A survey of computational intelligence techniques in protein function prediction.

International journal of proteomics Pub Date : 2014-01-01 Epub Date: 2014-12-11 DOI:10.1155/2014/845479
Arvind Kumar Tiwari, Rajeev Srivastava
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引用次数: 38

Abstract

During the past, there was a massive growth of knowledge of unknown proteins with the advancement of high throughput microarray technologies. Protein function prediction is the most challenging problem in bioinformatics. In the past, the homology based approaches were used to predict the protein function, but they failed when a new protein was different from the previous one. Therefore, to alleviate the problems associated with homology based traditional approaches, numerous computational intelligence techniques have been proposed in the recent past. This paper presents a state-of-the-art comprehensive review of various computational intelligence techniques for protein function predictions using sequence, structure, protein-protein interaction network, and gene expression data used in wide areas of applications such as prediction of DNA and RNA binding sites, subcellular localization, enzyme functions, signal peptides, catalytic residues, nuclear/G-protein coupled receptors, membrane proteins, and pathway analysis from gene expression datasets. This paper also summarizes the result obtained by many researchers to solve these problems by using computational intelligence techniques with appropriate datasets to improve the prediction performance. The summary shows that ensemble classifiers and integration of multiple heterogeneous data are useful for protein function prediction.

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蛋白质功能预测中的计算智能技术综述。
在过去,随着高通量微阵列技术的进步,未知蛋白质的知识大量增长。蛋白质功能预测是生物信息学中最具挑战性的问题。过去,基于同源性的方法用于预测蛋白质的功能,但当新蛋白质与前一个蛋白质不同时,它们就失败了。因此,为了减轻与基于同源性的传统方法相关的问题,近年来提出了许多计算智能技术。本文全面回顾了各种计算智能技术在蛋白质功能预测中的应用,这些技术使用序列、结构、蛋白-蛋白相互作用网络和基因表达数据,这些数据广泛应用于DNA和RNA结合位点的预测、亚细胞定位、酶功能、信号肽、催化残基、核/ g蛋白偶联受体、膜蛋白、以及基因表达数据集的通路分析。本文还总结了许多研究人员利用计算智能技术和适当的数据集来解决这些问题的结果,以提高预测性能。综上所述,集成分类器和多异构数据集成在蛋白质功能预测中是有用的。
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