Antigen-Antibody Complex

抗原 - 抗体复合物
  • 文章类型: Journal Article
    激活的FXII(FXIIa)是血浆接触系统的主要引发剂,并且可以激活促凝血和促炎途径。其活性在遗传性血管性水肿(HAE)的病理生理学中很重要。这里,我们描述了与garadacimab的Fab片段复合的FXIIa(βFXIIa)的β链的高分辨率低温电子显微镜(cryo-EM)结构。Garadacimab通过异常长的CDR-H3与βFXIIa结合,该CDR-H3以非规范方式插入S1口袋。这种结构机制可能是抑制HAE中活化的FXIIa蛋白水解活性的主要贡献者。GaradacimabFab-βFXIIa结构还揭示了garadacimab与活化的FXIIa的高亲和力结合的关键决定因素。用其他真正的FXIIa抑制剂进行结构分析,如苄脒和C1-INH,揭示了garadacimab抑制βFXIIa的惊人相似机制。总之,garadacimabFab-βFXIIa结构提供了对其作用机制的重要见解,并描述了主要和辅助互补位/表位。
    Activated FXII (FXIIa) is the principal initiator of the plasma contact system and can activate both procoagulant and proinflammatory pathways. Its activity is important in the pathophysiology of hereditary angioedema (HAE). Here, we describe a high-resolution cryoelectron microscopy (cryo-EM) structure of the beta-chain from FXIIa (βFXIIa) complexed with the Fab fragment of garadacimab. Garadacimab binds to βFXIIa through an unusually long CDR-H3 that inserts into the S1 pocket in a non-canonical way. This structural mechanism is likely the primary contributor to the inhibition of activated FXIIa proteolytic activity in HAE. Garadacimab Fab-βFXIIa structure also reveals critical determinants of high-affinity binding of garadacimab to activated FXIIa. Structural analysis with other bona fide FXIIa inhibitors, such as benzamidine and C1-INH, reveals a surprisingly similar mechanism of βFXIIa inhibition by garadacimab. In summary, the garadacimab Fab-βFXIIa structure provides crucial insights into its mechanism of action and delineates primary and auxiliary paratopes/epitopes.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    抗体是一类通过结合病原体的抗原来识别和中和病原体的蛋白质。它们是用于诊断和治疗应用的最重要的生物制药类别。了解抗体如何与其抗原相互作用在药物和疫苗设计中起着基本作用,并有助于包含复杂的抗原结合机制。由于实验方法的总体成本,预测抗体-抗原相互作用位点的计算方法具有重要价值。机器学习方法和深度学习技术取得了有希望的成果。在这项工作中,我们通过应用HSS-PPI预测抗体相互作用界面位点,一种用于预测一般蛋白质界面位点的混合方法。该方法以分层表示的方式抽象蛋白质,并使用图卷积网络对界面和非界面之间的氨基酸进行分类。此外,我们还为氨基酸配备了不同的物理化学特征和结构来描述残基。分析结果,我们观察到结构特征在氨基酸描述中起着基本作用。我们比较了获得的性能,使用标准指标进行评估,使用具有3DZernike描述符的SVM获得的,Parapred,Paratome,和抗体i-补丁。
    Antibodies are a class of proteins that recognize and neutralize pathogens by binding to their antigens. They are the most significant category of biopharmaceuticals for both diagnostic and therapeutic applications. Understanding how antibodies interact with their antigens plays a fundamental role in drug and vaccine design and helps to comprise the complex antigen binding mechanisms. Computational methods for predicting interaction sites of antibody-antigen are of great value due to the overall cost of experimental methods. Machine learning methods and deep learning techniques obtained promising results.In this work, we predict antibody interaction interface sites by applying HSS-PPI, a hybrid method defined to predict the interface sites of general proteins. The approach abstracts the proteins in terms of hierarchical representation and uses a graph convolutional network to classify the amino acids between interface and non-interface. Moreover, we also equipped the amino acids with different sets of physicochemical features together with structural ones to describe the residues. Analyzing the results, we observe that the structural features play a fundamental role in the amino acid descriptions. We compare the obtained performances, evaluated using standard metrics, with the ones obtained with SVM with 3D Zernike descriptors, Parapred, Paratome, and Antibody i-Patch.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    抗体及其相应抗原之间的互补表位相互作用的计算分析可以促进我们对体液免疫的分子机制的理解,并促进许多疾病的新疗法的设计。人工智能最近的突破使得预测蛋白质-蛋白质相互作用和模拟它们的结构成为可能。不幸的是,检测与特异性抗体相关的抗原结合位点仍然是一个具有挑战性的问题.为了应对这一挑战,我们实施了一个深度学习模型来表征抗体及其相应抗原之间的相互作用模式。精度高,我们的模型可以区分抗体-抗原复合物和其他类型的蛋白质-蛋白质复合物.更有趣的是,即使我们只有表位信息,我们也可以从其他常见的蛋白质结合区识别抗原,准确率高于70%。这表明抗原在其表面上具有抗体可以识别的不同特征。此外,我们的模型无法预测抗体与其特定抗原之间的伙伴关系.该结果表明,一种抗原可以被多于一种抗体靶向,并且抗体可以与先前未鉴定的蛋白质结合。一起来看,我们的结果支持抗体-抗原相互作用的精确性,同时也表明在预测特异性配对方面未来取得了积极进展.
