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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Protein function prediction from protein-protein interaction network using gene ontology based neighborhood analysis and physico-chemical features
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Protein function prediction from protein-protein interaction network using gene ontology based neighborhood analysis and physico-chemical features

机译:蛋白质功能预测来自蛋白质 - 蛋白质相互作用网络的基于邻域分析和物理化学特征

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Protein Function Prediction from Protein-Protein Interaction Network (PPIN) and physico-chemical features using the Gene Ontology (GO) classification are indeed very useful for assigning biological or biochemical functions to a protein. They also lead to the identification of those significant proteins which are responsible for the generation of various diseases whose drugs are still yet to be discovered. So, the prediction of GO functional terms from PPIN and sequence is an important field of study. In this work, we have proposed a methodology, Multi Label Protein Function Prediction (ML_PFP) which is based on Neighborhood analysis empowered with physico-chemical features of constituent amino acids to predict the functional group of unannotated protein. A protein does not perform functions in isolation rather it performs functions in a group by interacting with others. So a protein is involved in many functions or, in other words, may be associated with multiple functional groups or labels or GO terms. Though functional group of other known interacting partner protein and its physico-chemical features provide useful information, assignment of multiple labels to unannotated protein is a very challenging task. Here, we have taken Homo sapiens or Human PPIN as well as Saccharomyces cerevisiae or yeast PPIN along with their GO terms to predict functional groups or GO terms of unannotated proteins. This work has become very challenging as both Human and Yeast protein dataset are voluminous and complex in nature and multi-label functional groups assignment has also added a new dimension to this challenge. Our algorithm has been observed to achieve a better performance in Cellular Function, Molecular Function and Biological Process of both yeast and human network when compared with the other existing state-of-the-art methodologies which will be discussed in detail in the results section.
机译:使用基因本体(GO)分类的蛋白质 - 蛋白质相互作用网络(PPIN)和物理化学特征的蛋白质功能预测确实非常有用,用于将生物或生物化学功能分配给蛋白质。他们还导致这些重要蛋白质的鉴定,这些蛋白质负责产生药物尚未被发现的各种疾病。因此,来自PPIN和序列的GO功能术语的预测是一个重要的研究领域。在这项工作中,我们提出了一种方法,多标签蛋白质功能预测(ML_PFP),其基于邻域分析,其具有赋予组成氨基酸的物理化学特征来预测未爆发蛋白的官能团。蛋白质不能以隔离执行功能,而是通过与他人进行交互来执行组中的功能。因此,蛋白质涉及许多功能,或者换句话说,可以与多个官能团或标签或术语相关联。尽管其他已知的相互作用伴侣蛋白及其物理化学特征的功能组提供了有用的信息,但多个标签的分配给未经发布的蛋白质是一个非常具有挑战性的任务。在这里,我们服用HOMO SAPIENS或人PPIN以及酿酒酵母或酵母PPIN以及它们的GO术语来预测官能团或取消未经发布的蛋白质。这项工作已经变得非常具有挑战性,因为人类和酵母蛋白数据集是大量的,而且多标签功能群体分配也为这一挑战增加了新的维度。已经观察到我们的算法在与其他现有的现有方法相比,在酵母和人类网络的蜂窝功能,分子功能和生物过程中实现了更好的性能,这些方法将在结果部分详细讨论。

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