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Computational Prediction of MoRFs Short Disorder-to-order Transitioning Protein Binding Regions

机译:MoRFs短时无序过渡蛋白结合区的计算预测。

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摘要

Molecular recognition features (MoRFs) are short protein-binding regions that undergo disorder-to-order transitions (induced folding) upon binding protein partners. These regions are abundant in nature and can be predicted from protein sequences based on their distinctive sequence signatures. This first-of-its-kind survey covers 14 MoRF predictors and six related methods for the prediction of short protein-binding linear motifs, disordered protein-binding regions and semi-disordered regions. We show that the development of MoRF predictors has accelerated in the recent years. These predictors depend on machine learning-derived models that were generated using training datasets where MoRFs are annotated using putative disorder. Our analysis reveals that they generate accurate predictions. We identified eight methods that offer area under the ROC curve (AUC) ≥ 0.7 on experimentally-validated test datasets. We show that modern MoRF predictors accurately find experimentally annotated MoRFs even though they were trained using the putative disorder annotations. They are relatively highly-cited, particularly the methods available as webservers that on average secure three times more citations than methods without this option. MoRF predictions contribute to the experimental discovery of protein-protein interactions, annotation of protein functions and computational analysis of a variety of proteomes, protein families, and pathways. We outline future development and application directions for these tools, stressing the importance to develop novel tools that would target interactions of disordered regions with other types of partners.
机译:分子识别特征(MoRF)是短的蛋白质结合区域,在结合蛋白质伴侣时会经历从无序到有序的转变(诱导折叠)。这些区域性质丰富,可以根据其独特的序列特征从蛋白质序列进行预测。此项首次调查涵盖了14种MoRF预测因子和6种相关方法,用于预测短蛋白结合线性基序,无序蛋白结合区域和半无序区域。我们表明,最近几年MoRF预测变量的发展已经加速。这些预测变量取决于使用训练数据集生成的机器学习衍生的模型,其中使用假定的障碍对MoRF进行注释。我们的分析表明,它们可以生成准确的预测。我们确定了八种方法,这些方法在经过实验验证的测试数据集上可提供ROC曲线(AUC)≥0.7的面积。我们表明,即使现代MoRF预测变量是使用假定的疾病注释进行训练的,现代MoRF预测变量也可以准确找到实验注释的MoRF。它们被引用得相对较高,特别是作为Web服务器可用的方法,与没有此选项的方法相比,它们平均可确保三倍的引用率。 MoRF预测有助于蛋白质间相互作用的实验发现,蛋白质功能注释和各种蛋白质组,蛋白质家族和途径的计算分析。我们概述了这些工具的未来开发和应用方向,强调开发新颖的工具的重要性,该工具将针对无序区域与其他类型的合作伙伴之间的相互作用。

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