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Modelling interaction sites in protein domains with interaction profile hidden Markov models

机译:使用交互轮廓隐藏的马尔可夫模型在蛋白质域中建模交互位点

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Motivation: Due to the growing number of completely sequenced genomes, functional annotation of proteins becomes a more and more important issue. Here, we describe a method for the prediction of sites within protein domains, which are part of protein-ligand interactions. As recently demonstrated, these sites are not trivial to detect because of a varying degree of conservation of their location and type within a domain family. Results: The developed method for the prediction of protein-ligand interaction sites is based on a newly defined interaction profile hidden Markov model (ipHMM) topology that takes structural and sequence data into account. It is based on a homology search via a posterior decoding algorithm that yields probabilities for interacting sequence positions and inherits the efficiency and the power of the profile hidden Markov model (pHMM) methodology. The algorithm enhances the quality of interaction site predictions and is a suitable tool for large scale studies, which was already demonstrated for pHMMs.
机译:动机:由于完全测序的基因组数目不断增加,蛋白质的功能注释成为一个越来越重要的问题。在这里,我们描述了一种预测蛋白质结构域内位点的方法,这是蛋白质-配体相互作用的一部分。正如最近证明的那样,由于在域家族中其位置和类型的保守程度不同,因此检测这些位置并非易事。结果:开发的预测蛋白质-配体相互作用位点的方法基于新定义的相互作用分布图隐马尔可夫模型(ipHMM)拓扑,其中考虑了结构和序列数据。它基于通过后解码算法进行的同源性搜索,该算法可产生与序列位置相互作用的概率,并继承了轮廓隐马尔可夫模型(pHMM)方法的效率和功能。该算法提高了交互位点预测的质量,并且是用于大规模研究的合适工具,已经针对pHMMs进行了演示。

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