    Computational analysis of paratope-epitope interactions between antibodies and their corresponding antigens can facilitate our understanding of the molecular mechanism underlying humoral immunity and boost the design of new therapeutics for many diseases. The recent breakthrough in artificial intelligence has made it possible to predict protein-protein interactions and model their structures. Unfortunately, detecting antigen-binding sites associated with a specific antibody is still a challenging problem. To tackle this challenge, we implemented a deep learning model to characterize interaction patterns between antibodies and their corresponding antigens. With high accuracy, our model can distinguish between antibody-antigen complexes and other types of protein-protein complexes. More intriguingly, we can identify antigens from other common protein binding regions with an accuracy of higher than 70% even if we only have the epitope information. This indicates that antigens have distinct features on their surface that antibodies can recognize. Additionally, our model was unable to predict the partnerships between antibodies and their particular antigens. This result suggests that one antigen may be targeted by more than one antibody and that antibodies may bind to previously unidentified proteins. Taken together, our results support the precision of antibody-antigen interactions while also suggesting positive future progress in the prediction of specific pairing.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    仅根据序列信息训练的大型语言模型就可以学习蛋白质设计的高级原理。然而,超越顺序,蛋白质的三维结构决定了它们的特定功能,活动,和可进化性。这里,我们证明了一个用蛋白质结构骨架坐标增强的一般蛋白质语言模型可以指导不同蛋白质的进化,而不需要对单个功能任务进行建模。我们还证明了仅在单链结构上训练的ESM-IF1,可以扩展到工程蛋白质复合物。使用这种方法,我们筛选了用于治疗严重急性呼吸综合征冠状病毒2(SARS-CoV-2)感染的两种治疗性临床抗体的约30种变体.我们分别实现了对关注BQ.1.1和XBB.1.5的抗体逃逸病毒变体的中和和亲和力的高达25倍的改善和37倍的改善。这些发现强调了整合结构信息以识别有效的蛋白质进化轨迹而不需要任何特定任务的训练数据的优势。
    Large language models trained on sequence information alone can learn high-level principles of protein design. However, beyond sequence, the three-dimensional structures of proteins determine their specific function, activity, and evolvability. Here, we show that a general protein language model augmented with protein structure backbone coordinates can guide evolution for diverse proteins without the need to model individual functional tasks. We also demonstrate that ESM-IF1, which was only trained on single-chain structures, can be extended to engineer protein complexes. Using this approach, we screened about 30 variants of two therapeutic clinical antibodies used to treat severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infection. We achieved up to 25-fold improvement in neutralization and 37-fold improvement in affinity against antibody-escaped viral variants of concern BQ.1.1 and XBB.1.5, respectively. These findings highlight the advantage of integrating structural information to identify efficient protein evolution trajectories without requiring any task-specific training data.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    通过传统技术优化治疗性抗体,例如通过杂交瘤或噬菌体展示进行候选筛选,是资源密集型和耗时的。近年来,基于计算和人工智能的方法已经被积极开发,以加速和改进治疗性抗体的开发。在这项研究中,我们开发了一个基于端到端序列的深度学习模型,称为AttABseq,用于预测与抗体突变相关的抗原-抗体结合亲和力变化。AttABseq是一种高效且通用的基于注意力的模型,通过利用不同的抗原-抗体复合物序列作为输入来预测残基突变的结合亲和力变化。对三个基准数据集的评估表明,就预测的和实验的结合亲和力变化之间的皮尔逊相关系数而言,AttABseq比其他基于序列的模型更准确120%。此外,AttABseq也优于或与基于结构的方法竞争。此外,AttABseq始终如一地展示了在各种条件下的强大预测能力,强调了其在广泛的抗原-抗体复合物中的显着泛化能力。它对改变的残留物的数量没有限制,使其在晶体学结构仍然不可用的情况下特别适用。基于注意力的可解释性分析表明,点突变对抗体-抗原结合亲和力变化的因果影响可以在残基水平上可视化,这可能有助于自动抗体序列优化。我们相信AttABseq为治疗性抗体优化提供了一个竞争激烈的答案。
