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Computational detection and quantification of human and mouse neutrophil extracellular traps in flow cytometry and confocal microscopy

机译:流式细胞术和共聚焦显微镜中人和小鼠嗜中性白细胞胞外捕获物的计算检测和定量

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摘要

Neutrophil extracellular traps (NETs) are extracellular defense mechanisms used by neutrophils, where chromatin is expelled together with histones and granular/cytoplasmic proteins. They have become an immunology hotspot, implicated in infections, but also in a diverse array of diseases such as systemic lupus erythematosus, diabetes, and cancer. However, the precise assessment of in vivo relevance in different disease settings has been hampered by limited tools to quantify occurrence of extracellular traps in experimental models and human samples. To expedite progress towards improved quantitative tools, we have developed computational pipelines to identify extracellular traps from an in vitro human samples visualized using the ImageStream® platform (Millipore Sigma, Darmstadt, Germany), and confocal images of an in vivo mouse disease model of aspergillus fumigatus pneumonia. Our two in vitro methods, tested on n = 363 =145 images respectively, achieved holdout sensitivity/specificity 0.98/0.93 and 1/0.92. Our unsupervised method for thin lung tissue sections in murine fungal pneumonia achieved sensitivity/specificity 0.99/0.98 in n = 14 images. Our supervised method for thin lung tissue classified NETs with sensitivity/specificity 0.86/0.90. We expect that our approach will be of value for researchers, and have application in infectious and inflammatory diseases.
机译:中性粒细胞胞外陷阱(NETs)是中性粒细胞使用的细胞外防御机制,其中染色质与组蛋白和颗粒/胞质蛋白一起被排出。它们已经成为免疫学的热点,不仅与感染有关,而且与系统性红斑狼疮,糖尿病和癌症等多种疾病有关。但是,由于有限的工具无法量化实验模型和人体样品中细胞外陷阱的发生,因此无法准确评估不同疾病背景下的体内相关性。为了加快改进定量工具的进度,我们开发了计算管道,可从使用ImageStream ®平台(Millipore Sigma,德国达姆施塔特,德国)可视化的体外人类样品中识别细胞外陷阱,并共聚焦图像。烟曲霉性肺炎的体内小鼠疾病模型。我们的两种体外方法分别在n = 363 / n = 145的图像上进行了测试,其保持灵敏度/特异性分别为0.98 / 0.93和1 / 0.92。我们在鼠类真菌性肺炎中肺组织薄切片的无监督方法在n = 14的图像中实现了灵敏度/特异性0.99 / 0.98。我们对薄型肺组织分类的NET进行监督的方法,灵敏度/特异性为0.86 / 0.90。我们希望我们的方法对研究人员有价值,并已应用于传染性和炎性疾病。

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