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首页> 外文期刊>Biochimica et biophysica acta: BBA: International journal of biochemistry, biophysics and molecular biololgy. Proteins and Proteomics >Prediction of drug target groups based on chemical-chemical similarities and chemical-chemical/protein connections
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Prediction of drug target groups based on chemical-chemical similarities and chemical-chemical/protein connections

机译:基于化学化学化学相似性和化学化学品/蛋白质连接的药物靶组预测

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摘要

Drug-target interaction is a key research topic in drug discovery since correct identification of target proteins of drug candidates can help screen out those with unacceptable toxicities, thereby saving expense. In this study, we developed a novel computational approach to predict drug target groups that may reduce the number of candidate target proteins associated with a query drug. A benchmark dataset, consisting of 3028 drugs assigned within nine categories, was constructed by collecting data from KEGG. The nine categories are (1) G protein-coupled receptors, (2) cytokine receptors, (3) nuclear receptors, (4) ion channels, (5) transporters, (6) enzymes, (7) protein kinases, (8) cellular antigens and (9) pathogens. The proposed method combines the data gleaned from chemical-chemical similarities, chemical-chemical connections and chemical-protein connections to allocate drugs to each of the nine target groups. A jackknife test applied to the training dataset that was constructed from the benchmark dataset, provided an overall correct prediction rate of 87.45%, as compared to 87.79% for the test dataset that was constructed by randomly selecting 10% of samples from the benchmark dataset. These prediction rates are much higher than the 11.11% achieved by random guesswork. These promising results suggest that the proposed method can become a useful tool in identifying drug target groups. This article is part of a Special Issue entitled: Computational Proteomics, Systems Biology & Clinical Implications. Guest Editor: Yudong Cai.
机译:药物靶互动是药物发现中的关键研究课题,因为毒品候选者的靶蛋白的正确鉴定可以帮助筛选毒性不可接受的人,从而节省费用。在这项研究中,我们开发了一种新的计算方法来预测可能减少与查询药物相关的候选目标蛋白数量的药物靶群。由九个类别分配的3028种药物组成的基准数据集是通过从Kegg收集数据构建的。九个类别是(1)g蛋白偶联受体,(2)细胞因子受体,(3)核受体,(4)离子通道,(5)转运蛋白,(6)酶,(7)蛋白激酶,(8)细胞抗原和(9)病原体。所提出的方法将从化学化学相同,化学化学连接和化学蛋白质连接中收集的数据相结合,以将药物分配给九个靶群中的每一个。应用于从基准数据集构建的训练数据集的jackknife测试,提供了87.45%的总体正确的预测率,而通过随机选择来自基准数据集的10%的样本来构建的测试数据集的87.79%。这些预测率远高于随机猜测所实现的11.11%。这些有希望的结果表明,该方法可以成为识别药物目标组的有用工具。本文是题为:计算蛋白质组学,系统生物学和临床意义的特殊问题的一部分。嘉宾编辑:Yudong Cai。

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