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Combinatorial support vector machines approach for virtual screening of selective multi-target serotonin reuptake inhibitors from large compound libraries

机译:组合支持向量机方法可从大型化合物库中虚拟筛选选择性多靶点5-羟色胺再摄取抑制剂

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Selective multi-target serotonin reuptake inhibitors enhance antidepressant efficacy. Their discovery can be facilitated by multiple methods, including in silico ones. In this study, we developed and tested an in silico method, combinatorial support vector machines (COMBI-SVMs), for virtual screening (VS) multi-target serotonin reuptake inhibitors of seven target pairs (serotonin transporter paired with noradrenaline transporter, H_3 receptor, 5-HT_(1A) receptor, 5-HT_(1B) receptor, 5-HT_(2C) receptor, melanocortin 4 receptor and neurokinin 1 receptor respectively) from large compound libraries. COMBI-SVMs trained with 917-1951 individual target inhibitors correctly identified 22-83.3% (majority >31.1%) of the 6-216 dual inhibitors collected from literature as independent testing sets. COMBI-SVMs showed moderate to good target selectivity in misclassifying as dual inhibitors 2.2-29.8% (majority <15.4%) of the individual target inhibitors of the same target pair and 0.58-7.1% of the other 6 targets outside the target pair. COMBI-SVMs showed low dual inhibitor false hit rates (0.006-0.056%, 0.042-0.21%, 0.2-4%) in screening 17 million PubChem compounds, 168,000 MDDR compounds, and 7-8181 MDDR compounds similar to the dual inhibitors. Compared with similarity searching, k-NN and PNN methods, COMBI-SVM produced comparable dual inhibitor yields, similar target selectivity, and lower false hit rate in screening 168,000 MDDR compounds. The annotated classes of many COMBI-SVMs identified MDDR virtual hits correlate with the reported effects of their predicted targets. COMBI-SVM is potentially useful for searching selective multi-target agents without explicit knowledge of these agents.
机译:选择性多靶点5-羟色胺再摄取抑制剂可增强抗抑郁功效。它们的发现可以通过多种方法(包括计算机方法)来促进。在这项研究中,我们开发并测试了一种计算机模拟方法,即组合支持向量机(COMBI-SVM),用于虚拟筛选(VS)七个靶标对的多靶点5-羟色胺再摄取抑制剂(5-羟色胺转运蛋白与去甲肾上腺素转运蛋白配对,H_3受体,来自大型化合物库的5-HT_(1A)受体,5-HT_(1B)受体,5-HT_(2C)受体,黑皮质素4受体和神经激肽1受体)。使用917-1951个别目标抑制剂训练的COMBI-SVM正确地从文献中收集了6-216种双重抑制剂中的22-83.3%(多数> 31.1%)作为独立测试集。 COMBI-SVM在误分类为双重抑制剂时显示了中度到良好的靶选择性,在相同靶对的单个靶抑制剂中占2.2-29.8%(多数<15.4%),在靶对之外的其他6个靶中占0.58-7.1%。 COMBI-SVM在筛选与双重抑制剂类似的1,700万PubChem化合物,168,000 MDDR化合物和7-8181 MDDR化合物中显示出较低的双重抑制剂误击率(0.006-0.056%,0.042-0.21%,0.2-4%)。与相似性搜索,k-NN和PNN方法相比,COMBI-SVM在筛选168,000个MDDR化合物时产生了可比的双重抑制剂收率,相似的靶标选择性和更低的假命中率。许多COMBI-SVM的带注释的类别确定了MDDR虚拟命中与其预测目标的效果相关。在没有明确了解这些代理的情况下,COMBI-SVM对于搜索选择性多目标代理可能很有用。

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