Bright-field to fluorescence microscopy image translation for cell nuclei health quantification.

Biological imaging Pub Date : 2023-06-15 eCollection Date: 2023-01-01 DOI:10.1017/S2633903X23000120
Ruixiong Wang, Daniel Butt, Stephen Cross, Paul Verkade, Alin Achim
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Abstract

Microscopy is a widely used method in biological research to observe the morphology and structure of cells. Amongst the plethora of microscopy techniques, fluorescent labeling with dyes or antibodies is the most popular method for revealing specific cellular organelles. However, fluorescent labeling also introduces new challenges to cellular observation, as it increases the workload, and the process may result in nonspecific labeling. Recent advances in deep visual learning have shown that there are systematic relationships between fluorescent and bright-field images, thus facilitating image translation between the two. In this article, we propose the cross-attention conditional generative adversarial network (XAcGAN) model. It employs state-of-the-art GANs (GANs) to solve the image translation task. The model uses supervised learning and combines attention-based networks to explore spatial information during translation. In addition, we demonstrate the successful application of XAcGAN to infer the health state of translated nuclei from bright-field microscopy images. The results show that our approach achieves excellent performance both in terms of image translation and nuclei state inference.

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用于细胞核健康量化的亮场到荧光显微镜图像转换
摘要显微镜是生物学研究中广泛使用的观察细胞形态和结构的方法。在众多的显微镜技术中,用染料或抗体进行荧光标记是揭示特定细胞器的最流行方法。然而,荧光标记也给细胞观察带来了新的挑战,因为它增加了工作量,并且这个过程可能导致非特异性标记。深度视觉学习的最新进展表明,荧光和亮场图像之间存在系统关系,从而促进了两者之间的图像翻译。在本文中,我们提出了交叉注意条件生成对抗性网络(XAcGAN)模型。它采用最先进的GANs(GANs)来解决图像翻译任务。该模型使用监督学习并结合基于注意力的网络来探索翻译过程中的空间信息。此外,我们还展示了XAcGAN在从亮场显微镜图像推断翻译细胞核健康状态方面的成功应用。结果表明,我们的方法在图像翻译和核状态推断方面都取得了优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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