Protein Interaction Mapping

蛋白质相互作用作图
  • 文章类型: Journal Article
    背景:蛋白质在各种生物过程中起着关键作用,精确预测蛋白质-蛋白质相互作用(PPI)位点对包括生物学在内的许多学科至关重要,医学和药学。虽然深度学习方法已经逐步被实施用于预测蛋白质中的PPI位点,提高其预测性能的任务仍然是一项艰巨的挑战。
    结果:在本文中,我们提出了一种基于动态图卷积神经网络和两阶段迁移学习策略的PPI站点预测模型(DGCPPISP)。最初,我们从双重角度实施迁移学习,即特征输入和模型训练,为我们的模型提供有效的先验知识。随后,我们构建了一个为第二阶段培训设计的网络,建立在动态图卷积的基础上。
    结论:为了评估其有效性,DGCPPISP模型的性能使用两个基准数据集进行审查。随后的结果表明,DGCPPISP在性能方面胜过竞争方法。具体来说,DGCPPISP超越了第二好的方法,EGRET,按5.9%的利润率计算,10.1%,F1测量为13.3%,AUPRC,和MCC度量分别在Dset_186_72_PDB164上。同样,在Dset_331上,它使亚军方法的性能黯然失色,HN-PPISP,14.5%,19.8%,和分别为29.9%。
    BACKGROUND: Proteins play a pivotal role in the diverse array of biological processes, making the precise prediction of protein-protein interaction (PPI) sites critical to numerous disciplines including biology, medicine and pharmacy. While deep learning methods have progressively been implemented for the prediction of PPI sites within proteins, the task of enhancing their predictive performance remains an arduous challenge.
    RESULTS: In this paper, we propose a novel PPI site prediction model (DGCPPISP) based on a dynamic graph convolutional neural network and a two-stage transfer learning strategy. Initially, we implement the transfer learning from dual perspectives, namely feature input and model training that serve to supply efficacious prior knowledge for our model. Subsequently, we construct a network designed for the second stage of training, which is built on the foundation of dynamic graph convolution.
    CONCLUSIONS: To evaluate its effectiveness, the performance of the DGCPPISP model is scrutinized using two benchmark datasets. The ensuing results demonstrate that DGCPPISP outshines competing methods in terms of performance. Specifically, DGCPPISP surpasses the second-best method, EGRET, by margins of 5.9%, 10.1%, and 13.3% for F1-measure, AUPRC, and MCC metrics respectively on Dset_186_72_PDB164. Similarly, on Dset_331, it eclipses the performance of the runner-up method, HN-PPISP, by 14.5%, 19.8%, and 29.9% respectively.
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  • 文章类型: Journal Article
    受体活性修饰蛋白(RAMPs)与G蛋白偶联受体(GPCRs)形成复合物,并可能调节其细胞运输和药理学。已经确定了大约50个GPCRs的RAMP相互作用,但只有少数GPCR-RAMP复合物已被详细研究。为了阐明一个全面的GPCR-RAMP相互作用组,我们创建了一个包含215个代表所有GPCR亚家族的双表位标记(DuET)GPCRs的文库,并将每个GPCR与3个RAMPs共表达.用定制的多重悬浮珠阵列(SBA)免疫测定法筛选GPCR-RAMP对,我们鉴定出122个GPCRs,这些GPCRs显示出与至少1个RAMP相互作用的有力证据.我们筛选了三种细胞系中的相互作用,发现23种内源性表达的GPCRs与RAMPs形成复合物。定位GPCR-RAMP相互作用组扩展了RAMP相互作用GPCRs的当前全系统功能表征,以告知靶向GPCR-RAMP复合物的选择性治疗剂的设计。
    Receptor activity-modifying proteins (RAMPs) form complexes with G protein-coupled receptors (GPCRs) and may regulate their cellular trafficking and pharmacology. RAMP interactions have been identified for about 50 GPCRs, but only a few GPCR-RAMP complexes have been studied in detail. To elucidate a comprehensive GPCR-RAMP interactome, we created a library of 215 dual epitope-tagged (DuET) GPCRs representing all GPCR subfamilies and coexpressed each GPCR with each of the three RAMPs. Screening the GPCR-RAMP pairs with customized multiplexed suspension bead array (SBA) immunoassays, we identified 122 GPCRs that showed strong evidence for interaction with at least one RAMP. We screened for interactions in three cell lines and found 23 endogenously expressed GPCRs that formed complexes with RAMPs. Mapping the GPCR-RAMP interactome expands the current system-wide functional characterization of RAMP-interacting GPCRs to inform the design of selective therapeutics targeting GPCR-RAMP complexes.
