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Large-Scale Prediction of Drug Targets Based on Local and Global Consistency of Chemical-Chemical Networks

机译:基于化学-化学网络局部和全局一致性的药物靶标大规模预测

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摘要

It is crucial to identify the molecular targets of a compound during the course of the new drug discovery and drug development. Due to the complexity of biological systems, finding drug targets by biological experiments is very tedious and expensive. In the paper, we used chemical-chemical interactions in the STITCH database to construct a network of drug-drug association. Based on the network, a learning method keeping local and global consistency was presented to infer drug targets. We achieved an accuracy of 57.75% in the first order prediction using leave-one-out cross validation, which was higher than the accuracy of 53.77% achieved by the local neighbor model. We manually validated 27 absent drug targets in the cross-validation using drug-target interactions from other databases. Applying the presented method to large-scale prediction of unknown targets, we manually confirmed 14 pairs of drug-target interactions among the newly predicted drug targets. These results suggested that the presented method was a promising tool for large-scale identification of drug targets.
机译:在新药开发和药物开发过程中,确定化合物的分子靶标至关重要。由于生物系统的复杂性,通过生物实验寻找药物靶标非常繁琐且昂贵。在本文中,我们使用了STITCH数据库中的化学-化学相互作用来构建药物-药物关联网络。在网络的基础上,提出了一种保持局部和全局一致性的学习方法来推断药物靶标。我们使用留一法交叉验证在一阶预测中实现了57.75%的准确性,高于本地邻居模型所达到的53.77%的准确性。我们使用来自其他数据库的药物-靶标相互作用,在交叉验证中手动验证了27种缺失的药物靶标。将提出的方法应用于未知目标的大规模预测,我们手动确认了新预测的药物目标之间的14对药物-目标相互作用。这些结果表明,所提出的方法是用于大规模鉴定药物靶标的有前途的工具。

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