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学习观察颜色:针对脂肪细胞图像的生物学相关虚拟染色。

Learning to see colours: Biologically relevant virtual staining for adipocyte cell images.

机构信息

Department of Information Technology, Uppsala University, Uppsala, Sweden.

Department of Pharmaceutical Biosciences, Uppsala University, Uppsala, Sweden.

出版信息

PLoS One. 2021 Oct 15;16(10):e0258546. doi: 10.1371/journal.pone.0258546. eCollection 2021.

Abstract

Fluorescence microscopy, which visualizes cellular components with fluorescent stains, is an invaluable method in image cytometry. From these images various cellular features can be extracted. Together these features form phenotypes that can be used to determine effective drug therapies, such as those based on nanomedicines. Unfortunately, fluorescence microscopy is time-consuming, expensive, labour intensive, and toxic to the cells. Bright-field images lack these downsides but also lack the clear contrast of the cellular components and hence are difficult to use for downstream analysis. Generating the fluorescence images directly from bright-field images using virtual staining (also known as "label-free prediction" and "in-silico labeling") can get the best of both worlds, but can be very challenging to do for poorly visible cellular structures in the bright-field images. To tackle this problem deep learning models were explored to learn the mapping between bright-field and fluorescence images for adipocyte cell images. The models were tailored for each imaging channel, paying particular attention to the various challenges in each case, and those with the highest fidelity in extracted cell-level features were selected. The solutions included utilizing privileged information for the nuclear channel, and using image gradient information and adversarial training for the lipids channel. The former resulted in better morphological and count features and the latter resulted in more faithfully captured defects in the lipids, which are key features required for downstream analysis of these channels.

摘要

荧光显微镜通过荧光染色来可视化细胞成分,是图像细胞术的一种非常有价值的方法。从这些图像中可以提取出各种细胞特征。这些特征共同构成了表型,可以用于确定有效的药物治疗方法,如基于纳米医学的治疗方法。不幸的是,荧光显微镜耗时、昂贵、劳动强度大,对细胞也有毒性。明场图像虽然没有这些缺点,但也缺乏细胞成分的明显对比度,因此难以用于下游分析。使用虚拟染色(也称为“无标记预测”和“计算机标记”)直接从明场图像生成荧光图像,可以兼得两者的优势,但对于明场图像中不易观察的细胞结构来说,这可能非常具有挑战性。为了解决这个问题,研究人员探索了深度学习模型,以学习用于脂肪细胞图像的明场和荧光图像之间的映射。这些模型针对每个成像通道进行了定制,特别注意每种情况下的各种挑战,并选择了提取细胞级特征最准确的模型。解决方案包括为核通道利用特权信息,以及为脂质通道利用图像梯度信息和对抗训练。前者导致更好的形态和计数特征,而后者则更忠实地捕获了脂质中的缺陷,这些缺陷是这些通道下游分析所必需的关键特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f337/8519425/9fe83e239e37/pone.0258546.g001.jpg

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