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Geometric De-noising of Protein-Protein Interaction Networks

机译:蛋白质-蛋白质相互作用网络的几何降噪

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摘要

Understanding complex networks of protein-protein interactions (PPIs) is one of the foremost challenges of the post-genomic era. Due to the recent advances in experimental bio-technology, including yeast-2-hybrid (Y2H), tandem affinity purification (TAP) and other high-throughput methods for protein-protein interaction (PPI) detection, huge amounts of PPI network data are becoming available. Of major concern, however, are the levels of noise and incompleteness. For example, for Y2H screens, it is thought that the false positive rate could be as high as 64%, and the false negative rate may range from 43% to 71%. TAP experiments are believed to have comparable levels of noise.We present a novel technique to assess the confidence levels of interactions in PPI networks obtained from experimental studies. We use it for predicting new interactions and thus for guiding future biological experiments. This technique is the first to utilize currently the best fitting network model for PPI networks, geometric graphs. Our approach achieves specificity of 85% and sensitivity of 90%. We use it to assign confidence scores to physical protein-protein interactions in the human PPI network downloaded from BioGRID. Using our approach, we predict 251 interactions in the human PPI network, a statistically significant fraction of which correspond to protein pairs sharing common GO terms. Moreover, we validate a statistically significant portion of our predicted interactions in the HPRD database and the newer release of BioGRID. The data and Matlab code implementing the methods are freely available from the web site: http://www.kuchaev.com/Denoising.
机译:了解蛋白质间相互作用(PPI)的复杂网络是后基因组时代的首要挑战之一。由于实验生物技术的最新进展,包括酵母2-杂交(Y2H),串联亲和纯化(TAP)和其他用于蛋白质-蛋白质相互作用(PPI)检测的高通量方法,因此产生了大量的PPI网络数据变得可用。但是,最主要的问题是噪声和不完整程度。例如,对于Y2H屏幕,认为误报率可能高达64%,并且误报率可以在43%至71%的范围内。 TAP实验被认为具有可比的噪声水平。我们提出了一种新颖的技术来评估从实验研究获得的PPI网络中相互作用的置信度。我们将其用于预测新的相互作用,从而指导未来的生物学实验。该技术是第一个将当前最适合的网络模型用于PPI网络,几何图的技术。我们的方法实现了85%的特异性和90%的敏感性。我们使用它为从BioGRID下载的人PPI网络中的物理蛋白质-蛋白质相互作用分配置信度得分。使用我们的方法,我们预测了人类PPI网络中的251个相互作用,其中统计学上显着的一部分对应于共享通用GO术语的蛋白质对。此外,我们在HPRD数据库和较新版本的BioGRID中验证了我们预测的相互作用的统计学显着部分。可从以下网站免费获得实现该方法的数据和Matlab代码:http://www.kuchaev.com/Denoising。

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