    The optimization of therapeutic antibodies through traditional techniques, such as candidate screening via hybridoma or phage display, is resource-intensive and time-consuming. In recent years, computational and artificial intelligence-based methods have been actively developed to accelerate and improve the development of therapeutic antibodies. In this study, we developed an end-to-end sequence-based deep learning model, termed AttABseq, for the predictions of the antigen-antibody binding affinity changes connected with antibody mutations. AttABseq is a highly efficient and generic attention-based model by utilizing diverse antigen-antibody complex sequences as the input to predict the binding affinity changes of residue mutations. The assessment on the three benchmark datasets illustrates that AttABseq is 120% more accurate than other sequence-based models in terms of the Pearson correlation coefficient between the predicted and experimental binding affinity changes. Moreover, AttABseq also either outperforms or competes favorably with the structure-based approaches. Furthermore, AttABseq consistently demonstrates robust predictive capabilities across a diverse array of conditions, underscoring its remarkable capacity for generalization across a wide spectrum of antigen-antibody complexes. It imposes no constraints on the quantity of altered residues, rendering it particularly applicable in scenarios where crystallographic structures remain unavailable. The attention-based interpretability analysis indicates that the causal effects of point mutations on antibody-antigen binding affinity changes can be visualized at the residue level, which might assist automated antibody sequence optimization. We believe that AttABseq provides a fiercely competitive answer to therapeutic antibody optimization.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    核抗原的自身抗体是系统性红斑狼疮(SLE)的标志,它们有助于发病机理。然而,关于自身抗体的不同同种型如何导致这种自身免疫性疾病,我们的知识仍然存在差距,包括浆细胞样树突状细胞(pDC)响应免疫复合物(IC)产生关键的I型干扰素(IFN)细胞因子。我们专注于IgA,这是血清中第二普遍的同种型,随着IgG,在狼疮性肾炎患者的肾小球中沉积。我们显示SLE患者具有针对大多数核抗原的血清IgA自身抗体,与针对相同抗原的IgG相关。我们调查了IgA自身抗体是否针对主要的SLE自身抗原,史密斯核糖核蛋白(Sm/RNP),在pDCs的IC激活中起作用。我们发现pDCs表达IgA特异性Fc受体,FcαR,和IgA1自身抗体在含RNA的IC中与IgG协同作用以在体外产生稳健的初级血液pDCIFN-α应答。对这些IC的PDC响应需要FcαR和FcγRIIa,显示这些Fc受体之间的协同作用。当IC同时包含IgA1和IgG时,Sm/RNPIC与pDC的结合和内化作用更大。来自患有SLE的个体的循环pDC比来自健康对照个体的pDC具有更高的含IgA1的IC的结合和更高的FcαR表达。尽管在SLE中pDCFcαR表达与血液IFN刺激的基因签名相关,Toll样受体7激动剂,但不是IFN-α,pDCFcαR在体外表达上调。一起,我们显示了IgA1自身抗体有助于SLE发病的机制。
