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MoRFpred, a computational tool for sequence-based prediction and characterization of short disorder-to-order transitioning binding regions in proteins

机译:MoRFpred,一种用于基于序列的预测和表征蛋白质中从无序到有序过渡结合区域的计算工具

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Motivation: Molecular recognition features (MoRFs) are short binding regions located within longer intrinsically disordered regions that bind to protein partners via disorder-to-order transitions. MoRFs are implicated in important processes including signaling and regulation. However, only a limited number of experimentally validated MoRFs is known, which motivates development of computational methods that predict MoRFs from protein chains. Results: We introduce a new MoRF predictor, MoRFpred, which identifies all MoRF types (alpha, beta, coil and complex). We develop a comprehensive dataset of annotated MoRFs to build and empirically compare our method. MoRFpred utilizes a novel design in which annotations generated by sequence alignment are fused with predictions generated by a Support Vector Machine (SVM), which uses a custom designed set of sequence-derived features. The features provide information about evolutionary profiles, selected physiochemical properties of amino acids, and predicted disorder, solvent accessibility and B-factors. Empirical evaluation on several datasets shows that MoRFpred outperforms related methods: alpha-MoRF-Pred that predicts alpha-MoRFs and ANCHOR which finds disordered regions that become ordered when bound to a globular partner. We show that our predicted (new) MoRF regions have non-random sequence similarity with native MoRFs. We use this observation along with the fact that predictions with higher probability are more accurate to identify putative MoRF regions. We also identify a few sequence-derived hallmarks of MoRFs. They are characterized by dips in the disorder predictions and higher hydrophobicity and stability when compared to adjacent (in the chain) residues.
机译:动机:分子识别特征(MoRF)是位于较长的固有无序区域内的短结合区域,该区域通过无序转换与蛋白质伴侣结合。 MoRF与重要过程有关,包括信号传导和调控。但是,只有有限数量的经过实验验证的MoRF已知,这刺激了从蛋白质链预测MoRF的计算方法的发展。结果:我们引入了一种新的MoRF预测因子MoRFpred,它可以识别所有MoRF类型(α,β,线圈和络合物)。我们开发了带注释的MoRF的综合数据集,以建立和经验比较我们的方法。 MoRFpred利用一种新颖的设计,在该设计中,将通过序列比对生成的注释与由支持向量机(SVM)生成的预测融合在一起,该向量使用定制设计的一组序列衍生特征。这些功能提供有关进化图,氨基酸的选定理化特性以及预测的疾病,溶剂可及性和B因子的信息。对几个数据集的经验评估表明,MoRFpred优于相关方法:α-MoRF-Pred(可预测alpha-MoRF)和ANCHOR(可找到与球形伴侣结合时变得有序的无序区域)。我们表明,我们预测的(新)MoRF区域与本地MoRF具有非随机序列相似性。我们将这一观察结果与具有较高概率的预测更准确地识别推定的MoRF区域这一事实结合起来。我们还确定了MoRF的一些序列标记。与相邻(链中)残基相比,它们的特点是无序预测下降,疏水性和稳定性更高。

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