使用 In-and-Out Net 进行单色虚拟 H&E 染色。

ArXiv Pub Date : 2024-11-22
Mengkun Chen, Yen-Tung Liu, Fadeel Sher Khan, Matthew C Fox, Jason S Reichenberg, Fabiana C P S Lopes, Katherine R Sebastian, Mia K Markey, James W Tunnell
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引用次数: 0

摘要

虚拟染色法通过从未染色或不同染色的图像中以数字方式生成染色图像,从而简化了传统染色程序。传统染色方法涉及耗时的化学过程,而虚拟染色提供了一种高效、低基础设施的替代方法。利用共聚焦显微镜等基于显微镜的技术,研究人员可以加快组织分析,而无需进行物理切片。然而,对于习惯于传统组织染色图像的病理学家和外科医生来说,解读灰度或伪彩色显微图像仍然是一项挑战。为了填补这一空白,各种研究都在探索通过数字模拟染色来模仿目标组织学染色。本文介绍了一种专为虚拟染色任务设计的新型网络--In-and-Out Net。基于生成对抗网络(GAN),我们的模型能有效地将反射共聚焦显微镜(RCM)图像转换为苏木精和伊红(H&E)染色图像。我们使用氯化铝对皮肤组织进行预处理,增强了 RCM 图像中的细胞核对比度。利用具有两个荧光通道的虚拟 H\&E 标签训练模型,无需进行图像配准,就能提供像素级的地面实况。我们的贡献包括提出了最佳训练策略,进行了比较分析,展示了最先进的性能,通过消融研究验证了模型,并收集了完全匹配的输入图像和无需配准的地面实况图像。In-and-Out Net 展示了有前景的结果,为虚拟染色任务提供了有价值的工具,并推动了组织学图像分析领域的发展。
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Single color digital H&E staining with In-and-Out Net.

Virtual staining streamlines traditional staining procedures by digitally generating stained images from unstained or differently stained images. While conventional staining methods involve time-consuming chemical processes, virtual staining offers an efficient and low infrastructure alternative. Leveraging microscopy-based techniques, such as confocal microscopy, researchers can expedite tissue analysis without the need for physical sectioning. However, interpreting grayscale or pseudo-color microscopic images remains a challenge for pathologists and surgeons accustomed to traditional histologically stained images. To fill this gap, various studies explore digitally simulating staining to mimic targeted histological stains. This paper introduces a novel network, In-and-Out Net, specifically designed for virtual staining tasks. Based on Generative Adversarial Networks (GAN), our model efficiently transforms Reflectance Confocal Microscopy (RCM) images into Hematoxylin and Eosin (H&E) stained images. We enhance nuclei contrast in RCM images using aluminum chloride preprocessing for skin tissues. Training the model with virtual H\&E labels featuring two fluorescence channels eliminates the need for image registration and provides pixel-level ground truth. Our contributions include proposing an optimal training strategy, conducting a comparative analysis demonstrating state-of-the-art performance, validating the model through an ablation study, and collecting perfectly matched input and ground truth images without registration. In-and-Out Net showcases promising results, offering a valuable tool for virtual staining tasks and advancing the field of histological image analysis.

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