    Autoantibodies to nuclear antigens are hallmarks of systemic lupus erythematosus (SLE) where they contribute to pathogenesis. However, there remains a gap in our knowledge regarding how different isotypes of autoantibodies contribute to this autoimmune disease, including the production of the critical type I interferon (IFN) cytokines by plasmacytoid dendritic cells (pDCs) in response to immune complexes (ICs). We focused on IgA, which is the second-most prevalent isotype in serum and, along with IgG, is deposited in glomeruli in individuals with lupus nephritis. We show that individuals with SLE have serum IgA autoantibodies against most nuclear antigens, correlating with IgG against the same antigen. We investigated whether IgA autoantibodies against a major SLE autoantigen, Smith ribonucleoprotein (Sm/RNP), played a role in IC activation of pDCs. We found that pDCs expressed the IgA-specific Fc receptor, FcαR, and IgA1 autoantibodies synergized with IgG in RNA-containing ICs to generate robust primary blood pDC IFN-α responses in vitro. pDC responses to these ICs required both FcαR and FcγRIIa, showing synergy between these Fc receptors. Sm/RNP IC binding to and internalization by pDCs were greater when ICs contained both IgA1 and IgG. Circulating pDCs from individuals with SLE had higher binding of IgA1-containing ICs and higher expression of FcαR than pDCs from healthy control individuals. Although pDC FcαR expression correlated with the blood IFN-stimulated gene signature in SLE, Toll-like receptor 7 agonists, but not IFN-α, up-regulated pDC FcαR expression in vitro. Together, we show a mechanism by which IgA1 autoantibodies contribute to SLE pathogenesis.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    免疫复合物在调节粘膜组织中的适应性免疫中的潜在贡献仍然知之甚少。在这份报告中,我们检查了,在老鼠身上,通过鼻内递送生物毒剂蓖麻毒素(RT)与两种毒素中和的单克隆抗体引起的促炎反应,SylH3和PB10。我们先前证明,蓖麻毒素免疫复合物(RIC)诱导高滴度毒素中和抗体的快速发作,持续数月。我们现在证明,这种反应依赖于CD4+T细胞的帮助,因为用抗CD4mAb治疗小鼠可在鼻内RIC暴露后消除RT特异性Ab的发作.为了确定与RIC暴露相关的炎症环境,我们收集了小鼠通过鼻内途径接受RT或RICs后6,12和18h的支气管肺泡灌洗液(BALF)和血清.32重细胞计数珠阵列显示RT引起的炎症谱主要由IL-6(BALF>1500倍增加)和其次由KC(CXCL1)引起,G-CSF,GM-CSF,和MCP-1。RIC在BALF和血清反应中诱导的炎症谱与RT相似,尽管水平明显下降。这些结果表明,RIC保留了诱导局部和全身性炎症细胞因子/趋化因子的能力,反过来,可能会影响肺粘膜和引流淋巴结中的Ag采样和呈现。更好地了解鼻内递送后免疫复合物的命运对于开发用于生物反应器和新出现的传染病的粘膜疫苗具有重要意义。
    The underlying contribution of immune complexes in modulating adaptive immunity in mucosal tissues remains poorly understood. In this report, we examined, in mice, the proinflammatory response elicited by intranasal delivery of the biothreat agent ricin toxin (RT) in association with two toxin-neutralizing mAbs, SylH3 and PB10. We previously demonstrated that ricin-immune complexes (RICs) induce the rapid onset of high-titer toxin-neutralizing Abs that persist for months. We now demonstrate that such responses are dependent on CD4+ T cell help, because treatment of mice with an anti-CD4 mAb abrogated the onset of RT-specific Abs following intranasal RICs exposure. To define the inflammatory environment associated with RIC exposure, we collected bronchoalveolar lavage fluid (BALF) and sera from mice 6, 12, and 18 h after they had received RT or RICs by the intranasal route. A 32-plex cytometric bead array revealed an inflammatory profile elicited by RT that was dominated by IL-6 (>1500-fold increase in BALF) and secondarily by KC (CXCL1), G-CSF, GM-CSF, and MCP-1. RICs