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Computational methods for DNA-binding protein and binding residue prediction

机译:DNA结合蛋白和结合残基预测的计算方法

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摘要

Protein-DNA interactions are involved in many essential biological processes such as transcription, splicing, replication and DNA repair. It is of great value to identify DNA-binding proteins as well as their binding sites in order to study the mechanisms of these biological processes. A number of experimental methods have been developed for the identification of DNA-binding proteins, such as DNAase foot printing, EMSA, X-ray crystallography, NMR spectroscopy and CHIP-on-Chip. However, with the increasingly greater number of suspected protein-DNA interactions, identification by experimental methods is expensive, labor-intensive and time-consuming. Hence, in the past decades researchers have developed many computational approaches to predict in silico the interactions of proteins and DNA. Machine learning technology has been widely used and become dominant in this field. In this article, we focus on reviewing recent machine learning-based progresses in DNA-binding protein and binding residue prediction methods, the most commonly used features in these predictions, machine learning classifier comparison and selection, evaluation method comparison, and existing problems and future directions for the field.
机译:蛋白质-DNA相互作用涉及许多必不可少的生物学过程,例如转录,剪接,复制和DNA修复。鉴定DNA结合蛋白及其结合位点对研究这些生物学过程的机制具有重要价值。已开发出许多用于鉴定DNA结合蛋白的实验方法,例如DNAase足印,EMSA,X射线晶体学,NMR光谱和芯片上芯片。然而,随着怀疑的蛋白质-DNA相互作用的数量越来越多,通过实验方法进行鉴定是昂贵,费力和费时的。因此,在过去的几十年中,研究人员开发了许多计算方法来计算机模拟蛋白质和DNA的相互作用。机器学习技术已被广泛使用并在该领域占主导地位。在本文中,我们将重点介绍基于机器学习的DNA结合蛋白和结合残基预测方法的最新进展,这些预测中最常用的功能,机器学习分类器的比较和选择,评估方法的比较以及存在的问题和未来该领域的方向。

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