一种通过位点修饰网络预测蛋白磷酸化的新方法

Zijun Qin, Minghui Wang, Yujie Jiang, Xiaoyi Xu, Huanqing Feng, Ao Li
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引用次数: 0

摘要

蛋白磷酸化是最重要的翻译后修饰(PTMs)类型之一,参与多种细胞过程。由于许多磷酸化修饰与疾病相关并被用作生物标志物,因此对磷酸化位点的准确预测变得非常必要。目前许多计算方法都是基于序列信息建立预测模型。在本研究中,提出了位点修改网络(SMNet)剖面来提高预测性能,该剖面反映了原位ptm之间的信息。此外,采用了将SVM与特征选择相结合的两步算法。为了进一步验证该方法,我们将其与PPSP和GPS 3进行了比较。最后,结果表明SMNet谱有效地提高了磷酸化位点的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel method for predicting protein phosphorylation via site-modification network profiles
Protein phosphorylation, one of the most important types of post-translational modifications (PTMs), participates in multiple cellular processes. Accurate prediction on phosphorylaiton sites has become necessary, as many modifications are related to diseases and used as biomarkers. Currently a number of computational approaches only establish prediction models on sequence information. In this study, site-modification network (SMNet) profiles are proposed to enhance the prediction performance, which reflect information among in situ PTMs. In addition, a two-step algorithm that incorporates SVM with feature selection is adopted. To further demonstrate the method, we compare it with PPSP and GPS 3. 0, finally the results indicate that SMNet profiles effectively improve the performance on predicting phosphorylation sites.
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