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Cheminformatics Models for Inhibitors ofSchistosoma mansoniThioredoxin Glutathione Reductase

机译:化学信息抑制剂抑制剂的抑制剂模型植物酮糖素糖蛋白酶还原酶

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摘要

Schistosomiasis is a neglected tropical disease caused by a parasiteSchistosoma mansoniand affects over 200 million annually. There is an urgent need to discover novel therapeutic options to control the disease with the recent emergence of drug resistance. The multifunctional protein, thioredoxin glutathione reductase (TGR), an essential enzyme for the survival of the pathogen in the redox environment has been actively explored as a potential drug target. The recent availability of small-molecule screening datasets against this target provides a unique opportunity to learn molecular properties and apply computational models for discovery of activities in large molecular libraries. Such a prioritisation approach could have the potential to reduce the cost of failures in lead discovery. A supervised learning approach was employed to develop a cost sensitive classification model to evaluate the biological activity of the molecules. Random forest was identified to be the best classifier among all the classifiers with an accuracy of around 80 percent. Independent analysis using a maximally occurring substructure analysis revealed 10 highly enriched scaffolds in the actives dataset and their docking against was also performed. We show that a combined approach of machine learning and other cheminformatics approaches such as substructure comparison and molecular docking is efficient to prioritise molecules from large molecular datasets.
机译:Schistosomiaisis是由寄生虫皮球菌群岛的忽视热带疾病,每年影响2亿多百万。迫切需要探索新的治疗选择来控制疾病,近期耐药性出现。多官能蛋白,硫昔林谷胱甘肽还原酶(TGR),氧化还原环境中病原体存活的基本酶已被积极探索为潜在的药物靶标。对该目标的小分子筛选数据集的最近可用性提供了学习分子特性的独特机会,并应用用于在大分子文库中发现活动的计算模型。这种优先级化方法可能有可能降低铅发现中失败的成本。采用监督学习方法开发成本敏感的分类模型以评估分子的生物学活性。随机森林被识别为所有分类器中最好的分类器,精度约为80%。使用最大发生的下部结构分析的独立分析显示了活性数据集中的10个高度富集的支架,并且还进行了对接。我们表明,机器学习的组合方法和其他化学信息学方法,如下部结构比较和分子对接是有效的,优先考虑来自大分子数据集的分子。

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