Zhao Yanpeng, Wang Jingjing, Chang Fubin, Gong Weikang, Liu Yang, Li Chunhua
Faculty of Environmental and Life Sciences, Beijing University of Technology, Beijing 100124, China.
Brief Bioinform. 2023 Mar 19;24(2). doi: 10.1093/bib/bbad049.
Metal ion is an indispensable factor for the proper folding, structural stability and functioning of RNA molecules. However, it is very difficult for experimental methods to detect them in RNAs. With the increase of experimentally resolved RNA structures, it becomes possible to identify the metal ion-binding sites in RNA structures through in-silico methods. Here, we propose an approach called Metal3DRNA to identify the binding sites of the most common metal ions (Mg2+, Na+ and K+) in RNA structures by using a three-dimensional convolutional neural network model. The negative samples, screened out based on the analysis for binding surroundings of metal ions, are more like positive ones than the randomly selected ones, which are beneficial to a powerful predictor construction. The microenvironments of the spatial distributions of C, O, N and P atoms around a sample are extracted as features. Metal3DRNA shows a promising prediction power, generally surpassing the state-of-the-art methods FEATURE and MetalionRNA. Finally, utilizing the visualization method, we inspect the contributions of nucleotide atoms to the classification in several cases, which provides a visualization that helps to comprehend the model. The method will be helpful for RNA structure prediction and dynamics simulation study. Availability and implementation: The source code is available at https://github.com/ChunhuaLiLab/Metal3DRNA.
金属离子是RNA分子正确折叠、结构稳定性和功能发挥所不可或缺的因素。然而,实验方法很难检测RNA中的金属离子。随着实验解析的RNA结构数量的增加,通过计算机方法识别RNA结构中的金属离子结合位点成为可能。在此,我们提出一种名为Metal3DRNA的方法,通过使用三维卷积神经网络模型来识别RNA结构中最常见金属离子(Mg2+、Na+和K+)的结合位点。基于对金属离子结合环境的分析筛选出的负样本比随机选择的负样本更类似于正样本,这有利于构建强大的预测器。提取样本周围C、O、N和P原子空间分布的微环境作为特征。Metal3DRNA显示出有前景的预测能力,总体上超过了最先进的方法FEATURE和MetalionRNA。最后,利用可视化方法,我们在几种情况下考察了核苷酸原子对分类的贡献,这提供了有助于理解模型的可视化效果。该方法将有助于RNA结构预测和动力学模拟研究。可用性和实现方式:源代码可在https://github.com/ChunhuaLiLab/Metal3DRNA获取。