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首页> 外文期刊>Bulletin of the Korean Chemical Society >Descriptor-Based Profile Analysis of Kinase Inhibitors to Predict Inhibitory Activity and to Grasp Kinase Selectivity
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Descriptor-Based Profile Analysis of Kinase Inhibitors to Predict Inhibitory Activity and to Grasp Kinase Selectivity

机译:基于描述符的激酶抑制剂特征分析,以预测抑制活性和掌握激酶选择性

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摘要

Protein kinases (PKs) are an important source of drug targets, especially in oncology. With 500 or more kinases in the human genome and only few kinase inhibitors approved, kinase inhibitor discovery is becoming more and more valuable. Because the discovery of kinase inhibitors with an increased selectivity is an important therapeutic concept, many researchers have been trying to address this issue with various methodologies. Although many attempts to predict the activity and selectivity of kinase inhibitors have been made, the issue of selectivity has not yet been resolved. Here, we studied kinase selectivity by generating predictive models and analyzing their descriptors by using kinase-profiling data. The 5-fold cross-validation accuracies for the 51 models were between 72.4% and 93.7% and the ROC values for all the 51 models were over 0.7. The phylogenetic tree based on the descriptor distance is quite different from that generated on the basis of sequence alignment.
机译:蛋白激酶(PKs)是药物靶标的重要来源,尤其是在肿瘤学中。人类基因组中有500种或更多的激酶,并且只有少数激酶抑制剂被批准,激酶抑制剂的发现变得越来越有价值。因为发现具有增加的选择性的激酶抑制剂是重要的治疗概念,所以许多研究人员一直在尝试使用各种方法来解决该问题。尽管已经进行了许多预测激酶抑制剂的活性和选择性的尝试,但是选择性的问题尚未解决。在这里,我们通过生成预测模型并使用激酶分析数据分析其描述符来研究激酶选择性。 51个模型的5倍交叉验证准确性在72.4%和93.7%之间,并且所有51个模型的ROC值均超过0.7。基于描述符距离的系统树与基于序列比对的系统树完全不同。

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