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Predicting protein-protein interactions based only on sequences information

机译:仅基于序列信息预测蛋白质间相互作用

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Protein-protein interactions (PPIs) are central to most biological processes. Although efforts have been devoted to the development of methodology for predicting PPIs and protein interaction networks, the application of most existing methods is limited because they need information about protein homology or the interaction marks of the protein partners. In the present work, we propose a method for PPI prediction using only the information of protein sequences. This method was developed based on a learning algorithm-support vector machine combined with a kernel function and a conjoint triad feature for describing amino acids. More than 16,000 diverse PPI pairs were used to construct the universal model. The prediction ability of our approach is better than that of other sequence-based PPI prediction methods because it is able to predict PPI networks. Different types of PPI networks have been effectively mapped with our method, suggesting that, even with only sequence information, this method could be applied to the exploration of networks for any newly discovered protein with unknown biological relativity. In addition, such supplementary experimental information can enhance the prediction ability of the method.
机译:蛋白质-蛋白质相互作用(PPI)是大多数生物过程的核心。尽管已致力于开发预测PPI和蛋白质相互作用网络的方法,但是大多数现有方法的应用受到限制,因为它们需要有关蛋白质同源性或蛋白质伴侣相互作用标记的信息。在目前的工作中,我们提出了一种仅使用蛋白质序列信息进行PPI预测的方法。该方法基于学习算法-支持向量机,结合核函数和联合三联体特征来描述氨基酸。超过16,000个不同的PPI对用于构建通用模型。我们的方法的预测能力优于其他基于序列的PPI预测方法,因为它能够预测PPI网络。我们的方法已有效地映射了不同类型的PPI网络,这表明,即使仅具有序列信息,该方法也可用于对生物学相关性未知的任何新发现蛋白质进行网络探索。另外,这样的补充实验信息可以增强该方法的预测能力。

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