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Recent Progress in Machine Learning-Based Methods for Protein Fold Recognition

机译:基于机器学习的蛋白质折叠识别方法的最新进展

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摘要

Knowledge on protein folding has a profound impact on understanding the heterogeneity and molecular function of proteins, further facilitating drug design. Predicting the 3D structure (fold) of a protein is a key problem in molecular biology. Determination of the fold of a protein mainly relies on molecular experimental methods. With the development of next-generation sequencing techniques, the discovery of new protein sequences has been rapidly increasing. With such a great number of proteins, the use of experimental techniques to determine protein folding is extremely difficult because these techniques are time consuming and expensive. Thus, developing computational prediction methods that can automatically, rapidly, and accurately classify unknown protein sequences into specific fold categories is urgently needed. Computational recognition of protein folds has been a recent research hotspot in bioinformatics and computational biology. Many computational efforts have been made, generating a variety of computational prediction methods. In this review, we conduct a comprehensive survey of recent computational methods, especially machine learning-based methods, for protein fold recognition. This review is anticipated to assist researchers in their pursuit to systematically understand the computational recognition of protein folds.
机译:关于蛋白质折叠的知识对理解蛋白质的异质性和分子功能具有深远的影响,从而进一步促进了药物设计。预测蛋白质的3D结构(折叠)是分子生物学中的关键问题。蛋白质折叠的确定主要依靠分子实验方法。随着下一代测序技术的发展,新蛋白质序列的发现已迅速增加。对于如此大量的蛋白质,使用实验技术确定蛋白质折叠非常困难,因为这些技术既费时又昂贵。因此,迫切需要开发能够自动,快速和准确地将未知蛋白质序列分类为特定折叠类别的计算预测方法。蛋白质折叠的计算识别已成为生物信息学和计算生物学的最新研究热点。已经进行了许多计算工作,从而产生了各种计算预测方法。在这篇综述中,我们对蛋白质折叠识别的最新计算方法,特别是基于机器学习的方法进行了全面的调查。预期该评论将有助于研究人员系统地理解蛋白质折叠的计算识别。

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