利用全息层析显微镜和U-Net技术对内皮细胞线粒体进行无标记可视化和分割

Raul Michael, Tallah Modirzadeh, Tahir Bachar Issa and Patrick Jurney*, 
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引用次数: 0

摘要

了解心血管疾病(CVD)的生理过程需要检查内皮细胞(EC)线粒体网络,因为线粒体功能和三磷酸腺苷的产生对EC代谢至关重要,从而影响CVD的进展。虽然目前的生化分析和免疫荧光显微镜可以揭示线粒体功能如何影响细胞代谢,但它们无法通过融合和裂变事件实现线粒体网络的实时观察和跟踪变化。全息层析显微镜(HTM)已经成为一种很有前途的技术,用于实时、无标记地可视化内皮细胞及其细胞器,如线粒体。这种无损、无干扰的活细胞成像方法为观察线粒体网络动力学提供了前所未有的机会。然而,由于现有的基于免疫荧光显微镜技术的图像处理工具与HTM图像不兼容,因此需要机器学习模型。在这里,我们开发了一个使用U-net学习器和Resnet18编码器的模型,以识别HTM图像中的四个类别:线粒体网络、细胞边界、ec和背景。这种方法可以准确地识别线粒体的结构和位置。通过高精度和相似性度量,输出图像成功地在ec的HTM图像中提供了线粒体网络的可视化。这种方法使线粒体网络及其影响的研究成为可能,并有望推进对心血管疾病机制的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Label-Free Visualization and Segmentation of Endothelial Cell Mitochondria Using Holotomographic Microscopy and U-Net

Understanding the physiological processes underlying cardiovascular disease (CVD) requires examination of endothelial cell (EC) mitochondrial networks, because mitochondrial function and adenosine triphosphate production are crucial in EC metabolism, and consequently influence CVD progression. Although current biochemical assays and immunofluorescence microscopy can reveal how mitochondrial function influences cellular metabolism, they cannot achieve live observation and tracking changes in mitochondrial networks through fusion and fission events. Holotomographic microscopy (HTM) has emerged as a promising technique for real-time, label-free visualization of ECs and their organelles, such as mitochondria. This nondestructive, noninterfering live cell imaging method offers unprecedented opportunities to observe mitochondrial network dynamics. However, because existing image processing tools based on immunofluorescence microscopy techniques are incompatible with HTM images, a machine-learning model is required. Here, we developed a model using a U-net learner with a Resnet18 encoder to identify four classes within HTM images: mitochondrial networks, cell borders, ECs, and background. This method accurately identifies mitochondrial structures and positions. With high accuracy and similarity metrics, the output image successfully provides visualization of mitochondrial networks within HTM images of ECs. This approach enables the study of mitochondrial networks and their effects, and holds promise in advancing understanding of CVD mechanisms.

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来源期刊
Chemical & Biomedical Imaging
Chemical & Biomedical Imaging 化学与生物成像-
CiteScore
1.00
自引率
0.00%
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期刊介绍: Chemical & Biomedical Imaging is a peer-reviewed open access journal devoted to the publication of cutting-edge research papers on all aspects of chemical and biomedical imaging. This interdisciplinary field sits at the intersection of chemistry physics biology materials engineering and medicine. The journal aims to bring together researchers from across these disciplines to address cutting-edge challenges of fundamental research and applications.Topics of particular interest include but are not limited to:Imaging of processes and reactionsImaging of nanoscale microscale and mesoscale materialsImaging of biological interactions and interfacesSingle-molecule and cellular imagingWhole-organ and whole-body imagingMolecular imaging probes and contrast agentsBioluminescence chemiluminescence and electrochemiluminescence imagingNanophotonics and imagingChemical tools for new imaging modalitiesChemical and imaging techniques in diagnosis and therapyImaging-guided drug deliveryAI and machine learning assisted imaging
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