机器学习在蛋白质亚细胞定位预测中的发展与进展

Q3 Computer Science Open Bioinformatics Journal Pub Date : 2022-10-06 DOI:10.2174/18750362-v15-e2208110
Le He, Xiyu Liu
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引用次数: 0

摘要

蛋白质亚细胞定位是一个新的和有前途的领域,它被定义为寻找蛋白质在细胞内的特定位置,如在细胞核、细胞质或细胞膜上。随着新一代测序技术的迅速发展,越来越多新的蛋白质序列被不断发现。仅仅用传统的湿式实验方法来预测这些新蛋白的亚细胞定位已经不够了。因此,迫切需要开发高通量的计算方法来实现快速准确的蛋白质亚细胞定位预测。本文综述了近几十年来蛋白质亚细胞定位预测方法的发展,阐述了各种机器学习方法在该领域的应用,并比较了各种知名预测方法的性质和性能。本文的叙述主要围绕三种主要的方法展开,即基于序列的方法、基于知识的方法和融合方法。特别关注的是基于基因本体(GO)的方法和PLoc系列方法。最后,对蛋白质亚细胞定位预测的未来发展方向进行了展望。
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The Development and Progress in Machine Learning for Protein Subcellular Localization Prediction
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.
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来源期刊
Open Bioinformatics Journal
Open Bioinformatics Journal Computer Science-Computer Science (miscellaneous)
CiteScore
2.40
自引率
0.00%
发文量
4
期刊介绍: The Open Bioinformatics Journal is an Open Access online journal, which publishes research articles, reviews/mini-reviews, letters, clinical trial studies and guest edited single topic issues in all areas of bioinformatics and computational biology. The coverage includes biomedicine, focusing on large data acquisition, analysis and curation, computational and statistical methods for the modeling and analysis of biological data, and descriptions of new algorithms and databases. The Open Bioinformatics Journal, a peer reviewed journal, is an important and reliable source of current information on the developments in the field. The emphasis will be on publishing quality articles rapidly and freely available worldwide.
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