利用智能邻域方法改进蛋白质相互作用网络对蛋白质功能的预测

Sovan Saha, Piyali Chatterjee, Subhadip Basu, M. Kundu, M. Nasipuri
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引用次数: 11

摘要

蛋白质负责生物体的所有生物活动。随着不同生物基因组测序计划的出现,大量的DNA和蛋白质序列数据是可用的,但在大多数情况下,它们的生物学功能仍未得到注释。蛋白质功能预测是后基因组时代最具挑战性的问题。利用序列同源性、系统发育谱、基因表达数据和未注释蛋白的功能可以进行预测。近年来,利用Yeast2Hybrid实验等高通量技术构建的大型相互作用网络也被用于蛋白质功能的预测。基于蛋白质相互作用网络中蛋白质的功能与其邻居相似的概念,提出了两种利用邻域特性从蛋白质相互作用网络中预测蛋白质功能的方法。第一种方法采用邻域法,第二种方法是一种智能技术,利用启发式知识寻找密集连接区域,以提高预测精度。方法一的总体匹配率为95.8%,方法二的15个官能团的总体匹配率为97.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving prediction of protein function from protein interaction network using intelligent neighborhood approach
Proteins are responsible for all biological activities in a living object. With the advent of genome sequencing projects for different organisms, large amounts of DNA and protein sequence data is available, whereas their biological function is still un-annotated in the most of the cases. Predicting protein function is the most challenging problem in post-genomic era. Using sequence homology, phylogenetic profiles, gene expression data, and function of un-annotated protein can be predicted. Recently, the large interaction networks constructed from high throughput techniques like Yeast2Hybrid experiments are also used in prediction of protein function. Based on the concept that a protein performs similar function like its neighbor in protein Interaction network, two methods are proposed to predict protein function from protein interaction network using neighborhood properties. The first method uses neighborhood approach and second one is an intelligent technique which applies heuristic knowledge to find densely connected regions for better prediction accuracy. The overall match rate achieved in method-I is 95.8% and in method-II, it is 97.8% over 15 functional groups.
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