Ma Yuanyuan, Liu Lifang, Chen Qianjun, Ma Yingjun
School of Computer and Information Engineering, Anyang Normal University, Anyang, China.
School of Education, Anyang Normal University, Anyang, China.
Front Microbiol. 2021 Apr 1;12:650366. doi: 10.3389/fmicb.2021.650366. eCollection 2021.
Metabolites are closely related to human disease. The interaction between metabolites and drugs has drawn increasing attention in the field of pharmacomicrobiomics. However, only a small portion of the drug-metabolite interactions were experimentally observed due to the fact that experimental validation is labor-intensive, costly, and time-consuming. Although a few computational approaches have been proposed to predict latent associations for various bipartite networks, such as miRNA-disease, drug-target interaction networks, and so on, to our best knowledge the associations between drugs and metabolites have not been reported on a large scale. In this study, we propose a novel algorithm, namely inductive logistic matrix factorization (ILMF) to predict the latent associations between drugs and metabolites. Specifically, the proposed ILMF integrates drug-drug interaction, metabolite-metabolite interaction, and drug-metabolite interaction into this framework, to model the probability that a drug would interact with a metabolite. Moreover, we exploit inductive matrix completion to guide the learning of projection matrices and that depend on the low-dimensional feature representation matrices of drugs and metabolites: and . These two matrices can be obtained by fusing multiple data sources. Thus, and can be viewed as drug-specific and metabolite-specific latent representations, different from classical LMF. Furthermore, we utilize the Vicus spectral matrix that reveals the refined local geometrical structure inherent in the original data to encode the relationships between drugs and metabolites. Extensive experiments are conducted on a manually curated "DrugMetaboliteAtlas" dataset. The experimental results show that ILMF can achieve competitive performance compared with other state-of-the-art approaches, which demonstrates its effectiveness in predicting potential drug-metabolite associations.
代谢物与人类疾病密切相关。代谢物与药物之间的相互作用在药物微生物组学领域越来越受到关注。然而,由于实验验证需要耗费大量人力、成本高且耗时,只有一小部分药物 - 代谢物相互作用是通过实验观察到的。尽管已经提出了一些计算方法来预测各种二分网络中的潜在关联,如miRNA - 疾病、药物 - 靶点相互作用网络等,但据我们所知,药物与代谢物之间的关联尚未大规模报道。在本研究中,我们提出了一种新算法,即归纳逻辑矩阵分解(ILMF)来预测药物与代谢物之间的潜在关联。具体而言,所提出的ILMF将药物 - 药物相互作用、代谢物 - 代谢物相互作用和药物 - 代谢物相互作用整合到该框架中,以模拟药物与代谢物相互作用的概率。此外,我们利用归纳矩阵补全来指导投影矩阵 和 的学习,这两个投影矩阵依赖于药物和代谢物的低维特征表示矩阵: 和 。这两个矩阵可以通过融合多个数据源获得。因此, 和 可以被视为特定于药物和特定于代谢物的潜在表示,这与经典的矩阵分解不同。此外,我们利用揭示原始数据中固有精细局部几何结构的Vicus谱矩阵来编码药物与代谢物之间的关系。我们在一个人工整理的“药物代谢物图谱”数据集上进行了广泛的实验。实验结果表明,与其他现有最先进的方法相比,ILMF可以实现具有竞争力的性能,这证明了其在预测潜在药物 - 代谢物关联方面的有效性。