GAM-MDR:使用基于随机路径屏蔽的图自动编码器探测 miRNA-耐药性。

IF 2.5 3区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Briefings in Functional Genomics Pub Date : 2024-07-19 DOI:10.1093/bfgp/elae005
Zhecheng Zhou, Zhenya Du, Xin Jiang, Linlin Zhuo, Yixin Xu, Xiangzheng Fu, Mingzhe Liu, Quan Zou
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引用次数: 0

摘要

微小核糖核酸(miRNA)遍布于生物细胞中,在调节众多靶基因的表达方面发挥着关键作用。以 miRNA 为中心的疗法正在成为一种前景广阔的疾病治疗策略,旨在通过调节异常的 miRNA 表达来干预疾病的进展。准确预测 miRNA 耐药性(MDR)对于 miRNA 疗法的成功至关重要。基于深度学习的计算模型在预测潜在 MDR 方面表现出色。然而,数据采集过程中的错误可能会影响其有效性,导致节点表示不准确。为了应对这一挑战,我们引入了 GAM-MDR 模型,该模型将图自动编码器(GAE)与随机路径掩蔽技术相结合,以精确预测潜在的 MDR。GAM-MDR 模型的可靠性和有效性主要体现在两个方面。首先,它能有效提取 miRNA 药物网络中 miRNA 和药物节点的表征。其次,我们设计的随机路径掩蔽策略能有效重建网络中的关键路径,从而降低了噪声数据的不利影响。据我们所知,这是首次将随机路径屏蔽策略集成到 GAE 中来推断 MDR。我们的方法在公共数据集上进行了多次验证,并取得了令人满意的结果。我们相信,我们的模型能为 miRNA 治疗策略提供有价值的见解,并加深对 miRNA 调控机制的理解。我们的数据和代码可在 GitHub:https://github.com/ZZCrazy00/GAM-MDR 上公开获取。
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GAM-MDR: probing miRNA-drug resistance using a graph autoencoder based on random path masking.

MicroRNAs (miRNAs) are found ubiquitously in biological cells and play a pivotal role in regulating the expression of numerous target genes. Therapies centered around miRNAs are emerging as a promising strategy for disease treatment, aiming to intervene in disease progression by modulating abnormal miRNA expressions. The accurate prediction of miRNA-drug resistance (MDR) is crucial for the success of miRNA therapies. Computational models based on deep learning have demonstrated exceptional performance in predicting potential MDRs. However, their effectiveness can be compromised by errors in the data acquisition process, leading to inaccurate node representations. To address this challenge, we introduce the GAM-MDR model, which combines the graph autoencoder (GAE) with random path masking techniques to precisely predict potential MDRs. The reliability and effectiveness of the GAM-MDR model are mainly reflected in two aspects. Firstly, it efficiently extracts the representations of miRNA and drug nodes in the miRNA-drug network. Secondly, our designed random path masking strategy efficiently reconstructs critical paths in the network, thereby reducing the adverse impact of noisy data. To our knowledge, this is the first time that a random path masking strategy has been integrated into a GAE to infer MDRs. Our method was subjected to multiple validations on public datasets and yielded promising results. We are optimistic that our model could offer valuable insights for miRNA therapeutic strategies and deepen the understanding of the regulatory mechanisms of miRNAs. Our data and code are publicly available at GitHub:https://github.com/ZZCrazy00/GAM-MDR.

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来源期刊
Briefings in Functional Genomics
Briefings in Functional Genomics BIOTECHNOLOGY & APPLIED MICROBIOLOGY-GENETICS & HEREDITY
CiteScore
6.30
自引率
2.50%
发文量
37
审稿时长
6-12 weeks
期刊介绍: Briefings in Functional Genomics publishes high quality peer reviewed articles that focus on the use, development or exploitation of genomic approaches, and their application to all areas of biological research. As well as exploring thematic areas where these techniques and protocols are being used, articles review the impact that these approaches have had, or are likely to have, on their field. Subjects covered by the Journal include but are not restricted to: the identification and functional characterisation of coding and non-coding features in genomes, microarray technologies, gene expression profiling, next generation sequencing, pharmacogenomics, phenomics, SNP technologies, transgenic systems, mutation screens and genotyping. Articles range in scope and depth from the introductory level to specific details of protocols and analyses, encompassing bacterial, fungal, plant, animal and human data. The editorial board welcome the submission of review articles for publication. Essential criteria for the publication of papers is that they do not contain primary data, and that they are high quality, clearly written review articles which provide a balanced, highly informative and up to date perspective to researchers in the field of functional genomics.
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