Identification of microbe-disease signed associations via multi-scale variational graph autoencoder based on signed message propagation.

IF 4.4 1区 生物学 Q1 BIOLOGY BMC Biology Pub Date : 2024-08-15 DOI:10.1186/s12915-024-01968-0
Huan Zhu, Hongxia Hao, Liang Yu
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Abstract

Background: Plenty of clinical and biomedical research has unequivocally highlighted the tremendous significance of the human microbiome in relation to human health. Identifying microbes associated with diseases is crucial for early disease diagnosis and advancing precision medicine.

Results: Considering that the information about changes in microbial quantities under fine-grained disease states helps to enhance a comprehensive understanding of the overall data distribution, this study introduces MSignVGAE, a framework for predicting microbe-disease sign associations using signed message propagation. MSignVGAE employs a graph variational autoencoder to model noisy signed association data and extends the multi-scale concept to enhance representation capabilities. A novel strategy for propagating signed message in signed networks addresses heterogeneity and consistency among nodes connected by signed edges. Additionally, we utilize the idea of denoising autoencoder to handle the noise in similarity feature information, which helps overcome biases in the fused similarity data. MSignVGAE represents microbe-disease associations as a heterogeneous graph using similarity information as node features. The multi-class classifier XGBoost is utilized to predict sign associations between diseases and microbes.

Conclusions: MSignVGAE achieves AUROC and AUPR values of 0.9742 and 0.9601, respectively. Case studies on three diseases demonstrate that MSignVGAE can effectively capture a comprehensive distribution of associations by leveraging signed information.

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通过基于签名信息传播的多尺度变异图自动编码器识别微生物与疾病的签名关联。
背景:大量临床和生物医学研究明确强调了人类微生物组对人类健康的重大意义。识别与疾病相关的微生物对于早期疾病诊断和推进精准医疗至关重要:考虑到细粒度疾病状态下微生物数量变化的信息有助于加强对整体数据分布的全面理解,本研究引入了 MSignVGAE,这是一种利用签名信息传播预测微生物与疾病征兆关联的框架。MSignVGAE 采用图变自动编码器对有噪声的签名关联数据建模,并扩展了多尺度概念以增强表示能力。在签名网络中传播签名信息的新策略解决了由签名边连接的节点之间的异质性和一致性问题。此外,我们还利用去噪自动编码器的思想来处理相似性特征信息中的噪声,这有助于克服融合相似性数据中的偏差。MSignVGAE 使用相似性信息作为节点特征,将微生物-疾病关联表示为异构图。利用多类分类器 XGBoost 预测疾病与微生物之间的标志关联:MSignVGAE的AUROC和AUPR值分别为0.9742和0.9601。对三种疾病的案例研究表明,MSignVGAE 可以利用符号信息有效捕捉关联的全面分布。
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来源期刊
BMC Biology
BMC Biology 生物-生物学
CiteScore
7.80
自引率
1.90%
发文量
260
审稿时长
3 months
期刊介绍: BMC Biology is a broad scope journal covering all areas of biology. Our content includes research articles, new methods and tools. BMC Biology also publishes reviews, Q&A, and commentaries.
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