MCHAN:基于多视角对比超图注意力网络的人类微生物-药物关联预测

IF 2.4 3区 生物学 Q3 BIOCHEMICAL RESEARCH METHODS
Guanghui Li, Ziyan Cao, Cheng Liang, Qiu Xiao, Jiawei Luo
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引用次数: 0

摘要

背景:复杂多样的微生物群落在人类健康中发挥着举足轻重的作用,并已成为新的药物靶点。探索药物与微生物之间的联系不仅能深入了解它们的作用机制,还能推动药物发现和再利用的进展。使用湿实验室实验来确定关联既费时又费力。因此,精确高效的计算方法可以有效提高微生物与药物之间关联识别的效率。目标:在本实验中,我们提出了一种新的深度学习模型--新的多视图比较超图注意网络(MCHAN)方法,用于人类微生物与药物的关联预测。方法:首先,我们融合多个相似性矩阵,得到一个融合的微生物和药物相似性网络。通过将图卷积网络与注意力机制相结合,我们从多个角度提取了关键信息。然后,我们根据上述融合数据构建两种网络拓扑结构。一种拓扑结合了超节点的概念,利用虚拟节点捕捉微生物和药物之间的隐含关系,从而构建超异构图。接下来,我们提出了一种交叉对比学习任务,有助于同时从两个角度指导图嵌入,而无需任何标签。通过这种方法,我们可以拉近具有相似特征和网络拓扑结构的节点,同时推开其他节点。最后,我们利用注意力机制合并 GCN 的输出,预测药物与微生物之间的关联。结果为了证实这种方法的有效性,我们在三个不同的数据集上进行了实验。结果表明,MCHAN 模型在性能上超越了其他方法。此外,案例研究提供了更多证据,证实了 MCHAN 模型始终如一的预测准确性。结论未来,MCHAN有望成为预测微生物群与药物之间潜在关联的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MCHAN: Prediction of Human Microbe-drug Associations Based on Multiview Contrastive Hypergraph Attention Network
Background: Complex and diverse microbial communities play a pivotal role in human health and have become a new drug target. Exploring the connections between drugs and microbes not only provides profound insights into their mechanisms but also drives progress in drug discovery and repurposing. The use of wet lab experiments to identify associations is time-consuming and laborious. Hence, the advancement of precise and efficient computational methods can effectively improve the efficiency of association identification between microorganisms and drugs. Objective: In this experiment, we propose a new deep learning model, a new multiview comparative hypergraph attention network (MCHAN) method for human microbe–drug association prediction. Methods: First, we fuse multiple similarity matrices to obtain a fused microbial and drug similarity network. By combining graph convolutional networks with attention mechanisms, we extract key information from multiple perspectives. Then, we construct two network topologies based on the above fused data. One topology incorporates the concept of hypernodes to capture implicit relationships between microbes and drugs using virtual nodes to construct a hyperheterogeneous graph. Next, we propose a cross-contrastive learning task that facilitates the simultaneous guidance of graph embeddings from both perspectives, without the need for any labels. This approach allows us to bring nodes with similar features and network topologies closer while pushing away other nodes. Finally, we employ attention mechanisms to merge the outputs of the GCN and predict the associations between drugs and microbes. Results: To confirm the effectiveness of this method, we conduct experiments on three distinct datasets. The results demonstrate that the MCHAN model surpasses other methods in terms of performance. Furthermore, case studies provide additional evidence confirming the consistent predictive accuracy of the MCHAN model. Conclusion: MCHAN is expected to become a valuable tool for predicting potential associations between microbiota and drugs in the future.
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来源期刊
Current Bioinformatics
Current Bioinformatics 生物-生化研究方法
CiteScore
6.60
自引率
2.50%
发文量
77
审稿时长
>12 weeks
期刊介绍: Current Bioinformatics aims to publish all the latest and outstanding developments in bioinformatics. Each issue contains a series of timely, in-depth/mini-reviews, research papers and guest edited thematic issues written by leaders in the field, covering a wide range of the integration of biology with computer and information science. The journal focuses on advances in computational molecular/structural biology, encompassing areas such as computing in biomedicine and genomics, computational proteomics and systems biology, and metabolic pathway engineering. Developments in these fields have direct implications on key issues related to health care, medicine, genetic disorders, development of agricultural products, renewable energy, environmental protection, etc.
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