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  • 文章类型: Journal Article
    背景:蛋白质-蛋白质相互作用(PPI)网络为生物系统的功能提供了有价值的见解。将多个PPI网络对齐可能会暴露超出成对比较可观察到的关系。然而,评估多个网络比对的生物学质量是一个具有挑战性的问题。
    结果:我们提出了两种新的措施,以使用来自GeneOntology(GO)术语的功能信息来评估多个网络比对的质量。当跨物种对齐多个真实的PPI网络时,我们观察到这两种指标都与客观质量指标高度相关,例如常见的直系同源物。此外,我们的度量与比对预测新GO注释的能力密切相关,与现有的基于GO的措施相比,这是一个独特的优势。
    方法:可以通过https://github.com/kimiayazdani/GO_Measures访问脚本以及原始和对齐数据的链接。git.
    BACKGROUND: Protein-protein interaction (PPI) networks provide valuable insights into the function of biological systems. Aligning multiple PPI networks may expose relationships beyond those observable by pairwise comparisons. However, assessing the biological quality of multiple network alignments is a challenging problem.
    RESULTS: We propose two new measures to evaluate the quality of multiple network alignments using functional information from Gene Ontology (GO) terms. When aligning multiple real PPI networks across species, we observe that both measures are highly correlated with objective quality indicators, such as common orthologs. Additionally, our measures strongly correlate with an alignment\'s ability to predict novel GO annotations, which is a unique advantage over existing GO-based measures.
    METHODS: The scripts and the links to the raw and alignment data can be accessed at https://github.com/kimiayazdani/GO_Measures.git.
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  • 文章类型: Journal Article
    非洲猪瘟病毒(ASFV)是猪中通常致命的疾病,对猪的牲畜和猪的生产者构成威胁。其复杂的基因组包含150多个编码区,由于缺乏有关病毒蛋白质功能和病毒蛋白质之间以及病毒与宿主蛋白质之间的蛋白质-蛋白质相互作用的基本知识,因此开发针对该病毒的有效疫苗仍然是一项挑战。在这项工作中,我们使用人工智能驱动的蛋白质结构预测工具鉴定了ASFV-ASFV蛋白质-蛋白质相互作用(PPIs).我们将PPI鉴定工作流程以痘苗病毒为基准,一种被广泛研究的核质大DNA病毒,并发现它可以识别金标准的PPI,这些PPI已经在全基因组计算筛选中在体外得到了验证。我们将此工作流程应用于超过18,000个ASFV蛋白的成对组合,并能够鉴定出17个新型PPI,其中许多已经证实了它们的蛋白质-蛋白质相互作用的实验或生物信息学证据,进一步验证其相关性。两种蛋白质-蛋白质相互作用,I267L和I8L,I267L__I8L,和B175L和DP79L,B175L__DP79L,是涉及已知调节宿主免疫应答的病毒蛋白的新型PPI。
    The African swine fever virus (ASFV) is an often deadly disease in swine and poses a threat to swine livestock and swine producers. With its complex genome containing more than 150 coding regions, developing effective vaccines for this virus remains a challenge due to a lack of basic knowledge about viral protein function and protein-protein interactions between viral proteins and between viral and host proteins. In this work, we identified ASFV-ASFV protein-protein interactions (PPIs) using artificial intelligence-powered protein structure prediction tools. We benchmarked our PPI identification workflow on the Vaccinia virus, a widely studied nucleocytoplasmic large DNA virus, and found that it could identify gold-standard PPIs that have been validated in vitro in a genome-wide computational screening. We applied this workflow to more than 18,000 pairwise combinations of ASFV proteins and were able to identify seventeen novel PPIs, many of which have corroborating experimental or bioinformatic evidence for their protein-protein interactions, further validating their relevance. Two protein-protein interactions, I267L and I8L, I267L__I8L, and B175L and DP79L, B175L__DP79L, are novel PPIs involving viral proteins known to modulate host immune response.
