中性粒细胞胞外诱捕网形成过程中中性粒细胞、细胞外DNA与凝血因子的共定位:基于免疫荧光显微镜平台的开发与应用

Colocalization of neutrophils, extracellular DNA and coagulation factors during NETosis: Development and utility of an immunofluorescence-based microscopy platform.

作者信息

Healy Laura D, Puy Cristina, Itakura Asako, Chu Tiffany, Robinson David K, Bylund Alan, Phillips Kevin G, Gardiner Elizabeth E, McCarty Owen J T

机构信息

Department of Cell, Developmental & Cancer Biology, Oregon Health & Science University, Portland, OR, USA.

Department of Biomedical Engineering, Oregon Health & Science University, Portland, OR, USA.

出版信息

J Immunol Methods. 2016 Aug;435:77-84. doi: 10.1016/j.jim.2016.06.002. Epub 2016 Jun 7.

Abstract

BACKGROUND

Neutrophils, the most populous innate immune cell type, are the first responders to sites of infection and inflammation. Neutrophils can release their DNA to form extracellular traps (NETs), webs of DNA and granular proteases that contribute to pathogen clearance and promote thrombus formation. At present, the study of NETs is in part limited to the qualitative analysis of fluorescence microscopy-based images, thus quantification of the interactions between NETs and coagulation factors remains ill-defined.

AIM

Develop a quantitative method to measure the spatial distribution of DNA and colocalization of coagulation factor binding to neutrophils and NETs utilizing fluorescence-based microscopy.

APPROACH

Human neutrophils were purified from peripheral blood, bound to fibronectin and treated with the PKC-activator phorbol myristate acetate (PMA) to induce neutrophil activation and NETs formation. Samples were incubated with purified coagulation factors or plasma before staining with a DNA-binding dye and coagulation factor-specific antibodies. The spatial distribution of DNA and coagulation factors was imaged via fluorescence microscopy and quantified via a custom-built MATLAB-based image analysis algorithm. The algorithm first established global thresholding parameters on a training set of fluorescence image data and then systematically quantified intensity profiles across treatment conditions. Quantitative comparison of treatment conditions was enabled through the normalization of fluorescent intensities using the number of cells per image to determine the percent and area of DNA and coagulation factor binding per cell.

RESULTS

Upon stimulation with PMA, NETs formation resulted in an increase in the area of DNA per cell. The coagulation factor fibrinogen bound to both the neutrophil cell body as well as NETs, while prothrombin, FX and FVIIa binding was restricted to the neutrophil cell body. The Gla domain of FX was required to mediate FX-neutrophil binding. Activated protein C (APC), but not Gla-less APC, bound to neutrophil cell bodies and NETs in a punctate manner. Neither FXIIa nor FXIa were found to bind either neutrophil cell bodies or NETs. Fibrinogen binding was dependent on extracellular DNA, while FX and APC required phosphatidylserine exposure for binding to activated neutrophils.

CONCLUSIONS

We have developed a quantitative measurement platform to define the spatial localization of fluorescently-labeled coagulation factor binding to neutrophils and extracellular DNA during NETosis.

摘要

背景

中性粒细胞是数量最多的固有免疫细胞类型,是感染和炎症部位的首批应答者。中性粒细胞可释放其DNA以形成细胞外陷阱(NETs),即由DNA和颗粒蛋白酶构成的网络,有助于病原体清除并促进血栓形成。目前,对NETs的研究部分局限于基于荧光显微镜图像的定性分析,因此NETs与凝血因子之间相互作用的定量研究仍不明确。

目的

开发一种定量方法,利用基于荧光的显微镜测量DNA的空间分布以及凝血因子与中性粒细胞和NETs结合的共定位情况。

方法

从外周血中纯化人中性粒细胞,使其与纤连蛋白结合,并用蛋白激酶C激活剂佛波酯肉豆蔻酸酯乙酸酯(PMA)处理以诱导中性粒细胞活化和NETs形成。在用DNA结合染料和凝血因子特异性抗体染色之前,将样品与纯化的凝血因子或血浆孵育。通过荧光显微镜对DNA和凝血因子的空间分布进行成像,并通过基于MATLAB的定制图像分析算法进行定量。该算法首先在荧光图像数据的训练集上建立全局阈值参数,然后系统地量化不同处理条件下的强度分布。通过使用每张图像中的细胞数量对荧光强度进行归一化,以确定每个细胞的DNA和凝血因子结合百分比及面积,从而实现对处理条件的定量比较。

结果

在用PMA刺激后,NETs形成导致每个细胞的DNA面积增加。凝血因子纤维蛋白原与中性粒细胞胞体以及NETs均结合,而凝血酶原、FX和FVIIa的结合则局限于中性粒细胞胞体。FX的Gla结构域是介导FX与中性粒细胞结合所必需的。活化蛋白C(APC),而非无Gla的APC,以点状方式与中性粒细胞胞体和NETs结合。未发现FXIIa和FXIa与中性粒细胞胞体或NETs结合。纤维蛋白原的结合依赖于细胞外DNA,而FX和APC需要磷脂酰丝氨酸暴露才能与活化的中性粒细胞结合。

结论

我们开发了一种定量测量平台,以确定在NETosis过程中荧光标记的凝血因子与中性粒细胞和细胞外DNA结合的空间定位。

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