Abstract
Protein subcellular localization is a novel and promising area and is defined as searching for the specific location of proteins inside the cell, such as in the nucleus, in the cytoplasm or on the cell membrane. With the rapid development of next-generation sequencing technology, more and more new protein sequences have been continuously discovered. It is no longer sufficient to merely use traditional wet experimental methods to predict the subcellular localization of these new proteins. Therefore, it is urgent to develop high-throughput computational methods to achieve quick and precise protein subcellular localization predictions. This review summarizes the development of prediction methods for protein subcellular localization over the past decades, expounds on the application of various machine learning methods in this field, and compares the properties and performance of various well-known predictors. The narrative of this review mainly revolves around three main types of methods, namely, the sequence-based methods, the knowledge-based methods, and the fusion methods. A special focus is on the gene ontology (GO)-based methods and the PLoc series methods. Finally, this review looks forward to the future development directions of protein subcellular localization prediction.
Publisher
Bentham Science Publishers Ltd.
Subject
Health Informatics,Biomedical Engineering,Computer Science (miscellaneous)
Reference76 articles.
1. Alberts B, Johnson A, Lewis J, Raff M, Roberts K, Walter P, et al.
Molecular biology of the cell. New york: Garland science.
Classic textbook now in its 5th Edition
2002.
2. Bakheet TM, Doig AJ.
Properties and identification of human protein drug targets.
Bioinformatics
2009;
25
(4)
: 451-7.
3. Wrzeszczynski KO, Ofran Y, Rost B, Nair R, Liu J.
Automatic prediction of protein function.
Cell Mol Life Sci
2003;
60
(12)
: 2637-50.
4. Lim SD, Lee S, Choi WG, Yim WC, Cushman JC.
Laying the Foundation for Crassulacean Acid Metabolism (CAM) Biodesign: Expression of the C4 Metabolism Cycle Genes of CAM in Arabidopsis.
Front Plant Sci
2019;
10
: 101-1.
5. Peabody MA, Lau WYV, Hoad GR, et al.
PSORTm: a bacterial and archaeal protein subcellular localization prediction tool for metagenomics data.
Bioinformatics
2020;
36
(10)
: 3043-8.
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