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A domain-based approach to predict protein-protein interactions

机译:基于域的方法来预测蛋白质间相互作用

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Background Knowing which proteins exist in a certain organism or cell type and how these proteins interact with each other are necessary for the understanding of biological processes at the whole cell level. The determination of the protein-protein interaction (PPI) networks has been the subject of extensive research. Despite the development of reasonably successful methods, serious technical difficulties still exist. In this paper we present DomainGA, a quantitative computational approach that uses the information about the domain-domain interactions to predict the interactions between proteins. Results DomainGA is a multi-parameter optimization method in which the available PPI information is used to derive a quantitative scoring scheme for the domain-domain pairs. Obtained domain interaction scores are then used to predict whether a pair of proteins interacts. Using the yeast PPI data and a series of tests, we show the robustness and insensitivity of the DomainGA method to the selection of the parameter sets, score ranges, and detection rules. Our DomainGA method achieves very high explanation ratios for the positive and negative PPIs in yeast. Based on our cross-verification tests on human PPIs, comparison of the optimized scores with the structurally observed domain interactions obtained from the iPFAM database, and sensitivity and specificity analysis; we conclude that our DomainGA method shows great promise to be applicable across multiple organisms. Conclusion We envision the DomainGA as a first step of a multiple tier approach to constructing organism specific PPIs. As it is based on fundamental structural information, the DomainGA approach can be used to create potential PPIs and the accuracy of the constructed interaction template can be further improved using complementary methods. Explanation ratios obtained in the reported test case studies clearly show that the false prediction rates of the template networks constructed using the DomainGA scores are reasonably low, and the erroneous predictions can be filtered further using supplementary approaches such as those based on literature search or other prediction methods.
机译:背景技术对于了解整个细胞水平的生物学过程,必须知道在某种生物或细胞类型中存在哪些蛋白质以及这些蛋白质如何相互作用。蛋白质-蛋白质相互作用(PPI)网络的确定已成为广泛研究的主题。尽管开发了相当成功的方法,但仍然存在严重的技术困难。在本文中,我们介绍了DomainGA,这是一种定量计算方法,它使用有关域-域相互作用的信息来预测蛋白质之间的相互作用。结果DomainGA是一种多参数优化方法,其中可用的PPI信息用于得出域-域对的定量评分方案。然后将获得的域相互作用评分用于预测一对蛋白质是否相互作用。使用酵母PPI数据和一系列测试,我们显示了DomainGA方法对参数集,得分范围和检测规则的选择的鲁棒性和不敏感性。我们的DomainGA方法对酵母中的正PPI和负PPI达到了很高的解释率。根据我们对人类PPI的交叉验证测试,将优化得分与从iPFAM数据库获得的结构观察到的域相互作用进行比较,并进行敏感性和特异性分析;我们得出结论,我们的DomainGA方法显示出可应用于多种生物的巨大前景。结论我们将DomainGA设想为构建有机体特异性PPI的多层方法的第一步。由于它基于基本的结构信息,因此可以将DomainGA方法用于创建潜在的PPI,并且可以使用互补方法进一步提高构造的交互模板的准确性。在报告的测试案例研究中获得的解释率清楚地表明,使用DomainGA得分构建的模板网络的错误预测率相当低,并且可以使用补充方法(例如基于文献搜索或其他预测的补充方法)进一步过滤错误的预测方法。

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