Proteome-wide assessment of human interactome as a source of capturing domain–motif and domain-domain interactions

IF 3.6 3区 生物学 Q3 CELL BIOLOGY
Sobia Idrees, Keshav Raj Paudel
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Abstract

Protein–protein interactions (PPIs) play a crucial role in various biological processes by establishing domain–motif (DMI) and domain–domain interactions (DDIs). While the existence of real DMIs/DDIs is generally assumed, it is rarely tested; therefore, this study extensively compared high-throughput methods and public PPI repositories as sources for DMI and DDI prediction based on the assumption that the human interactome provides sufficient data for the reliable identification of DMIs and DDIs. Different datasets from leading high-throughput methods (Yeast two-hybrid [Y2H], Affinity Purification coupled Mass Spectrometry [AP-MS], and Co-fractionation-coupled Mass Spectrometry) were assessed for their ability to capture DMIs and DDIs using known DMI/DDI information. High-throughput methods were not notably worse than PPI databases and, in some cases, appeared better. In conclusion, all PPI datasets demonstrated significant enrichment in DMIs and DDIs (p-value <0.001), establishing Y2H and AP-MS as reliable methods for predicting these interactions. This study provides valuable insights for biologists in selecting appropriate methods for predicting DMIs, ultimately aiding in SLiM discovery.

Abstract Image

作为捕捉结构域-结构域和结构域-结构域相互作用的来源,对人类相互作用组进行全蛋白质组评估
蛋白质-蛋白质相互作用(PPI)通过建立结构域-结构域(DMI)和结构域-结构域相互作用(DDI)在各种生物过程中发挥着至关重要的作用。因此,本研究广泛比较了作为 DMI 和 DDI 预测来源的高通量方法和公共 PPI 储存库,其假设是人类相互作用组为可靠鉴定 DMI 和 DDI 提供了充足的数据。我们评估了主要高通量方法(酵母双杂交法[Y2H]、亲和纯化耦合质谱法[AP-MS]和共分馏耦合质谱法)的不同数据集利用已知的DMI/DDI信息捕获DMI和DDI的能力。高通量方法并不比 PPI 数据库差,在某些情况下甚至更好。总之,所有 PPI 数据集都显示出 DMIs 和 DDIs 的显著富集(p 值小于 0.001),从而确立了 Y2H 和 AP-MS 作为预测这些相互作用的可靠方法的地位。这项研究为生物学家选择适当的方法预测 DMIs 提供了宝贵的见解,最终有助于 SLiM 的发现。
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来源期刊
CiteScore
6.40
自引率
4.90%
发文量
40
期刊介绍: The Journal of Cell Communication and Signaling provides a forum for fundamental and translational research. In particular, it publishes papers discussing intercellular and intracellular signaling pathways that are particularly important to understand how cells interact with each other and with the surrounding environment, and how cellular behavior contributes to pathological states. JCCS encourages the submission of research manuscripts, timely reviews and short commentaries discussing recent publications, key developments and controversies. Research manuscripts can be published under two different sections : In the Pathology and Translational Research Section (Section Editor Andrew Leask) , manuscripts report original research dealing with celllular aspects of normal and pathological signaling and communication, with a particular interest in translational research. In the Molecular Signaling Section (Section Editor Satoshi Kubota) manuscripts report original signaling research performed at molecular levels with a particular interest in the functions of intracellular and membrane components involved in cell signaling.
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