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A Network-Based Approach for Protein Functions Prediction Using Locally Linear Embedding

机译:一种基于网络的蛋白质功能预测方法,使用局部线性嵌入

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Inferring protein functions from different data sources is a challenging task in the post-genomic era, as a large number of crude protein structures from structural genomics project are now solved without their biochemical functions characterized. Recently, many different methods have been used to predict protein functions including those based on Protein-Protein Interaction (PPI), structure, sequence relationship, gene expression data, etc. Among these approaches, methods based on protein interaction data are very promising. In this paper, we studied a network-based method using locally linear embedding (LLE). LLE is a robust learning algorithm that manipulates dimensionality reduction, neighborhood-preserving embedding for high-dimensional data. We first embed both annotated and unannotated proteins in a low dimensional Euclidean space; then, we apply semi-supervised learning techniques to classify unannotated proteins into different functional groups. Finally, we made predictions to the unknown functional proteins in yeast. 5-fold cross validation is then applied to the GO terms to compare the performance of different approaches, and the proposed method performs significantly better than the others.
机译:从不同数据来源推断蛋白质功能是在后基因组时代的一个具有挑战性的任务,因为现在已经解决了来自结构基因组项目的大量粗蛋白质结构,而无需其生化功能。最近,许多不同的方法已经用于预测包括基于蛋白质 - 蛋白质相互作用(PPI),结构,序列关系,基因表达数据等的蛋白质功能。在这些方法中,基于蛋白质相互作用数据的方法非常有前途。在本文中,我们研究了一种基于网络的方法,使用局部线性嵌入(LLE)。 LLE是一种稳健的学习算法,可以操纵维护维度嵌入的高维数据。我们首先在低维欧几里德空间中嵌入有注释和未经发布的蛋白质;然后,我们应用半监督的学习技术,将未经发布的蛋白质分类为不同的官能团。最后,我们对酵母中未知的功能蛋白质进行了预测。然后将5倍交叉验证应用于GO术语以比较不同方法的性能,并且所提出的方法显着优于其他方法。

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