Liu Wei, Deng Xiangcheng, Sun Xingen, Lu Xu, Chen Xing
IEEE J Biomed Health Inform. 2025 Mar 31;PP. doi: 10.1109/JBHI.2025.3555581.
Predicting potential microbe-drug associations (MDA) can help study pathogenesis, expedite pharmaceutical innovation, and enhance targeted therapeutics. Given the time and labor intensity of traditional biological experiments, an increasing number of computational approaches are being employed to predict MDA. The method based on graph embedding is one of the most widely used. However, most of these methods only consider node embedding or graph structure information in isolation, which leads to restricted predictive accuracy. In this work, we propose a method called exploring microbe-drug association prediction via multi-attribute dual-decoder graph autoencoder (MDGAEMDA). Specifically, a heterogeneous network containing microbe similarity, drug similarity, and known associations is constructed. Second, to enrich the node information, the multi-attribute features are obtained by importing the topological information of microbe and drug. Then, two heterogeneous networks constructed by the graph masking strategy are input into dual-decoder graph autoencoder that contains one encoder and two decoders (node decoder and structure decoder) to learn both node embedding and graph structure information. Finally, two low-dimensional features are spliced into the features of MDA pairs and predicted by random forest. The model was compared with multiple advanced methods using public datasets. The experimental outcomes showed that our model significantly outperformed other methods. The case study of widely used drugs demonstrated the reliability of the proposed method to predict MDA.
预测潜在的微生物-药物关联(MDA)有助于研究发病机制、加速药物创新并加强靶向治疗。鉴于传统生物学实验的时间和劳动强度,越来越多的计算方法被用于预测MDA。基于图嵌入的方法是使用最广泛的方法之一。然而,这些方法大多只孤立地考虑节点嵌入或图结构信息,这导致预测准确性受限。在这项工作中,我们提出了一种名为通过多属性双解码器图自动编码器探索微生物-药物关联预测(MDGAEMDA)的方法。具体来说,构建了一个包含微生物相似性、药物相似性和已知关联的异质网络。其次,为了丰富节点信息,通过导入微生物和药物的拓扑信息来获得多属性特征。然后,将通过图掩码策略构建的两个异质网络输入到包含一个编码器和两个解码器(节点解码器和结构解码器)的双解码器图自动编码器中,以学习节点嵌入和图结构信息。最后,将两个低维特征拼接成MDA对的特征,并通过随机森林进行预测。使用公共数据集将该模型与多种先进方法进行了比较。实验结果表明,我们的模型明显优于其他方法。对广泛使用药物的案例研究证明了所提出方法预测MDA的可靠性。