Brief Bioinform. 2021 May 20;22(3). doi: 10.1093/bib/bbaa061.
Effective drugs are urgently needed to overcome human complex diseases. However, the research and development of novel drug would take long time and cost much money. Traditional drug discovery follows the rule of one drug-one target, while some studies have demonstrated that drugs generally perform their task by affecting related pathway rather than targeting single target. Thus, the new strategy of drug discovery, namely pathway-based drug discovery, have been proposed. Obviously, identifying associations between drugs and pathways plays a key role in the development of pathway-based drug discovery. Revealing the drug-pathway associations by experiment methods would take much time and cost. Therefore, some computational models were established to predict potential drug-pathway associations. In this review, we first introduced the background of drug and the concept of drug-pathway associations. Then, some publicly accessible databases and web servers about drug-pathway associations were listed. Next, we summarized some state-of-the-art computational methods in the past years for inferring drug-pathway associations and divided these methods into three classes, namely Bayesian spare factor-based, matrix decomposition-based and other machine learning methods. In addition, we introduced several evaluation strategies to estimate the predictive performance of various computational models. In the end, we discussed the advantages and limitations of existing computational methods and provided some suggestions about the future directions of the data collection and the calculation models development.
有效药物是克服人类复杂疾病的迫切需要。然而,新型药物的研发需要很长时间和大量资金。传统的药物发现遵循一种药物对应一个靶点的规则,而一些研究表明,药物通常通过影响相关途径而不是针对单个靶点来发挥作用。因此,提出了新的药物发现策略,即基于途径的药物发现。显然,识别药物与途径之间的关联在基于途径的药物发现的发展中起着关键作用。通过实验方法揭示药物-途径关联需要花费大量的时间和成本。因此,建立了一些计算模型来预测潜在的药物-途径关联。在这篇综述中,我们首先介绍了药物的背景和药物-途径关联的概念。然后,列出了一些关于药物-途径关联的公开可访问的数据库和网络服务器。接下来,我们总结了过去几年中用于推断药物-途径关联的一些最先进的计算方法,并将这些方法分为三类,即贝叶斯备用因子法、矩阵分解法和其他机器学习方法。此外,我们介绍了几种评估策略来评估各种计算模型的预测性能。最后,我们讨论了现有计算方法的优缺点,并对未来的数据收集和计算模型发展方向提出了一些建议。