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  • 文章类型: Journal Article
    信号通路负责在细胞之间传递信息和调节细胞生长,分化,和死亡。细胞中的蛋白质通过特定的结构域相互作用形成复合物,在各种生物学功能和细胞信号通路中起着至关重要的作用。细胞信号传导途径中的蛋白质-蛋白质相互作用(PPIs)对于信号传递和调节至关重要。PPIs在信号通路中的时空特征对于理解信号转导的调控机制至关重要。双分子荧光互补(BiFC)是一种直接可视化活细胞中PPI的成像工具,已被广泛用于发现各种生物体中的新型PPI。BiFC在生物学研究的各个领域显示出巨大的应用潜力,药物开发,疾病诊断和治疗,以及其他相关领域。本文系统地总结和分析了BiFC的技术进展及其在阐明已建立的细胞信号通路中的PPI,包括TOR,PI3K/Akt,Wnt/β-catenin,NF-κB,和MAPK。此外,它探索了该技术在揭示植物激素乙烯信号通路中的PPI,生长素,赤霉素,和脱落酸。使用BiFC与CRISPR-Cas9,活细胞成像,和超高分辨率显微镜将增强我们对PPI在细胞信号传导途径的理解。
    Signaling pathways are responsible for transmitting information between cells and regulating cell growth, differentiation, and death. Proteins in cells form complexes by interacting with each other through specific structural domains, playing a crucial role in various biological functions and cell signaling pathways. Protein-protein interactions (PPIs) within cell signaling pathways are essential for signal transmission and regulation. The spatiotemporal features of PPIs in signaling pathways are crucial for comprehending the regulatory mechanisms of signal transduction. Bimolecular fluorescence complementation (BiFC) is one kind of imaging tool for the direct visualization of PPIs in living cells and has been widely utilized to uncover novel PPIs in various organisms. BiFC demonstrates significant potential for application in various areas of biological research, drug development, disease diagnosis and treatment, and other related fields. This review systematically summarizes and analyzes the technical advancement of BiFC and its utilization in elucidating PPIs within established cell signaling pathways, including TOR, PI3K/Akt, Wnt/β-catenin, NF-κB, and MAPK. Additionally, it explores the application of this technology in revealing PPIs within the plant hormone signaling pathways of ethylene, auxin, Gibberellin, and abscisic acid. Using BiFC in conjunction with CRISPR-Cas9, live-cell imaging, and ultra-high-resolution microscopy will enhance our comprehension of PPIs in cell signaling pathways.
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  • 文章类型: Journal Article
    蛋白质-蛋白质相互作用(PPIs)对许多生物过程都很重要,但是从序列数据中预测它们仍然具有挑战性。现有的深度学习模型通常不能推广到训练集中不存在的蛋白质,也不能为其预测提供不确定性估计。为了解决这些限制,我们介绍Tuna,基于变压器的PPI预测不确定性感知模型。TunA使用带有变压器编码器的ESM-2嵌入,并结合了频谱归一化神经高斯过程。TunA实现了最先进的性能,重要的是,评估未知序列的不确定性。我们证明了TUnA的不确定性估计可以有效地识别最可靠的预测,显著减少误报。这种能力对于弥合计算预测和实验验证之间的差距至关重要。
    Protein-protein interactions (PPIs) are important for many biological processes, but predicting them from sequence data remains challenging. Existing deep learning models often cannot generalize to proteins not present in the training set and do not provide uncertainty estimates for their predictions. To address these limitations, we present TUnA, a Transformer-based uncertainty-aware model for PPI prediction. TUnA uses ESM-2 embeddings with Transformer encoders and incorporates a Spectral-normalized Neural Gaussian Process. TUnA achieves state-of-the-art performance and, importantly, evaluates uncertainty for unseen sequences. We demonstrate that TUnA\'s uncertainty estimates can effectively identify the most reliable predictions, significantly reducing false positives. This capability is crucial in bridging the gap between computational predictions and experimental validation.
