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DeepHCS: Bright-Field to Fluorescence Microscopy Image Conversion Using Deep Learning for Label-Free High-Content Screening

机译:DeepHCS:使用深度学习的无标记高含量筛选的荧光显微镜图像转换的明亮场

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In this paper, we propose a novel image processing method, DeepHCS, to transform bright-field microscopy images into synthetic fluorescence images of cell nuclei biomarkers commonly used in high-content drug screening. The main motivation of the proposed work is to automatically generate virtual biomarker images from conventional bright-field images, which can greatly reduce time-consuming and laborious tissue preparation efforts and improve the throughput of the screening process. DeepHCS uses bright-field images and their corresponding cell nuclei staining (DAPI) fluorescence images as a set of image pairs to train a series of end-to-end deep convolutional neural networks. By leveraging a state-of-the-art deep learning method, the proposed method can produce synthetic fluorescence images comparable to real DAPI images with high accuracy. We demonstrate the efficacy of this method using a real glioblastoma drug screening dataset with various quality metrics, including PSNR, SSIM, cell viability correlation (CVC), the area under the curve (AUC), and the IC50.
机译:在本文中,我们提出了一种新颖的图像处理方法,DeepHC,将亮场显微镜图像转化为常用于高含量药物筛选的细胞核生物标志物的合成荧光图像。所提出的工作的主要动机是从传统的明亮场图像自动生成虚拟生物标志物图像,这可以大大减少耗时和费力的组织制备努力,提高筛选过程的吞吐量。 DeepHCS使用亮场图像及其相应的细胞核染色(DAPI)荧光图像作为一组图像对,以训练一系列端到端的深卷积神经网络。通过利用最先进的深度学习方法,所提出的方法可以产生与高精度相当的合成荧光图像相当。我们证明了使用具有各种质量指标的真实胶质母细胞瘤药物筛选数据集的这种方法的疗效,包括PSNR,SSSIM,细胞活力相关(CVC),曲线下的区域(AUC)和IC50。

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