Identification of Protein-Protein Interaction Associated Functions Based on Gene Ontology.

The protein journal Pub Date : 2024-06-01 Epub Date: 2024-03-04 DOI:10.1007/s10930-024-10180-6
Yu-Hang Zhang, FeiMing Huang, JiaBo Li, WenFeng Shen, Lei Chen, KaiYan Feng, Tao Huang, Yu-Dong Cai
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Abstract

Protein-protein interactions (PPIs) involve the physical or functional contact between two or more proteins. Generally, proteins that can interact with each other always have special relationships. Some previous studies have reported that gene ontology (GO) terms are related to the determination of PPIs, suggesting the special patterns on the GO terms of proteins in PPIs. In this study, we explored the special GO term patterns on human PPIs, trying to uncover the underlying functional mechanism of PPIs. The experimental validated human PPIs were retrieved from STRING database, which were termed as positive samples. Additionally, we randomly paired proteins occurring in positive samples, yielding lots of negative samples. A simple calculation was conducted to count the number of positive samples for each GO term pair, where proteins in samples were annotated by GO terms in the pair individually. The similar number for negative samples was also counted and further adjusted due to the great gap between the numbers of positive and negative samples. The difference of the above two numbers and the relative ratio compared with the number on positive samples were calculated. This ratio provided a precise evaluation of the occurrence of GO term pairs for positive samples and negative samples, indicating the latent GO term patterns for PPIs. Our analysis unveiled several nuclear biological processes, including gene transcription, cell proliferation, and nutrient metabolism, as key biological functions. Interactions between major proliferative or metabolic GO terms consistently correspond with significantly reported PPIs in recent literature.

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基于基因本体的蛋白质-蛋白质相互作用相关功能的鉴定。
蛋白质-蛋白质相互作用(PPI)涉及两种或两种以上蛋白质之间的物理或功能接触。一般来说,能相互作用的蛋白质总是有特殊的关系。之前的一些研究报告指出,基因本体(GO)术语与 PPIs 的判定有关,提示了 PPIs 中蛋白质的 GO 术语的特殊模式。本研究探讨了人类 PPIs 的特殊 GO 术语模式,试图揭示 PPIs 的潜在功能机制。我们从 STRING 数据库中检索了经过实验验证的人类 PPIs,并将其称为阳性样本。此外,我们还将阳性样本中出现的蛋白质随机配对,产生了大量阴性样本。我们进行了简单的计算,统计了每对 GO 术语的阳性样本数量,其中样本中的蛋白质分别由这对术语中的 GO 术语注释。由于阳性样本和阴性样本的数量差距很大,因此也对阴性样本的类似数量进行了计算和进一步调整。计算上述两个数字的差值以及与阳性样本数字相比的相对比率。这一比率精确地评估了阳性样本和阴性样本中 GO 术语对的出现情况,显示了 PPIs 的潜在 GO 术语模式。我们的分析揭示了几个核生物过程,包括基因转录、细胞增殖和营养代谢,这些都是关键的生物功能。主要增殖或代谢 GO 术语之间的相互作用与近期文献中报道的 PPIs 一致。
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