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MGCNRF:基于多图卷积网络和随机森林的疾病相关 miRNA 预测。

MGCNRF: Prediction of Disease-Related miRNAs Based on Multiple Graph Convolutional Networks and Random Forest.

出版信息

IEEE Trans Neural Netw Learn Syst. 2024 Nov;35(11):15701-15709. doi: 10.1109/TNNLS.2023.3289182. Epub 2024 Oct 29.

DOI:10.1109/TNNLS.2023.3289182
PMID:37459265
Abstract

Increasing microRNAs (miRNAs) have been confirmed to be inextricably linked to various diseases, and the discovery of their associations has become a routine way of treating diseases. To overcome the time-consuming and laborious shortcoming of traditional experiments in verifying the associations of miRNAs and diseases (MDAs), a variety of computational methods have emerged. However, these methods still have many shortcomings in terms of predictive performance and accuracy. In this study, a model based on multiple graph convolutional networks and random forest (MGCNRF) was proposed for the prediction MDAs. Specifically, MGCNRF first mapped miRNA functional similarity and sequence similarity, disease semantic similarity and target similarity, and the known MDAs into four different two-layer heterogeneous networks. Second, MGCNRF applied four heterogeneous networks into four different layered attention graph convolutional networks (GCNs), respectively, to extract MDA embeddings. Finally, MGCNRF integrated the embeddings of every MDA into the features of the miRNA-disease pair and predicted potential MDAs through the random forest (RF). Fivefold cross-validation was applied to verify the prediction performance of MGCNRF, which outperforms the other seven state-of-the-art methods by area under curve. Furthermore, the accuracy and the case studies of different diseases further demonstrate the scientific rationale of MGCNRF. In conclusion, MGCNRF can serve as a scientific tool for predicting potential MDAs.

摘要

越来越多的微小 RNA(miRNA)被证实与各种疾病有着千丝万缕的联系,发现它们之间的关联已成为治疗疾病的常规方法。为了克服传统实验在验证 miRNA 和疾病关联(MDAs)方面耗时费力的缺点,出现了各种计算方法。然而,这些方法在预测性能和准确性方面仍然存在许多缺点。在这项研究中,提出了一种基于多图卷积网络和随机森林(MGCNRF)的模型,用于预测 MDAs。具体来说,MGCNRF 首先将 miRNA 功能相似性和序列相似性、疾病语义相似性和目标相似性以及已知的 MDAs 映射到四个不同的两层异质网络中。其次,MGCNRF 将四个异质网络分别应用于四个不同的分层注意图卷积网络(GCN)中,以提取 MDA 嵌入。最后,MGCNRF 将每个 MDA 的嵌入集成到 miRNA-疾病对的特征中,并通过随机森林(RF)预测潜在的 MDAs。五折交叉验证用于验证 MGCNRF 的预测性能,其曲线下面积优于其他七种最先进的方法。此外,不同疾病的准确性和案例研究进一步证明了 MGCNRF 的科学合理性。总之,MGCNRF 可以作为预测潜在 MDAs 的科学工具。

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