利用脱溶能和界面性质预测蛋白质-蛋白质相互作用

L. Rueda, Sridip Banerjee, Md. Mominul Aziz, Mohammad Raza
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引用次数: 16

摘要

理解和分类蛋白质-蛋白质相互作用(PPI)的一个重要方面是分析它们的界面,以区分瞬时复合物和专性复合物。我们提出了一种分类方法来区分这两种类型的复合物。我们的方法有两个重要方面。首先,我们使用了界面中存在的残基的脱溶能——氨基酸和原子类型,这是分类器的输入特征。找到数据的主成分,然后通过线性降维(LDR)方法进行分类。其次,我们研究了这些相互作用的各种界面性质。从蛋白质的四级结构分析出发,将理化性质作为分类器的输入特征。从每个复合体中提取各种特征,并通过不同的线性降维(LDR)方法进行分类。在瞬态和专性蛋白质复合物的标准基准上的结果表明:(i)脱溶能比溶剂可及性和守恒性等更好地区分,(ii)所提出的方法优于先前使用支持向量机的基于溶剂可及面积的方法。
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Protein-protein interaction prediction using desolvation energies and interface properties
An important aspect in understanding and classifying protein-protein interactions (PPI) is to analyze their interfaces in order to distinguish between transient and obligate complexes. We propose a classification approach to discriminate between these two types of complexes. Our approach has two important aspects. First, we have used desolvation energies — amino acid and atom type — of the residues present in the interface, which are the input features of the classifiers. Principal components of the data were found and then the classification is performed via linear dimensionality reduction (LDR) methods. Second, we have investigated various interface properties of these interactions. From the analysis of protein quaternary structures, physicochemical properties are treated as the input features of the classifiers. Various features are extracted from each complex, and the classification is performed via different linear dimensionality reduction (LDR) methods. The results on standard benchmarks of transient and obligate protein complexes show that (i) desolvation energies are better discriminants than solvent accessibility and conservation properties, among others, and (ii) the proposed approach outperforms previous solvent accessible area based approaches using support vector machines.
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