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SucStruct:利用氨基酸的结构特性预测琥珀酰化赖氨酸残基

SucStruct: Prediction of succinylated lysine residues by using structural properties of amino acids.

作者信息

López Yosvany, Dehzangi Abdollah, Lal Sunil Pranit, Taherzadeh Ghazaleh, Michaelson Jacob, Sattar Abdul, Tsunoda Tatsuhiko, Sharma Alok

机构信息

Department of Medical Science Mathematics, Medical Research Institute, Tokyo Medical and Dental University, Tokyo, Japan; Laboratory for Medical Science Mathematics, RIKEN Center for Integrative Medical Sciences, Yokohama, Kanagawa, Japan.

Department of Psychiatry, Carver College of Medicine, University of Iowa, Iowa, USA.

出版信息

Anal Biochem. 2017 Jun 15;527:24-32. doi: 10.1016/j.ab.2017.03.021. Epub 2017 Mar 28.

Abstract

Post-Translational Modification (PTM) is a biological reaction which contributes to diversify the proteome. Despite many modifications with important roles in cellular activity, lysine succinylation has recently emerged as an important PTM mark. It alters the chemical structure of lysines, leading to remarkable changes in the structure and function of proteins. In contrast to the huge amount of proteins being sequenced in the post-genome era, the experimental detection of succinylated residues remains expensive, inefficient and time-consuming. Therefore, the development of computational tools for accurately predicting succinylated lysines is an urgent necessity. To date, several approaches have been proposed but their sensitivity has been reportedly poor. In this paper, we propose an approach that utilizes structural features of amino acids to improve lysine succinylation prediction. Succinylated and non-succinylated lysines were first retrieved from 670 proteins and characteristics such as accessible surface area, backbone torsion angles and local structure conformations were incorporated. We used the k-nearest neighbors cleaning treatment for dealing with class imbalance and designed a pruned decision tree for classification. Our predictor, referred to as SucStruct (Succinylation using Structural features), proved to significantly improve performance when compared to previous predictors, with sensitivity, accuracy and Mathew's correlation coefficient equal to 0.7334-0.7946, 0.7444-0.7608 and 0.4884-0.5240, respectively.

摘要

翻译后修饰(PTM)是一种有助于使蛋白质组多样化的生物反应。尽管许多修饰在细胞活动中具有重要作用,但赖氨酸琥珀酰化最近已成为一种重要的PTM标记。它改变了赖氨酸的化学结构,导致蛋白质的结构和功能发生显著变化。与后基因组时代大量被测序的蛋白质相比,琥珀酰化残基的实验检测仍然昂贵、低效且耗时。因此,开发用于准确预测琥珀酰化赖氨酸的计算工具迫在眉睫。迄今为止,已经提出了几种方法,但据报道它们的灵敏度较差。在本文中,我们提出了一种利用氨基酸结构特征来改进赖氨酸琥珀酰化预测的方法。首先从670种蛋白质中检索出琥珀酰化和非琥珀酰化的赖氨酸,并纳入了诸如可及表面积、主链扭转角和局部结构构象等特征。我们使用k近邻清理处理来处理类别不平衡问题,并设计了一个剪枝决策树用于分类。我们的预测器称为SucStruct(利用结构特征进行琥珀酰化预测),与先前的预测器相比,其性能有显著提高,灵敏度、准确率和马修相关系数分别为0.7334 - 0.7946、0.7444 - 0.7608和0.4884 - 0.5240。

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