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Constructing and Validating High-Performance MIEC-SVM Models in Virtual Screening for Kinases: A Better Way for Actives Discovery

机译:在虚拟筛选中构建和验证高性能MIEC-SVM模型,用于激活:激活发现的更好方法

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The MIEC-SVM approach, which combines molecular interaction energy components (MIEC) derived from free energy decomposition and support vector machine (SVM), has been found effective in capturing the energetic patterns of protein-peptide recognition. However, the performance of this approach in identifying small molecule inhibitors of drug targets has not been well assessed and validated by experiments. Thereafter, by combining different model construction protocols, the issues related to developing best MIEC-SVM models were firstly discussed upon three kinase targets (ABL, ALK, and BRAF). As for the investigated targets, the optimized MIEC-SVM models performed much better than the models based on the default SVM parameters and Autodock for the tested datasets. Then, the proposed strategy was utilized to screen the Specs database for discovering potential inhibitors of the ALK kinase. The experimental results showed that the optimized MIEC-SVM model, which identified 7 actives with IC50??10?μM from 50 purchased compounds (namely hit rate of 14%, and 4 in nM level) and performed much better than Autodock (3 actives with IC50??10?μM from 50 purchased compounds, namely hit rate of 6%, and 2 in nM level), suggesting that the proposed strategy is a powerful tool in structure-based virtual screening.
机译:已经有效地捕获了蛋白质肽识别的能量模式,已经发现,将来自自由能量分解和支持向量机(SVM)的分子相互作用能量分量(MIEC)结合的MIC-SVM方法。然而,这种方法在鉴定药物靶标的小分子抑制剂时的性能尚未通过实验进行很好的评估和验证。此后,通过组合不同的模型施工协议,首先在三个激酶靶标(ABL,ALK和BRAF)上讨论了与开发最佳MIEC-SVM模型相关的问题。至于调查的目标,优化的MIEC-SVM模型比基于默认的SVM参数和用于测试数据集的自动速率更好的模型。然后,利用所提出的策略来筛选规范数据库以发现碱酶的潜在抑制剂。实验结果表明,优化的MIEC-SVM模型,用IC50鉴定了7个活性物质,来自50个购买的化合物(即击中率为14%,4个中的4个),比Autodock更好(3使用IC50的活性α<?10?μm,从50个购买的化合物,即击中率为6%,2中的2次),表明所提出的策略是基于结构的虚拟筛选中的强大工具。

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