Division of Software, Yonsei University Mirae Campus, Wonju-si, 26493, Gangwon-do, Korea.
Division of Digital Healthcare, Yonsei University Mirae Campus, Wonju-si, 26493, Gangwon-do, Korea.
Sci Rep. 2024 May 2;14(1):10072. doi: 10.1038/s41598-024-60756-6.
Drug repositioning aims to identify new therapeutic indications for approved medications. Recently, the importance of computational drug repositioning has been highlighted because it can reduce the costs, development time, and risks compared to traditional drug discovery. Most approaches in this area use networks for systematic analysis. Inferring drug-disease associations is then defined as a link prediction problem in a heterogeneous network composed of drugs and diseases. In this article, we present a novel method of computational drug repositioning, named drug repositioning with attention walking (DRAW). DRAW proceeds as follows: first, a subgraph enclosing the target link for prediction is extracted. Second, a graph convolutional network captures the structural features of the labeled nodes in the subgraph. Third, the transition probabilities are computed using attention mechanisms and converted into random walk profiles. Finally, a multi-layer perceptron takes random walk profiles and predicts whether a target link exists. As an experiment, we constructed two heterogeneous networks with drug-drug similarities based on chemical structures and anatomical therapeutic chemical classification (ATC) codes. Using 10-fold cross-validation, DRAW achieved an area under the receiver operating characteristic (ROC) curve of 0.903 and outperformed state-of-the-art methods. Moreover, we demonstrated the results of case studies for selected drugs and diseases to further confirm the capability of DRAW to predict drug-disease associations.
药物重定位旨在为已批准的药物确定新的治疗适应症。最近,计算药物重定位的重要性得到了强调,因为与传统的药物发现相比,它可以降低成本、开发时间和风险。该领域的大多数方法都使用网络进行系统分析。推断药物-疾病关联随后被定义为由药物和疾病组成的异质网络中的链接预测问题。在本文中,我们提出了一种名为注意力游走药物重定位(DRAW)的新的计算药物重定位方法。DRAW 的步骤如下:首先,提取用于预测的目标链接的子图。其次,图卷积网络捕获子图中标记节点的结构特征。然后,使用注意力机制计算转移概率,并将其转换为随机游走图。最后,多层感知机采用随机游走图来预测目标链接是否存在。作为实验,我们基于化学结构和解剖治疗化学分类(ATC)代码构建了两个具有药物-药物相似性的异质网络。通过 10 折交叉验证,DRAW 获得了 0.903 的接收器操作特性(ROC)曲线下面积,优于最先进的方法。此外,我们展示了选定药物和疾病的案例研究结果,以进一步证实 DRAW 预测药物-疾病关联的能力。