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Digital staining through the application of deep neural networks to multi-modal multi-photon microscopy

机译:通过将深度神经网络应用于多模式多光子显微镜进行数字染色

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摘要

Deep neural networks have been used to map multi-modal, multi-photon microscopy measurements of a label-free tissue sample to its corresponding histologically stained brightfield microscope colour image. It is shown that the extra structural and functional contrasts provided by using two source modes, namely two-photon excitation microscopy and fluorescence lifetime imaging, result in a more faithful reconstruction of the target haematoxylin and eosin stained mode. This modal mapping procedure can aid histopathologists, since it provides access to unobserved imaging modalities, and translates the high-dimensional numerical data generated by multi-modal, multi-photon microscopy into traditionally accepted visual forms. Furthermore, by combining the strengths of traditional chemical staining and modern multi-photon microscopy techniques, modal mapping enables label-free, non-invasive studies of in vivo tissue samples or intravital microscopic imaging inside living animals. The results show that modal co-registration and the inclusion of spatial variations increase the visual accuracy of the mapped results.
机译:深度神经网络已用于将无标记组织样品的多模式,多光子显微镜测量结果映射到其相应的组织学染色明视野显微镜彩色图像。结果表明,使用两种源模式提供的额外结构和功能对比,即双光子激发显微镜和荧光寿命成像,可以更忠实地重建目标苏木精和曙红染色模式。这种模式映射过程可以为组织病理学家提供帮助,因为它可以访问未观察到的成像模式,并将多模式,多光子显微镜产生的高维数值数据转换为传统上可接受的视觉形式。此外,通过结合传统化学染色和现代多光子显微镜技术的优势,模态作图可以对活体动物体内组织样本或活体显微成像进行无标签,无创研究。结果表明,模态共配准和空间变化的包含增加了映射结果的视觉准确性。

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