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首页> 外文期刊>BMC Genomics >Success: evolutionary and structural properties of amino acids prove effective for succinylation site prediction
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Success: evolutionary and structural properties of amino acids prove effective for succinylation site prediction

机译:成功:氨基酸的进化和结构特性证明对琥珀酰化位点预测有效

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Post-translational modification is considered an important biological mechanism with critical impact on the diversification of the proteome. Although a long list of such modifications has been studied, succinylation of lysine residues has recently attracted the interest of the scientific community. The experimental detection of succinylation sites is an expensive process, which consumes a lot of time and resources. Therefore, computational predictors of this covalent modification have emerged as a last resort to tackling lysine succinylation. In this paper, we propose a novel computational predictor called ‘Success’, which efficiently uses the structural and evolutionary information of amino acids for predicting succinylation sites. To do this, each lysine was described as a vector that combined the above information of surrounding amino acids. We then designed a support vector machine with a radial basis function kernel for discriminating between succinylated and non-succinylated residues. We finally compared the Success predictor with three state-of-the-art predictors in the literature. As a result, our proposed predictor showed a significant improvement over the compared predictors in statistical metrics, such as sensitivity (0.866), accuracy (0.838) and Matthews correlation coefficient (0.677) on a benchmark dataset. The proposed predictor effectively uses the structural and evolutionary information of the amino acids surrounding a lysine. The bigram feature extraction approach, while retaining the same number of features, facilitates a better description of lysines. A support vector machine with a radial basis function kernel was used to discriminate between modified and unmodified lysines. The aforementioned aspects make the Success predictor outperform three state-of-the-art predictors in succinylation detection.
机译:翻译后修饰被认为是重要的生物学机制,对蛋白质组的多样化具有至关重要的影响。尽管已经研究了许多这样的修饰,但是赖氨酸残基的琥珀酰化最近引起了科学界的兴趣。琥珀酰化位点的实验检测是一个昂贵的过程,它消耗大量的时间和资源。因此,这种共价修饰的计算预测因子已经成为解决赖氨酸琥珀酰化的最后手段。在本文中,我们提出了一种称为“成功”的新型计算预测变量,该预测变量可以有效地利用氨基酸的结构和进化信息来预测琥珀酰化位点。为此,将每个赖氨酸描述为结合了周围氨基酸的上述信息的载体。然后,我们设计了带有径向基函数核的支持向量机,用于区分琥珀酰化和非琥珀酰化的残基。最后,我们将成功预测变量与文献中的三个最新预测变量进行了比较。结果,我们提出的预测指标在统计​​指标上比比较的预测指标有显着提高,例如基准数据集上的敏感性(0.866),准确性(0.838)和Matthews相关系数(0.677)。所提出的预测因子有效地利用了赖氨酸周围氨基酸的结构和进化信息。在保留相同数量的特征的同时,二元特征提取方法有助于更好地描述赖氨酸。使用具有径向基函数核的支持向量机来区分修饰的赖氨酸和未修饰的赖氨酸。前述方面使成功预测变量在琥珀酰化检测中优于三个最新预测变量。

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