Detecting protein complexes from noisy protein interaction data

Dmitry Efimov, Nazar Zaki, Jose Berengueres
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引用次数: 7

Abstract

High-throughput experimental techniques have made available large datasets of experimentally detected protein-protein interactions. However, experimentally determined protein complexes datasets are not exhaustive nor reliable. A protein complex plays a key role in disease development. Therefore, the identification and characterization of protein complexes involved is crucial to the understanding of the molecular events under normal and abnormal physiological conditions. In this paper, we propose a novel graph mining algorithm to identify protein complexes. The algorithm first checks the quality of the interaction data, then predicts protein complexes based on the concept of weighted clustering coefficient. To demonstrate the effectiveness of our proposed method, we present experimental results on yeast protein interaction data. The level of accuracy achieved is a strong argument in favor of the proposed method. Novel protein complexes were also predicted to assist biologists in their search for protein complexes. The datasets and programs are freely available from http://faculty.uaeu.ac.ae/nzaki/PE-WCC.htm.
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从嘈杂的蛋白质相互作用数据中检测蛋白质复合物
高通量实验技术使实验检测到的蛋白质相互作用的大数据集成为可能。然而,实验确定的蛋白质复合物数据集并不详尽也不可靠。一种蛋白质复合物在疾病发展中起着关键作用。因此,蛋白质复合物的鉴定和表征对于了解正常和异常生理条件下的分子事件至关重要。在本文中,我们提出了一种新的图挖掘算法来识别蛋白质复合物。该算法首先检查相互作用数据的质量,然后基于加权聚类系数的概念预测蛋白质复合物。为了证明我们提出的方法的有效性,我们给出了酵母蛋白相互作用数据的实验结果。所达到的精度水平是支持所提出方法的有力论据。新的蛋白质复合物也被预测有助于生物学家寻找蛋白质复合物。数据集和程序可从http://faculty.uaeu.ac.ae/nzaki/PE-WCC.htm免费获得。
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