Department of Computer and Data Sciences, Case Western Reserve University, Cleveland, Ohio, United States of America.
Genomic Medicine Institute, Lerner Research Institute, Cleveland Clinic, Cleveland, Ohio, United States of America.
PLoS Comput Biol. 2020 Jul 15;16(7):e1008040. doi: 10.1371/journal.pcbi.1008040. eCollection 2020 Jul.
Computational drug repositioning and drug-target prediction have become essential tasks in the early stage of drug discovery. In previous studies, these two tasks have often been considered separately. However, the entities studied in these two tasks (i.e., drugs, targets, and diseases) are inherently related. On one hand, drugs interact with targets in cells to modulate target activities, which in turn alter biological pathways to promote healthy functions and to treat diseases. On the other hand, both drug repositioning and drug-target prediction involve the same drug feature space, which naturally connects these two problems and the two domains (diseases and targets). By using the wisdom of the crowds, it is possible to transfer knowledge from one of the domains to the other. The existence of relationships among drug-target-disease motivates us to jointly consider drug repositioning and drug-target prediction in drug discovery. In this paper, we present a novel approach called iDrug, which seamlessly integrates drug repositioning and drug-target prediction into one coherent model via cross-network embedding. In particular, we provide a principled way to transfer knowledge from these two domains and to enhance prediction performance for both tasks. Using real-world datasets, we demonstrate that iDrug achieves superior performance on both learning tasks compared to several state-of-the-art approaches. Our code and datasets are available at: https://github.com/Case-esaC/iDrug.
计算药物重定位和药物靶点预测已成为药物发现早期的重要任务。在以前的研究中,这两个任务通常是分开考虑的。然而,这两个任务中研究的实体(即药物、靶点和疾病)本质上是相关的。一方面,药物在细胞内与靶点相互作用,调节靶点活性,从而改变生物途径,促进健康功能并治疗疾病。另一方面,药物重定位和药物靶点预测都涉及到相同的药物特征空间,这自然连接了这两个问题和两个领域(疾病和靶点)。通过利用大众的智慧,有可能将知识从一个领域转移到另一个领域。药物-靶点-疾病之间的关系促使我们在药物发现中联合考虑药物重定位和药物靶点预测。在本文中,我们提出了一种名为 iDrug 的新方法,该方法通过交叉网络嵌入将药物重定位和药物靶点预测无缝集成到一个连贯的模型中。特别是,我们提供了一种从这两个领域转移知识并增强两个任务预测性能的原则方法。使用真实数据集,我们证明了 iDrug 在这两个学习任务上的性能均优于几种最先进的方法。我们的代码和数据集可在:https://github.com/Case-esaC/iDrug 获得。