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HIPPIE v2.0: enhancing meaningfulness and reliability of protein–protein interaction networks

机译:HIPPIE v2.0:增强蛋白质间相互作用网络的意义和可靠性

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摘要

The increasing number of experimentally detected interactions between proteins makes it difficult for researchers to extract the interactions relevant for specific biological processes or diseases. This makes it necessary to accompany the large-scale detection of protein–protein interactions (PPIs) with strategies and tools to generate meaningful PPI subnetworks. To this end, we generated the Human Integrated Protein–Protein Interaction rEference or HIPPIE (). HIPPIE is a one-stop resource for the generation and interpretation of PPI networks relevant to a specific research question. We provide means to generate highly reliable, context-specific PPI networks and to make sense out of them. We just released the second major update of HIPPIE, implementing various new features. HIPPIE grew substantially over the last years and now contains more than 270 000 confidence scored and annotated PPIs. We integrated different types of experimental information for the confidence scoring and the construction of context-specific networks. We implemented basic graph algorithms that highlight important proteins and interactions. HIPPIE's graphical interface implements several ways for wet lab and computational scientists alike to access the PPI data.
机译:蛋白质之间通过实验检测到的相互作用的数量不断增加,这使得研究人员难以提取与特定生物学过程或疾病相关的相互作用。这使得必须对蛋白质-蛋白质相互作用(PPI)进行大规模检测,并附带产生有意义的PPI子网的策略和工具。为此,我们生成了人类整合蛋白-蛋白质相互作用rEference或HIPPIE()。 HIPPIE是一站式资源,用于生成和解释与特定研究问题相关的PPI网络。我们提供了生成高度可靠的,特定于上下文的PPI网络并使它们变得有意义的方法。我们刚刚发布了HIPPIE的第二个主要更新,实现了各种新功能。 HIPPIE在过去几年中取得了显着增长,现在包含超过270 000个置信度得分和带注释的PPI。我们集成了不同类型的实验信息,以进行置信度评分和上下文相关网络的构建。我们实施了基本图算法,突出显示了重要的蛋白质和相互作用。 HIPPIE的图形界面为湿实验室和计算科学家提供了几种访问PPI数据的方式。

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