Zhang Ping, Wang Zilin, Sun Weicheng, Xu Jinsheng, Zhang Weihan, Wu Kun, Wong Leon, Li Li
Hubei Key Laboratory of Agricultural Bioinformatics, College of Informatics, Huazhong Agricultural University, Wuhan 430070, China.
Department of Biochemistry, University of California Riverside, Riverside, California 92521, United States.
ACS Omega. 2023 Jul 21;8(30):27386-27397. doi: 10.1021/acsomega.3c02763. eCollection 2023 Aug 1.
Identifying noncoding RNAs (ncRNAs)-drug resistance association computationally would have a marked effect on understanding ncRNA molecular function and drug target mechanisms and alleviating the screening cost of corresponding biological wet experiments. Although graph neural network-based methods have been developed and facilitated the detection of ncRNAs related to drug resistance, it remains a challenge to explore a highly trusty ncRNA-drug resistance association prediction framework, due to inevitable noise edges originating from the batch effect and experimental errors. Herein, we proposed a framework, referred to as RDRGSE (RDR association prediction by using graph skeleton extraction and attentional feature fusion), for detecting ncRNA-drug resistance association. Specifically, starting with the construction of the original ncRNA-drug resistance association as a bipartite graph, RDRGSE took advantage of a bi-view skeleton extraction strategy to obtain two types of skeleton views, followed by a graph neural network-based estimator for iteratively optimizing skeleton views aimed at learning high-quality ncRNA-drug resistance edge embedding and optimal graph skeleton structure, jointly. Then, RDRGSE adopted adaptive attentional feature fusion to obtain final edge embedding and identified potential RDRAs under an end-to-end pattern. Comprehensive experiments were conducted, and experimental results indicated the significant advantage of a skeleton structure for ncRNA-drug resistance association discovery. Compared with state-of-the-art approaches, RDRGSE improved the prediction performance by 6.7% in terms of AUC and 6.1% in terms of AUPR. Also, ablation-like analysis and independent case studies corroborated RDRGSE generalization ability and robustness. Overall, RDRGSE provides a powerful computational method for ncRNA-drug resistance association prediction, which can also serve as a screening tool for drug resistance biomarkers.
通过计算识别非编码RNA(ncRNA)与耐药性的关联,将对理解ncRNA分子功能和药物靶点机制以及降低相应生物学湿实验的筛选成本产生显著影响。尽管基于图神经网络的方法已经得到发展,并促进了与耐药性相关的ncRNA的检测,但由于批次效应和实验误差不可避免地产生噪声边,探索一个高度可靠的ncRNA-耐药性关联预测框架仍然是一个挑战。在此,我们提出了一个名为RDRGSE(利用图骨架提取和注意力特征融合进行RDR关联预测)的框架,用于检测ncRNA-耐药性关联。具体而言,RDRGSE从构建原始的ncRNA-耐药性关联二分图开始,利用双视角骨架提取策略获得两种类型的骨架视图,然后是基于图神经网络的估计器,用于迭代优化骨架视图,旨在联合学习高质量的ncRNA-耐药性边嵌入和最优的图骨架结构。然后,RDRGSE采用自适应注意力特征融合来获得最终的边嵌入,并以端到端的模式识别潜在的RDRAs。进行了全面的实验,实验结果表明骨架结构在ncRNA-耐药性关联发现方面具有显著优势。与现有方法相比,RDRGSE在AUC方面将预测性能提高了6.7%,在AUPR方面提高了6.1%。此外,类似消融分析和独立案例研究证实了RDRGSE的泛化能力和鲁棒性。总体而言,RDRGSE为ncRNA-耐药性关联预测提供了一种强大的计算方法,也可作为耐药性生物标志物的筛选工具。