induced inflammatory profiles in both BALF and serum response that were similar to RT, albeit at markedly reduced levels. These results demonstrate that RICs retain the capacity to induce local and systemic inflammatory cytokines/chemokines that, in turn, may influence Ag sampling and presentation in the lung mucosa and draining lymph nodes. A better understanding of the fate of immune complexes following intranasal delivery has implications for the development of mucosal vaccines for biothreats and emerging infectious diseases.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    基孔肯雅病毒(CHIKV)是疾病连续体的病原体,从急性短暂性基孔肯雅热到慢性失能病毒性关节痛。抗CHIKV抗体与补体系统之间的相互作用最近受到关注。然而,补体激活在CHIKV诱导的病理中的作用尚未完全阐明.本研究旨在描述补体激活在CHIKV诱导的疾病进展中的可能贡献。在这项研究中,使用基孔肯雅患者的血浆标本,慢性,和感染的恢复阶段,我们通过ELISA和Bio-Plex分析阐明了补体激活参与CHIKV疾病进展。进行了相关分析,以证明C1q结合的含IgG的循环免疫复合物(CIC-C1q)之间的相互关系,补体激活片段(C3a,C5a,sC5b-9),和补体调节的促炎细胞因子(IL-1β,IL-18、IL-6和TNF-α)。我们检测到补体激活片段升高,CIC-C1q,与健康对照组相比,不同患者组的补体调节细胞因子,表明补体系统的持续激活。此外,我们观察到CIC-C1q与补体激活片段和C3a与补体调节细胞因子IL-1β之间的统计学显着相关性,CHIKV疾病进展期间的IL-6和IL-18。一起来看,当前的数据提供了对CICS之间合理关联的洞察,补体激活,随后的补体调节细胞因子表达,和CHIKV病因病理学。
    Chikungunya virus (CHIKV) is a causative agent of a disease continuum, ranging from an acute transient chikungunya fever to chronic incapacitating viral arthralgia. The interaction between anti-CHIKV antibodies and the complement system has recently received attention. However, the contribution of complement activation in CHIKV-induced pathologies has not been fully elucidated. The present study was undertaken to delineate the possible contribution of complement activation in CHIKV-induced disease progression. In this study, using plasma specimens of chikungunya patients in the acute, chronic, and recovered phases of infection, we explicated the involvement of complement activation in CHIKV disease progression by ELISAs and Bio-Plex assays. Correlation analysis was carried out to demonstrate interrelation among C1q-binding IgG-containing circulating immune complexes (CIC-C1q), complement activation fragments (C3a, C5a, sC5b-9), and complement-modulated pro-inflammatory cytokines (IL-1β, IL-18, IL-6, and TNF-α). We detected elevated complement activation fragments, CIC-C1q, and complement-modulated cytokines in the varied patient groups compared with the healthy controls, indicating persistent activation of the complement system. Furthermore, we observed statistically significant correlations among CIC-C1q with complement activation fragments and C3a with complement modulatory cytokines IL-1β, IL-6, and IL-18 during the CHIKV disease progression. Taken together, the current data provide insight into the plausible association between CICs, complement activation, subsequent complement modulatory cytokine expression, and CHIKV etiopathology.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    背景:IgA肾病(IgAN)是一种肾脏疾病,其特征是与半乳糖缺陷型IgA1(Gd-IgA1)结合的IgG的循环免疫复合物在肾小球系膜肾小球中沉积。然而,关于IgA结合水平与IgAN中IgG的各种唾液酸化特征的关系,已经进行了有限的研究。
    方法:从IgAN患者中分离唾液酸化IgG(SA-IgG)和去唾液酸化IgG(DSA-IgG)。使用两种定制的商业ELISA试剂盒检测IgG-IgA免疫复合物(IgG-IgA-IC)。此外,用神经氨酸酶酶消化IgG以产生DSA-IgG。随后,使用ELISA试剂盒测定完整IgG和神经氨酸酶消化的DSA-IgG与Gd-IgA1的结合能力.
