Chen Xing, Yan Chenggang Clarence, Zhang Xiaotian, Zhang Xu, Dai Feng, Yin Jian, Zhang Yongdong
Brief Bioinform. 2016 Jul;17(4):696-712. doi: 10.1093/bib/bbv066. Epub 2015 Aug 17.
Identification of drug-target interactions is an important process in drug discovery. Although high-throughput screening and other biological assays are becoming available, experimental methods for drug-target interaction identification remain to be extremely costly, time-consuming and challenging even nowadays. Therefore, various computational models have been developed to predict potential drug-target associations on a large scale. In this review, databases and web servers involved in drug-target identification and drug discovery are summarized. In addition, we mainly introduced some state-of-the-art computational models for drug-target interactions prediction, including network-based method, machine learning-based method and so on. Specially, for the machine learning-based method, much attention was paid to supervised and semi-supervised models, which have essential difference in the adoption of negative samples. Although significant improvements for drug-target interaction prediction have been obtained by many effective computational models, both network-based and machine learning-based methods have their disadvantages, respectively. Furthermore, we discuss the future directions of the network-based drug discovery and network approach for personalized drug discovery based on personalized medicine, genome sequencing, tumor clone-based network and cancer hallmark-based network. Finally, we discussed the new evaluation validation framework and the formulation of drug-target interactions prediction problem by more realistic regression formulation based on quantitative bioactivity data.
药物-靶点相互作用的识别是药物研发中的一个重要过程。尽管高通量筛选和其他生物学检测方法日益普及,但即使在当今,用于识别药物-靶点相互作用的实验方法仍然极其昂贵、耗时且具有挑战性。因此,人们开发了各种计算模型来大规模预测潜在的药物-靶点关联。在这篇综述中,总结了参与药物-靶点识别和药物研发的数据库及网络服务器。此外,我们主要介绍了一些用于药物-靶点相互作用预测的前沿计算模型,包括基于网络的方法、基于机器学习的方法等。特别地,对于基于机器学习的方法,重点关注了监督和半监督模型,它们在负样本的采用上存在本质差异。尽管许多有效的计算模型在药物-靶点相互作用预测方面取得了显著进展,但基于网络和基于机器学习的方法分别都有其缺点。此外,我们讨论了基于网络的药物研发的未来方向以及基于个性化医学、基因组测序、肿瘤克隆网络和癌症特征网络的个性化药物研发的网络方法。最后,我们基于定量生物活性数据,通过更现实的回归公式讨论了新的评估验证框架以及药物-靶点相互作用预测问题的公式化。