A Two-Step Approach for Clustering Proteins based on Protein Interaction Profile.

Pengjun Pei, Aidong Zhang
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引用次数: 14

Abstract

High-throughput methods for detecting protein-protein interactions (PPI) have given researchers an initial global picture of protein interactions on a genomic scale. The huge data sets generated by such experiments pose new challenges in data analysis. Though clustering methods have been successfully applied in many areas in bioinformatics, many clustering algorithms cannot be readily applied on protein interaction data sets. One main problem is that the similarity between two proteins cannot be easily defined. This paper proposes a probabilistic model to define the similarity based on conditional probabilities. We then propose a two-step method for estimating the similarity between two proteins based on protein interaction profile. In the first step, the model is trained with proteins with known annotation. Based on this model, similarities are calculated in the second step. Experiments show that our method improves performance.

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基于蛋白质相互作用谱的两步聚类方法。
检测蛋白质-蛋白质相互作用(PPI)的高通量方法为研究人员提供了基因组尺度上蛋白质相互作用的初步全局图像。这些实验产生的庞大数据集对数据分析提出了新的挑战。虽然聚类方法已经成功地应用于生物信息学的许多领域,但许多聚类算法并不能很容易地应用于蛋白质相互作用数据集。一个主要问题是两种蛋白质之间的相似性不能轻易定义。本文提出了一个基于条件概率的概率模型来定义相似度。然后,我们提出了一种基于蛋白质相互作用谱估计两种蛋白质之间相似性的两步方法。第一步,使用已知标注的蛋白质对模型进行训练。基于该模型,第二步计算相似度。实验表明,该方法提高了性能。
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