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Sensitive and Specific Identification of Protein Complexes in 'Perturbed' Protein Interaction Networks from Noisy Pull-Down Data

机译:噪声下拉数据“扰动”蛋白质相互作用网络中蛋白质复合物的敏感和特异性鉴定

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High-throughput mass-spectrometry technology has enabled genome-scale discovery of protein-protein interactions. Yet, computational inference of protein interaction networks and their functional modules from large-scale pull-down data is challenging. Over-expressed or "sticky" bait is not specific; it generates numerous false positives. This "curse" of the technique is also its "blessing" - the sticky bait can pull-down interacting components of other complexes, thus increase sensitivity. Finding optimal trade-offs between coverage and accuracy requires tuning multiple "knobs," i.e., method parameters. Each selection leads to a putative network, where each network in the set of "perturbed" networks differs from the others by a few added or removed edges. Identification of functional modules in such networks is often based on graph-theoretical methods such as maximal clique enumeration. Due to the NP-hard nature of the latter, the number of tunings to explore is limited. This paper presents an efficient iterative framework for sensitive and specific detection of protein complexes from noisy protein interaction data.
机译:高通量质谱技术使能蛋白质蛋白质相互作用的基因组级发现。然而,来自大规模下拉数据的蛋白质相互作用网络及其功能模块的计算推断是具有挑战性的。过度表达或“粘性”诱饵不具体;它产生了许多误报。这种技术的“诅咒”也是它的“祝福” - 粘性诱饵可以拉下其他配合物的相互作用组分,从而提高敏感性。在覆盖和准确性之间找到最佳权衡需要调整多个“旋钮”,即方法参数。每个选择导致推定的网络,其中“扰动”网络集中的每个网络与其他网络不同,通过少数添加或移除的边缘不同。这种网络中的功能模块的识别通常基于图形理论方法,例如最大集团枚举。由于后者的NP难性,探索的调整次数是有限的。本文介绍了噪声蛋白质相互作用数据的敏感和特异性检测蛋白质复合物的有效迭代框架。

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