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Incorporating multiple genomic features with the utilization of interacting domain patterns to improve the prediction of protein-protein interactions

机译:将多个基因组特征与相互作用的域模式结合使用,以改善对蛋白质-蛋白质相互作用的预测

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摘要

Protein-protein interaction (PPI) networks play an outstanding role in the organization of life. Parallel to the growth of experimental techniques on determining PPIs, the emergence of computational methods has greatly accelerated the time needed for the identification of PPIs on a wide genomic scale. Although experimental approaches have limitations that can be complemented by the computational methods, the results from computational methods still suffer from high false positive rates which contribute to the lack of solid PPI information. Our study introduces the PPI-Filter; a computational framework aimed at improving PPI prediction results. It is a post-prediction process which involves filtration, using information based on three different genomic features; (i) gene ontology annotation (GOA), (ii) homologous interactions and (iii) protein families (PFAM) domain interactions. In the study, we incorporated a protein function prediction method, based on interacting domain patterns, the protein function predictor or PFP (), for the purpose of aiding the GOA. The goal is to improve the robustness of predicted PPI pairs by removing the false positive pairs and sustaining as much true positive pairs as possible, thus achieving a high confidence level of PPI datasets. The PPI-Filter has been proven to be applicable based on the satisfactory results obtained using signal-to-noise ratio (SNR) and strength measurements that were applied on different computational PPI prediction methods.
机译:蛋白质-蛋白质相互作用(PPI)网络在生命的组织中起着重要作用。随着确定PPI的实验技术的发展,计算方法的出现大大加快了在广泛的基因组规模上鉴定PPI所需的时间。尽管实验方法具有可以由计算方法来补充的局限性,但是来自计算方法的结果仍然遭受较高的误报率,这导致缺乏可靠的PPI信息。我们的研究介绍了PPI过滤器;一个旨在改善PPI预测结果的计算框架。这是一个后预测过程,涉及过滤,使用基于三种不同基因组特征的信息; (i)基因本体注释(GOA),(ii)同源相互作用和(iii)蛋白质家族(PFAM)域相互作用。在研究中,我们基于相互作用的域模式,蛋白质功能预测子或PFP()引入了一种蛋白质功能预测方法,以帮助GOA。目标是通过消除错误的阳性对并维持尽可能多的真实阳性对来提高预测的PPI对的鲁棒性,从而实现PPI数据集的高置信度。基于使用不同计算PPI预测方法的信噪比(SNR)和强度测量获得的令人满意的结果,PPI滤波器已被证明是适用的。

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