计算机科学
图嵌入
图形
特征学习
机器学习
嵌入
人工神经网络
可解释性
相似性(几何)
人工智能
代表(政治)
理论计算机科学
政治学
政治
图像(数学)
法学
作者
Bei Zhu,Haoyang Yu,Bing-Xue Du,Jian‐Yu Shi
出处
期刊:Methods
[Elsevier]
日期:2024-02-01
卷期号:222: 51-56
标识
DOI:10.1016/j.ymeth.2023.12.005
摘要
The interaction between human microbes and drugs can significantly impact human physiological functions. It is crucial to identify potential microbe-drug associations (MDAs) before drug administration. However, conventional biological experiments to predict MDAs are plagued by drawbacks such as time-consuming, high costs, and potential risks. On the contrary, computational approaches can speed up the screening of MDAs at a low cost. Most computational models usually use a drug similarity matrix as the initial feature representation of drugs and stack the graph neural network layers to extract the features of network nodes. However, different calculation methods result in distinct similarity matrices, and message passing in graph neural networks (GNNs) induces phenomena of over-smoothing and over-squashing, thereby impacting the performance of the model. To address these issues, we proposed a novel graph representation learning model, dual-modal graph learning for microbe-drug association prediction (DMGL-MDA). It comprises a dual-modal embedding module, a bipartite graph network embedding module, and a predictor module. To assess the performance of DMGL-MDA, we compared it against state-of-the-art methods using two benchmark datasets. Through cross-validation, we illustrated the superiority of DMGL-MDA. Furthermore, we conducted ablation experiments and case studies to validate the effective performance of the model.
科研通智能强力驱动
Strongly Powered by AbleSci AI