McGuffin Liam J
School of Biological Sciences, University of Reading, Whiteknights, Reading RG6 6AS, UK.
Bioinformatics. 2008 Aug 15;24(16):1798-804. doi: 10.1093/bioinformatics/btn326. Epub 2008 Jun 25.
Intrinsic protein disorder is functionally implicated in numerous biological roles and is, therefore, ubiquitous in proteins from all three kingdoms of life. Determining the disordered regions in proteins presents a challenge for experimental methods and so recently there has been much focus on the development of improved predictive methods. In this article, a novel technique for disorder prediction, called DISOclust, is described, which is based on the analysis of multiple protein fold recognition models. The DISOclust method is rigorously benchmarked against the top.ve methods from the CASP7 experiment. In addition, the optimal consensus of the tested methods is determined and the added value from each method is quantified.
The DISOclust method is shown to add the most value to a simple consensus of methods, even in the absence of target sequence homology to known structures. A simple consensus of methods that includes DISOclust can significantly outperform all of the previous individual methods tested.
http://www.reading.ac.uk/bioinf/DISOclust/.
Supplementary data are available at http://www.reading.ac.uk/bioinf/DISOclust/suppl.pdf.
内在蛋白质无序在众多生物学功能中发挥作用,因此在生命三界的蛋白质中普遍存在。确定蛋白质中的无序区域对实验方法来说是一项挑战,所以最近人们非常关注改进预测方法的开发。本文描述了一种名为DISOclust的用于无序预测的新技术,它基于对多个蛋白质折叠识别模型的分析。DISOclust方法与来自CASP7实验的前五种方法进行了严格的基准测试。此外,确定了测试方法的最佳共识,并量化了每种方法的附加值。
即使在目标序列与已知结构没有同源性的情况下,DISOclust方法也显示出对简单方法共识增加了最大的价值。包含DISOclust的简单方法共识能够显著优于之前测试的所有单独方法。
http://www.reading.ac.uk/bioinf/DISOclust/。
补充数据可在http://www.reading.ac.uk/bioinf/DISOclust/suppl.pdf获取。