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A novel network-based computational method to predict protein phosphorylation on tyrosine sites

机译:一种基于网络的新型计算方法,可预测酪氨酸位点上的蛋白质磷酸化

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摘要

Phosphorylation plays a great role in regulating a variety of cellular processes and the identification of tyrosine phosphorylation sites is fundamental for understanding the post-translational modification (PTM) regulation processes. Although a lot of computational methods have been developed, most of them only concern local sequence information and few studies focus on the tyrosine sites with in situ PTM information, which refers to different types of PTM occurring on the same modification site. In this study, by constructing the site-modification network that effciently incorporates in situ PTM information, we introduce a novel network-based computational method, site-modification network-based inference (SMNBI) to predict tyrosine phosphorylation. In order to verify the effectiveness of the proposed method, we compare it with other network-based computational methods. The results clearly show the superior performance of SMNBI. Besides, we extensively compare SMNBI with other sequence-based methods including SVM and Bayesian decision theory. The evaluation demonstrates the power of site-modification network in predicting tyrosine phosphorylation.
机译:磷酸化在调节各种细胞过程中起着重要作用,酪氨酸磷酸化位点的鉴定对于理解翻译后修饰(PTM)调节过程至关重要。尽管已经开发了许多计算方法,但是它们中的大多数仅涉及局部序列信息,并且很少有研究集中在具有原位PTM信息的酪氨酸位点,后者是指在同一修饰位点上发生的不同类型的PTM。在这项研究中,通过构建有效结合原位PTM信息的站点修饰网络,我们引入了一种基于网络的新颖计算方法,即基于站点修饰网络的推理(SMNBI)来预测酪氨酸磷酸化。为了验证所提方法的有效性,我们将其与其他基于网络的计算方法进行了比较。结果清楚地显示了SMNBI的优越性能。此外,我们将SMNBI与其他基于序列的方法(包括SVM和贝叶斯决策理论)进行了广泛的比较。该评估证明了位点修饰网络在预测酪氨酸磷酸化中的作用。

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