利用基于多源特征的方法预测 circRNA 与药物敏感性之间的潜在关联。

IF 5.3
Shuaidong Yin, Peng Xu, Yefeng Jiang, Xin Yang, Ye Lin, Manyu Zheng, Jinpeng Hu, Qi Zhao
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引用次数: 0

摘要

环状 RNA(circRNA)是一种独特的非编码 RNA 分子,与传统的线性 RNA 相比,它具有更长的半衰期、更高的保存度和固有的稳固性。大量研究表明,circRNA 的表达对细胞药物敏感性和治疗效果有着深远的影响。由于传统的生物学研究方法耗时长、成本高,因此迫切需要创建高效的计算技术来预测 circRNA 与药物敏感性之间的潜在关联。在这项工作中,我们引入了一种名为 SNMGCDA 的新型深度学习模型,旨在预测 circRNA 与药物敏感性之间的关系。SNMGCDA 融合了多种相似性网络,可通过三种不同的计算方法推导出 circRNA 和药物的特征向量。首先,我们利用稀疏自动编码器提取药物特征。随后,应用非负矩阵因式分解(NMF),根据循环 RNA 和药物的共同特征识别它们之间的关系。此外,还采用了多头图注意网络来捕捉 circRNAs 的特征。从这三个独立的部分获取特征后,我们将它们组合在一起,为每个 circRNA 和药物集群形成一个统一的包容性特征向量。最后,将相关特征向量和标签输入多层感知器(MLP)进行预测。通过 5 倍交叉验证(5-fold CV)和 10 倍交叉验证(10-fold CV)获得的实验结果表明,SNMGCDA 的性能优于其他五种最先进的方法。此外,大多数案例研究主要证实了 SNMGCDA 新发现的相关性,从而强调了它在预测 circRNA 与药物之间潜在关系方面的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the potential associations between circRNA and drug sensitivity using a multisource feature-based approach

The unique non-coding RNA molecule known as circular RNA (circRNA) is distinguished from conventional linear RNA by having a longer half-life, greater degree of conservation and inherent solidity. Extensive research has demonstrated the profound impact of circRNA expression on cellular drug sensitivity and therapeutic efficacy. There is an immediate need for the creation of efficient computational techniques to anticipate the potential correlations between circRNA and drug sensitivity, as classical biological research approaches are time-consuming and costly. In this work, we introduce a novel deep learning model called SNMGCDA, which aims to forecast the relationships between circRNA and drug sensitivity. SNMGCDA incorporates a diverse range of similarity networks, enabling the derivation of feature vectors for circRNAs and drugs using three distinct calculation methods. First, we utilize a sparse autoencoder for the extraction of drug characteristics. Subsequently, the application of non-negative matrix factorization (NMF) enables the identification of relationships between circRNAs and drugs based on their shared features. Additionally, the multi-head graph attention network is employed to capture the characteristics of circRNAs. After acquiring the characteristics from these three separate components, we combine them to form a unified and inclusive feature vector for each cluster of circRNA and drug. Finally, the relevant feature vectors and labels are inputted into a multilayer perceptron (MLP) to make predictions. The outcomes of the experiment, obtained through 5-fold cross-validation (5-fold CV) and 10-fold cross-validation (10-fold CV), demonstrate SNMGCDA outperforms five other state-of-art methods in terms of performance. Additionally, the majority of case studies have predominantly confirmed newly discovered correlations by SNMGCDA, thereby emphasizing its reliability in predicting potential relationships between circRNAs and drugs.

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来源期刊
CiteScore
11.50
自引率
0.00%
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期刊介绍: The Journal of Cellular and Molecular Medicine serves as a bridge between physiology and cellular medicine, as well as molecular biology and molecular therapeutics. With a 20-year history, the journal adopts an interdisciplinary approach to showcase innovative discoveries. It publishes research aimed at advancing the collective understanding of the cellular and molecular mechanisms underlying diseases. The journal emphasizes translational studies that translate this knowledge into therapeutic strategies. Being fully open access, the journal is accessible to all readers.
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