率和致死率的常见原因,尤其是在发展中国家。但是,目前仅有三种主要的用于治疗人线虫感染的药物。另外,关于作用机理和对这些药物产生抗性的原因的科学知识知之甚少。设计在发展中国家流行的药物的商业动机是有限的,因此,在学术环境中进行虚拟筛查可以发挥至关重要的作用,这是发现对付被忽视疾病有用的新药。在这项研究中,我们建议建立健壮的机器学习模型来分类和筛选对寄生性线虫有效的化合物。结果从包括PubChem在内的各种文献资料中整理出了一组对寄生虫线虫有活性的化合物,而无活性的化合物则来自DrugBank数据库。支持向量机(SVM)算法用于模型开发,分层十倍交叉验证用于评估每个分类器的性能。使用径向基函数内核可获得最佳结果。 SVM方法在独立的测试装置上达到了81.79%的精度。使用上面开发的模型,我们能够确定具有潜在驱虫活性的新型化合物。结论在这项研究中,我们成功地提出了SVM方法来预测对寄生性线虫有活性的化合物,这表明计算方法对于抗寄生虫药物发现的有效性。尽管获得的准确度低于以前在类似研究中报告的准确度,但我们认为我们的模型更加健壮,因为我们有意采用严格的标准来选择非活性数据集,从而使模型难以对化合物进行分类。该方法为现有的传统方法提供了一种替代方法,可用于预测迄今为止的新型驱虫药。

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