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Ensemble non-negative matrix factorization methods for clustering proteinprotein interactions

机译:整合非负矩阵分解方法以聚类蛋白质蛋白质相互作用

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Motivation: When working with large-scale protein interaction data, an important analysis task is the assignment of pairs of proteins to groups that correspond to higher order assemblies. Previously a common approach to this problem has been to apply standard hierarchical clustering methods to identify such a groups. Here we propose a new algorithm for aggregating a diverse collection of matrix factorizations to produce a more informative clustering, which takes the form of a soft hierarchy of clusters.Results: We apply the proposed Ensemble non-negative matrix factorization (NMF) algorithm to a high-quality assembly of binary protein interactions derived from two proteome-wide studies in yeast. Our experimental evaluation demonstrates that the algorithm lends itself to discovering small localized structures in this data, which correspond to known functional groupings of complexes. In addition, we show that the algorithm also supports the assignment of putative functions for previously uncharacterized proteins, for instance the protein YNR024W, which may be an uncharacterized component of the exosome.
机译:动机:处理大规模蛋白质相互作用数据时,一项重要的分析任务是将蛋白质对分配给对应于更高顺序装配的组。以前,解决此问题的常用方法是应用标准的层次聚类方法来识别此类组。在这里,我们提出了一种新算法,用于聚合矩阵分解的各种集合以产生更具信息性的聚类,该聚类采用集群的软层次结构的形式。高质量蛋白质组装的蛋白质相互作用,来源于酵母中两个蛋白质组的研究。我们的实验评估表明,该算法有助于发现该数据中的小型局部结构,这些结构对应于已知的复合物功能组。此外,我们表明该算法还支持先前未表征的蛋白质(例如蛋白质YNR024W)的推定功能分配,该蛋白质可能是外泌体的未表征成分。

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