    结果:我们的研究表明,在IgAN患者中,SA-IgG水平与Gd-IgA1呈负相关(R=-0.16,p=0.03)。当使用Gd-IgA1测定试剂盒时,与DSA-IgG样品(0.78±0.12)相比,SA-IgG样品中IgG-IgA复合物的光密度(OD)水平显著更低(0.58±0.09)。使用IgG检测试剂盒证实了这些结果,结果表明,SA-IgG组的IgA指数(0.31±0.12)明显低于DSA-IgG组(0.57±0.19)。此外,我们研究了不同唾液酸水平的IgG与Gd-IgA1的结合能力。结果显示,IgG的神经氨酸酶消化增加了其与Gd-IgA1结合的倾向。此外,我们检查了完整IgG和DSA-IgG在不同混合比例下与Gd-IgA1的结合能力(IgG1.5µg和Gd-IgA11.5µg,IgG1.5µg和Gd-IgA13µg,IgG3µg和Gd-IgA11.5µg)。有趣的是,在测试的所有混合比率下,与完整IgG相比,DSA-IgG显示出与Gd-IgA1的显著更高的结合能力。
    结论:我们本研究的初步发现表明,纯化的唾液酸化IgG中IgA的结合水平低于去唾液酸化IgG。
    BACKGROUND: IgA nephropathy (IgAN) is a kidney disorder characterized by the deposition of circulating immune complexes of IgG bound to galactose-deficient IgA1 (Gd-IgA1) in the mesangial glomeruli. However, limited research has been conducted on the levels of IgA binding in relation to the various sialylation profiles of IgG in IgAN.
    METHODS: Sialylated IgG (SA-IgG) and desialylated IgG (DSA-IgG) were isolated from IgAN patients. The IgG-IgA immune complex (IgG-IgA-IC) was detected using two customized commercial ELISA kits. Additionally, IgG was enzymatically digested with neuraminidase to produce DSA-IgG. Subsequently, the binding capacities of both intact IgG and the neuraminidase-digested DSA-IgG with Gd-IgA1 were determined using ELISA kits.
    RESULTS: Our research revealed that SA-IgG levels were negatively correlated with Gd-IgA1 (R = -0.16, p = 0.03) in IgAN patients. The optical density (OD) levels of IgG-IgA complexes in SA-IgG samples were significantly lower (0.58 ± 0.09) compared to those in DSA-IgG samples (0.78 ± 0.12) when using the Gd-IgA1 assay kit. These results were confirmed using an IgG assay kit, which showed that the SA-IgG groups had significantly lower IgA indices (0.31 ± 0.12) compared to the DSA-IgG groups (0.57 ± 0.19). Furthermore, we investigated the binding capacity of IgG with different sialic acid levels to Gd-IgA1. The results revealed that neuraminidase digestion of IgG increased its propensity to bind to Gd-IgA1. Additionally, we examined the binding capacity of both intact IgG and DSA-IgG to Gd-IgA1 at different mix ratios (IgG 1.5 µg and Gd-IgA1 1.5 µg, IgG 1.5 µg and Gd-IgA1 3 µg, IgG 3 µg and Gd-IgA1 1.5 µg). Interestingly, DSA-IgG demonstrated significantly higher binding capacity to Gd-IgA1 compared to intact IgG at all mix ratios tested.
    CONCLUSIONS: The preliminary findings from our present study indicate that the binding level of IgA in purified sialylated IgG is lower than that in desialylated IgG.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    尽管抗体介导的肺损伤是输血相关急性肺损伤(ALI)的主要因素,自身免疫性肺病(例如,coatomer亚基α[COPA]综合征),和肺移植后的原发性移植物功能障碍,抗原-抗体复合物激活补体诱导肺损伤的机制尚不清楚.在本期JCI中,Cleary及其同事使用了几种方法来证明IgG与MHCI类同种抗体形成六聚体。在同种免疫肺损伤模型中,这种六聚体化是关键的病理生理机制,并通过经典的补体激活途径介导。此外,作者提供了探索这种目前难以治疗的临床实体的治疗方法的途径,该实体有多种病因,但有可能集中在机制上.
    Although antibody-mediated lung damage is a major factor in transfusion-related acute lung injury (ALI), autoimmune lung disease (for example, coatomer subunit α [COPA] syndrome), and primary graft dysfunction following lung transplantation, the mechanism by which antigen-antibody complexes activate complement to induce lung damage remains unclear. In this issue of the JCI, Cleary and colleagues utilized several approaches to demonstrate that IgG forms hexamers with MHC class I alloantibodies. This hexamerization served as a key pathophysiological mechanism in alloimmune lung injury models and was mediated through the classical pathway of complement activation. Additionally, the authors provided avenues for exploring therapeutics for this currently hard-to-treat clinical entity that has several etiologies but a potentially focused mechanism.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

公众号