Yan Jing, Friedrich Stefanie, Kurgan Lukasz
Brief Bioinform. 2016 Jan;17(1):88-105. doi: 10.1093/bib/bbv023. Epub 2015 May 1.
Motivated by the pressing need to characterize protein-DNA and protein-RNA interactions on large scale, we review a comprehensive set of 30 computational methods for high-throughput prediction of RNA- or DNA-binding residues from protein sequences. We summarize these predictors from several significant perspectives including their design, outputs and availability. We perform empirical assessment of methods that offer web servers using a new benchmark data set characterized by a more complete annotation that includes binding residues transferred from the same or similar proteins. We show that predictors of DNA-binding (RNA-binding) residues offer relatively strong predictive performance but they are unable to properly separate DNA- from RNA-binding residues. We design and empirically assess several types of consensuses and demonstrate that machine learning (ML)-based approaches provide improved predictive performance when compared with the individual predictors of DNA-binding residues or RNA-binding residues. We also formulate and execute first-of-its-kind study that targets combined prediction of DNA- and RNA-binding residues. We design and test three types of consensuses for this prediction and conclude that this novel approach that relies on ML design provides better predictive quality than individual predictors when tested on prediction of DNA- and RNA-binding residues individually. It also substantially improves discrimination between these two types of nucleic acids. Our results suggest that development of a new generation of predictors would benefit from using training data sets that combine both RNA- and DNA-binding proteins, designing new inputs that specifically target either DNA- or RNA-binding residues and pursuing combined prediction of DNA- and RNA-binding residues.
出于大规模表征蛋白质 - DNA和蛋白质 - RNA相互作用的迫切需求,我们综述了一套全面的30种计算方法,用于从蛋白质序列高通量预测RNA或DNA结合残基。我们从几个重要角度总结了这些预测器,包括它们的设计、输出和可用性。我们使用一个新的基准数据集对提供网络服务器的方法进行实证评估,该数据集的特点是注释更完整,包括从相同或相似蛋白质转移而来的结合残基。我们表明,DNA结合(RNA结合)残基的预测器具有相对较强的预测性能,但它们无法正确区分DNA结合残基和RNA结合残基。我们设计并实证评估了几种类型的共识方法,并证明与DNA结合残基或RNA结合残基的单个预测器相比,基于机器学习(ML)的方法具有更好的预测性能。我们还制定并执行了首个针对DNA和RNA结合残基联合预测的研究。我们为此预测设计并测试了三种类型的共识方法,并得出结论,这种依赖于ML设计的新方法在单独测试DNA和RNA结合残基的预测时,比单个预测器具有更好的预测质量。它还显著提高了这两种核酸之间的区分度。我们的结果表明,新一代预测器的开发将受益于使用结合了RNA和DNA结合蛋白的训练数据集,设计专门针对DNA或RNA结合残基的新输入,并追求DNA和RNA结合残基的联合预测。