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  • 文章类型: Journal Article
    病毒受体决定了病毒的组织嗜性,与病毒感染引起的临床结局有一定的关系,这对于识别病毒受体,了解病毒的感染机制和开发进入抑制剂具有重要意义。邻近标记(PL)是一种研究蛋白质-蛋白质相互作用的新技术,但它尚未应用于病毒受体或共受体的鉴定。这里,我们试图通过使用TurboID催化的PL来鉴定SARS-CoV-2的共受体。膜蛋白血管紧张素转换酶2(ACE2)用作诱饵并与TurboID缀合,构建了稳定表达ACE2-TurboID的A549细胞系。在生物素和ATP存在下,SARS-CoV-2假病毒与ACE2-TurboID稳定表达的细胞系孵育,这可以启动TurboID的催化活性,并用生物素标记相邻的内源性蛋白。随后,收获生物素化的蛋白质并通过质谱鉴定。我们鉴定了一种膜蛋白,AXL,已在功能上显示可介导SARS-CoV-2进入宿主细胞。我们的数据表明PL可用于鉴定病毒进入的共受体。
    Virus receptors determine the tissue tropism of viruses and have a certain relationship with the clinical outcomes caused by viral infection, which is of great importance for the identification of virus receptors to understand the infection mechanism of viruses and to develop entry inhibitor. Proximity labeling (PL) is a new technique for studying protein-protein interactions, but it has not yet been applied to the identification of virus receptors or co-receptors. Here, we attempt to identify co-receptor of SARS-CoV-2 by employing TurboID-catalyzed PL. The membrane protein angiotensin-converting enzyme 2 (ACE2) was employed as a bait and conjugated to TurboID, and a A549 cell line with stable expression of ACE2-TurboID was constructed. SARS-CoV-2 pseudovirus were incubated with ACE2-TurboID stably expressed cell lines in the presence of biotin and ATP, which could initiate the catalytic activity of TurboID and tag adjacent endogenous proteins with biotin. Subsequently, the biotinylated proteins were harvested and identified by mass spectrometry. We identified a membrane protein, AXL, that has been functionally shown to mediate SARS-CoV-2 entry into host cells. Our data suggest that PL could be used to identify co-receptors for virus entry.
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  • 文章类型: Journal Article
    蛋白质-蛋白质相互作用在细胞稳态和功能的各个方面都起着重要的生物学作用。基于邻近标记质谱的蛋白质组学克服了通常与其他方法相关的挑战,并迅速成为本领域的最新技术。然而,严格控制邻近标记的酶活性和表达水平对于准确识别蛋白质相互作用物至关重要。这里,我们利用T2A自切割肽和非切割突变体来适应实验和对照TurboID设置中的目的蛋白。为了方便和流线型的质粒组装,我们建立了一个金门模块化克隆系统来产生质粒,用于瞬时表达和稳定整合。为了突出我们的T2A拆分/链接设计,我们将其应用于通过TurboID邻近标记鉴定糖皮质激素受体与严重急性呼吸综合征冠状病毒2(SARS-CoV-2)核衣壳和非结构蛋白7(NSP7)蛋白的蛋白相互作用。我们的结果表明,我们的T2A拆分/链接提供了一个适当的控制,建立在先前在现场建立的控制要求。
    Protein-protein interactions play an important biological role in every aspect of cellular homeostasis and functioning. Proximity labeling mass spectrometry-based proteomics overcomes challenges typically associated with other methods and has quickly become the current state of the art in the field. Nevertheless, tight control of proximity-labeling enzymatic activity and expression levels is crucial to accurately identify protein interactors. Here, we leverage a T2A self-cleaving peptide and a non-cleaving mutant to accommodate the protein of interest in the experimental and control TurboID setup. To allow easy and streamlined plasmid assembly, we built a Golden Gate modular cloning system to generate plasmids for transient expression and stable integration. To highlight our T2A Split/link design, we applied it to identify protein interactions of the glucocorticoid receptor and severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) nucleocapsid and non-structural protein 7 (NSP7) proteins by TurboID proximity labeling. Our results demonstrate that our T2A split/link provides an opportune control that builds upon previously established control requirements in the field.
