Computer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division, Computational Bioscience Research Center (CBRC), King Abdullah University of Science and Technology (KAUST), Thuwal, Saudi Arabia.
College of Computers and Information Technology, Taif University, Taif, Saudi Arabia.
Sci Rep. 2022 Mar 19;12(1):4751. doi: 10.1038/s41598-022-08787-9.
Drug-target interaction (DTI) prediction plays a crucial role in drug repositioning and virtual drug screening. Most DTI prediction methods cast the problem as a binary classification task to predict if interactions exist or as a regression task to predict continuous values that indicate a drug's ability to bind to a specific target. The regression-based methods provide insight beyond the binary relationship. However, most of these methods require the three-dimensional (3D) structural information of targets which are still not generally available to the targets. Despite this bottleneck, only a few methods address the drug-target binding affinity (DTBA) problem from a non-structure-based approach to avoid the 3D structure limitations. Here we propose Affinity2Vec, as a novel regression-based method that formulates the entire task as a graph-based problem. To develop this method, we constructed a weighted heterogeneous graph that integrates data from several sources, including drug-drug similarity, target-target similarity, and drug-target binding affinities. Affinity2Vec further combines several computational techniques from feature representation learning, graph mining, and machine learning to generate or extract features, build the model, and predict the binding affinity between the drug and the target with no 3D structural data. We conducted extensive experiments to evaluate and demonstrate the robustness and efficiency of the proposed method on benchmark datasets used in state-of-the-art non-structured-based drug-target binding affinity studies. Affinity2Vec showed superior and competitive results compared to the state-of-the-art methods based on several evaluation metrics, including mean squared error, rm2, concordance index, and area under the precision-recall curve.
药物-靶点相互作用(DTI)预测在药物重定位和虚拟药物筛选中起着至关重要的作用。大多数 DTI 预测方法将问题建模为二分类任务,以预测是否存在相互作用,或建模为回归任务,以预测连续值,指示药物与特定靶点结合的能力。基于回归的方法提供了超越二元关系的洞察力。然而,这些方法中的大多数都需要靶点的三维(3D)结构信息,但这些信息通常无法获得靶点的 3D 结构信息。尽管存在这种瓶颈,但只有少数方法从非结构基础方法解决药物-靶点结合亲和力(DTBA)问题,以避免 3D 结构的限制。在这里,我们提出了 Affinity2Vec,这是一种新颖的基于回归的方法,将整个任务表述为基于图的问题。为了开发这种方法,我们构建了一个加权异构图,该图集成了来自多个来源的数据,包括药物-药物相似性、靶点-靶点相似性和药物-靶点结合亲和力。Affinity2Vec 进一步结合了特征表示学习、图挖掘和机器学习等多种计算技术,以生成或提取特征、构建模型,并预测药物与靶点之间的结合亲和力,而无需 3D 结构数据。我们进行了广泛的实验,以评估和展示所提出的方法在最先进的非结构基础药物-靶点结合亲和力研究中使用的基准数据集上的稳健性和效率。与基于几个评估指标的最先进方法相比,包括均方误差、rm2、一致性指数和精度-召回曲线下的面积,Affinity2Vec 显示出优越和有竞争力的结果。