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Disorder Prediction Methods Their Applicability to Different Protein Targets and Their Usefulness for Guiding Experimental Studies

机译:疾病预测方法其对不同蛋白质靶标的适用性及其对指导实验研究的实用性

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摘要

The role and function of a given protein is dependent on its structure. In recent years, however, numerous studies have highlighted the importance of unstructured, or disordered regions in governing a protein’s function. Disordered proteins have been found to play important roles in pivotal cellular functions, such as DNA binding and signalling cascades. Studying proteins with extended disordered regions is often problematic as they can be challenging to express, purify and crystallise. This means that interpretable experimental data on protein disorder is hard to generate. As a result, predictive computational tools have been developed with the aim of predicting the level and location of disorder within a protein. Currently, over 60 prediction servers exist, utilizing different methods for classifying disorder and different training sets. Here we review several good performing, publicly available prediction methods, comparing their application and discussing how disorder prediction servers can be used to aid the experimental solution of protein structure. The use of disorder prediction methods allows us to adopt a more targeted approach to experimental studies by accurately identifying the boundaries of ordered protein domains so that they may be investigated separately, thereby increasing the likelihood of their successful experimental solution.
机译:给定蛋白质的作用和功能取决于其结构。但是,近年来,大量研究强调了非结构化或无序区域在控制蛋白质功能中的重要性。已经发现紊乱的蛋白质在关键的细胞功能中起重要作用,例如DNA结合和信号级联。研究具有扩展的无序区域的蛋白质通常是有问题的,因为它们可能难以表达,纯化和结晶。这意味着难以生成有关蛋白质异常的可解释实验数据。结果,已经开发了预测计算工具,其目的是预测蛋白质内疾病的水平和位置。当前,存在60多个预测服务器,它们使用不同的方法对疾病进行分类和不同的训练集。在这里,我们回顾了几种性能良好,公开可用的预测方法,比较了它们的应用,并讨论了无序预测服务器如何用于辅助蛋白质结构的实验解决方案。疾病预测方法的使用使我们能够通过准确识别有序蛋白质结构域的边界,从而采用更具针对性的方法进行实验研究,以便可以对它们进行单独研究,从而增加了其成功进行实验解决的可能性。

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