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hERG classification model based on a combination of support vector machine method and GRIND descriptors.

机译:基于支持向量机方法和GRIND描述符的hERG分类模型。

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The human Ether-a-go-go Related Gene (hERG) potassium channel is one of the major critical factors associated with QT interval prolongation and development of arrhythmia called Torsades de Pointes (TdP). It has become a growing concern of both regulatory agencies and pharmaceutical industries who invest substantial effort in the assessment of cardiac toxicity of drugs. The development of in silico tools to filter out potential hERG channel inhibitors in early stages of the drug discovery process is of considerable interest. Here, we describe binary classification models based on a large and diverse library of 495 compounds. The models combine pharmacophore-based GRIND descriptors with a support vector machine (SVM) classifier in order to discriminate between hERG blockers and nonblockers. Our models were applied at different thresholds from 1 to 40 microm and achieved an overall accuracy up to 94% with a Matthews coefficient correlation (MCC) of 0.86 ( F-measure of 0.90 for blockers and 0.95 for nonblockers). The model at a 40 microm threshold showed the best performance and was validated internally (MCC of 0.40 and F-measure of 0.57 for blockers and 0.81 for nonblockers, using a leave-one-out cross-validation). On an external set of 66 compounds, 72% of the set was correctly predicted ( F-measure of 0.86 and 0.34 for blockers and nonblockers, respectively). Finally, the model was also tested on a large set of hERG bioassay data recently made publicly available on PubChem ( http://pubchem.ncbi.nlm.nih.gov/assay/assay.cgi?aid=376) to achieve about 73% accuracy ( F-measure of 0.30 and 0.83 for blockers and nonblockers, respectively). Even if there is still some limitation in the assessment of hERG blockers, the performance of our model shows an improvement between 10% and 20% in the prediction of blockers compared to other methods, which can be useful in the filtering of potential hERG channel inhibitors.
机译:人类以太相关基因(hERG)钾通道是与QT间隔延长和心律失常发展相关的主要关键因素之一,称为Torsades de Pointes(TdP)。监管机构和制药行业都越来越关注这些问题,他们在评估药物的心脏毒性方面投入了大量精力。在药物发现过程的早期阶段,开发用于过滤掉潜在的hERG通道抑制剂的计算机电子工具引起了人们的极大兴趣。在这里,我们描述了基于495种化合物的大型多样库的二进制分类模型。该模型将基于药效团的GRIND描述符与支持向量机(SVM)分类器结合在一起,以区分hERG阻断剂和非阻断剂。我们的模型在从1到40微米的不同阈值下应用,并获得了高达94%的整体准确度,其马修斯系数相关性(MCC)为0.86(F测度为阻滞剂为0.90,非阻滞剂为0.95)。处于40微米阈值的模型显示出最佳性能,并在内部进行了验证(使用留一法交叉验证,MCC为0.40,F值为0.57(对阻滞剂而言为0.81,对于非阻滞剂为F1))。在外部一组66种化合物中,正确预测了该组化合物的72%(针对阻滞剂和非阻滞剂的F值分别为0.86和0.34)。最后,该模型还在最近在PubChem(http://pubchem.ncbi.nlm.nih.gov/assay/assay.cgi?aid=376)上公开获得的大量hERG生物测定数据上进行了测试,以达到约73 %精度(针对阻止者和非阻止者的F值分别为0.30和0.83)。即使评估hERG阻滞剂仍然存在一些局限性,我们模型的性能也显示出与其他方法相比,在阻滞剂的预测上提高了10%到20%,这对筛选潜在的hERG通道抑制剂很有用。

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