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Predicting the topology of transmembrane helical proteins using mean burial propensity and a hidden-Markov-model-based method

机译:使用平均埋藏倾向和基于隐马尔可夫模型的方法预测跨膜螺旋蛋白的拓扑

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摘要

Helices in membrane spanning regions are more tightly packed than the helices in soluble proteins. Thus, we introduce a method that uses a simple scale of burial propensity and a new algorithm to predict transmembrane helical (TMH) segments and a positive-inside rule to predict amino-terminal orientation. The method (the topology predictor of transmembrane helical proteins using mean burial propensity [THUMBUP]) correctly predicted the topology of 55 of 73 proteins (or 75%) with known three-dimensional structures (the 3D helix database). This level of accuracy can be reached by MEMSAT 1.8 (a 200-parameter model-recognition method) and a new HMM-based method (a 111-parameter hidden Markov model, UMDHMMTMHP) if they were retrained with the 73-protein database. Thus, a method based on a physiochemical property can provide topology prediction as accurate as those methods based on more complicated statistical models and learning algorithms for the proteins with accurately known structures. Commonly used HMM-based methods and MEMSAT 1.8 were trained with a combination of the partial 3D helix database and a 1D helix database of TMH proteins in which topology information were obtained by gene fusion and other experimental techniques. These methods provide a significantly poorer prediction for the topology of TMH proteins in the 3D helix database. This suggests that the 1D helix database, because of its inaccuracy, should be avoided as either a training or testing database. A Web server of THUMBUP and UMDHMMTMHP is established for academic users at . The 3D helix database is also available from the same Web site.
机译:跨膜区域中的螺旋比可溶性蛋白质中的螺旋更紧密地堆积。因此,我们介绍了一种方法,该方法使用简单的掩埋倾向量表和新算法来预测跨膜螺旋(TMH)段,并使用正内规则来预测氨基末端取向。该方法(使用平均埋藏倾向[THUMBUP]预测跨膜螺旋蛋白的拓扑)可以正确预测具有已知三维结构(3D螺旋数据库)的73种蛋白中的55种(占75%)的拓扑。如果对它们进行了重新训练,则可以通过MEMSAT 1.8(200参数模型识别方法)和新的基于HMM的方法(111参数隐藏马尔可夫模型,UMDHMM TMHP )达到这种精度水平包含73个蛋白质的数据库。因此,基于理化性质的方法可以提供与基于更复杂的统计模型和具有精确已知结构的蛋白质的学习算法的方法一样准确的拓扑预测。结合部分3D螺旋数据库和TMH蛋白的1D螺旋数据库,对常用的基于HMM的方法和MEMSAT 1.8进行了训练,在TMH蛋白中,通过基因融合和其他实验技术获得了拓扑信息。这些方法对3D螺旋数据库中TMH蛋白质的拓扑结构的预测要差得多。这表明由于一维螺旋数据库的不准确性,应避免将其作为培训或测试数据库。为的学术用户建立了THUMBUP和UMDHMM TMHP 的Web服务器。也可以从同一网站上获得3D螺旋数据库。

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