DeepWalk-aware graph attention networks with CNN for circRNA-drug sensitivity association identification.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-19 DOI:10.1093/bfgp/elad053
Guanghui Li, Youjun Li, Cheng Liang, Jiawei Luo
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Abstract

Circular RNAs (circRNAs) are a class of noncoding RNA molecules that are widely found in cells. Recent studies have revealed the significant role played by circRNAs in human health and disease treatment. Several restrictions are encountered because forecasting prospective circRNAs and medication sensitivity connections through biological research is not only time-consuming and expensive but also incredibly ineffective. Consequently, the development of a novel computational method that enhances both the efficiency and accuracy of predicting the associations between circRNAs and drug sensitivities is urgently needed. Here, we present DGATCCDA, a computational method based on deep learning, for circRNA-drug sensitivity association identification. In DGATCCDA, we first construct multimodal networks from the original feature information of circRNAs and drugs. After that, we adopt DeepWalk-aware graph attention networks to sufficiently extract feature information from the multimodal networks to obtain the embedding representation of nodes. Specifically, we combine DeepWalk and graph attention network to form DeepWalk-aware graph attention networks, which can effectively capture the global and local information of graph structures. The features extracted from the multimodal networks are fused by layer attention, and eventually, the inner product approach is used to construct the association matrix of circRNAs and drugs for prediction. The ultimate experimental results obtained under 5-fold cross-validation settings show that the average area under the receiver operating characteristic curve value of DGATCCDA reaches 91.18%, which is better than those of the five current state-of-the-art calculation methods. We further guide a case study, and the excellent obtained results also show that DGATCCDA is an effective computational method for exploring latent circRNA-drug sensitivity associations.

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深度漫步感知图注意网络与 CNN 用于 circRNA-药物敏感性关联识别。
环状 RNA(circRNA)是一类广泛存在于细胞中的非编码 RNA 分子。最新研究表明,环状 RNA 在人类健康和疾病治疗中发挥着重要作用。由于通过生物学研究预测潜在的 circRNA 和药物敏感性联系不仅耗时费钱,而且效果极差,因此遇到了一些限制。因此,迫切需要开发一种新型计算方法,以提高预测 circRNA 与药物敏感性之间关联的效率和准确性。在此,我们介绍一种基于深度学习的计算方法--DGATCCDA,用于circRNA-药物敏感性关联鉴定。在 DGATCCDA 中,我们首先根据 circRNA 和药物的原始特征信息构建多模态网络。然后,我们采用 DeepWalk 感知图注意网络,从多模态网络中充分提取特征信息,得到节点的嵌入表示。具体来说,我们将 DeepWalk 和图注意网络结合起来,形成了 DeepWalk 感知图注意网络,它能有效捕捉图结构的全局和局部信息。从多模态网络中提取的特征通过层注意进行融合,最终利用内积法构建出 circRNA 与药物的关联矩阵,用于预测。5 倍交叉验证设置下的最终实验结果表明,DGATCCDA 的接收者工作特征曲线下面积平均值达到 91.18%,优于目前最先进的五种计算方法。我们还进一步指导了一项案例研究,其优异的结果也表明,DGATCCDA 是一种探索潜在 circRNA 与药物敏感性关联的有效计算方法。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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