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  • 文章类型: Journal Article
    人工智能彻底改变了蛋白质结构预测领域。然而,随着更强大、更复杂的软件的开发,它是可访问性和易用性,而不是功能,正在迅速成为最终用户的限制因素。LazyAF是一个基于GoogleColaboratory的管道,它集成了现有的ColabFoldBATCH软件,以简化中等规模的蛋白质-蛋白质相互作用预测过程。LazyAF用于预测在广泛宿主范围的多药抗性质粒RK2上编码的76种蛋白质的相互作用组,证明了管道提供的易用性和可及性。
    Artificial intelligence has revolutionized the field of protein structure prediction. However, with more powerful and complex software being developed, it is accessibility and ease of use rather than capability that is quickly becoming a limiting factor to end users. LazyAF is a Google Colaboratory-based pipeline which integrates the existing ColabFold BATCH software to streamline the process of medium-scale protein-protein interaction prediction. LazyAF was used to predict the interactome of the 76 proteins encoded on the broad-host-range multi-drug resistance plasmid RK2, demonstrating the ease and accessibility the pipeline provides.
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  • 文章类型: Journal Article
    使用邻近标记技术进行蛋白质-蛋白质相互作用研究,例如基于生物素连接酶的BioID,已经成为理解细胞过程不可或缺的一部分。大多数研究利用传统的二维细胞培养系统,在3D组织中发现的蛋白质行为可能缺少重要差异。在这项研究中,我们研究了蛋白质的蛋白质相互作用,Bcl-2细胞死亡激动剂(BAD),并将传统的2D培养条件与3D系统进行了比较,其中细胞包埋在3D细胞外基质(ECM)模拟物中。使用BAD与工程生物素连接酶miniTurbo(BirA*)融合,我们在2D和3D条件下确定了重叠和不同的BAD相互作用。已知的BAD结合蛋白14-3-3同种型和Bcl-XL在2D和3D中均与BAD相互作用。在确定的131个坏人中,56%是2D特有的,14%是3D特有的,和30%是共同的条件。交互网络分析证明了2D和3D交互体之间的差异关联,强调培养条件对蛋白质相互作用的影响。2D-3D重叠相互作用组封装了凋亡程序,这是众所周知的BAD的作用。3D独特的途径富含ECM信号,暗示着迄今为止未知的BAD功能。因此,在3D中探索蛋白质-蛋白质相互作用提供了细胞行为的新线索。这种令人兴奋的方法有可能弥合可处理的2D细胞培养和类器官3D系统之间的知识差距。
    Protein-protein interaction studies using proximity labeling techniques, such as biotin ligase-based BioID, have become integral in understanding cellular processes. Most studies utilize conventional 2D cell culture systems, potentially missing important differences in protein behavior found in 3D tissues. In this study, we investigated the protein-protein interactions of a protein, Bcl-2 Agonist of cell death (BAD), and compared conventional 2D culture conditions to a 3D system, wherein cells were embedded within a 3D extracellular matrix (ECM) mimic. Using BAD fused to the engineered biotin ligase miniTurbo (BirA*), we identified both overlapping and distinct BAD interactomes under 2D and 3D conditions. The known BAD binding proteins 14-3-3 isoforms and Bcl-XL interacted with BAD in both 2D and 3D. Of the 131 BAD-interactors identified, 56% were specific to 2D, 14% were specific to 3D, and 30% were common to both conditions. Interaction network analysis demonstrated differential associations between 2D and 3D interactomes, emphasizing the impact of the culture conditions on protein interactions. The 2D-3D overlap interactome encapsulated the apoptotic program, which is a well-known role of BAD. The 3D unique pathways were enriched in ECM signaling, suggestive of hitherto unknown functions for BAD. Thus, exploring protein-protein interactions in 3D provides novel clues into cell behavior. This exciting approach has the potential to bridge the knowledge gap between tractable 2D cell culture and organoid-like 3D systems.
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