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Digital Staining of High-Definition Fourier Transform Infrared (FT-IR) Images Using Deep Learning

机译:使用深度学习的高清傅里叶变换红外线(FT-IR)图像的数字染色

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Histological stains, such as hematoxylin and eosin (H&E), are routinely used in clinical diagnosis and research. While these labels offer a high degree of specificity, throughput is limited by the need for multiple samples. Traditional histology stains, such as immunohistochemical labels, also rely only on protein expression and cannot quantify small molecules and metabolites that may aid in diagnosis. Finally, chemical stains and dyes permanently alter the tissue, making downstream analysis impossible. Fourier transform infrared (FT-IR) spectroscopic imaging has shown promise for label-free characterization of important tissue phenotypes and can bypass the need for many chemical labels. Fourier transform infrared classification commonly leverages supervised learning, requiring human annotation that is tedious and prone to errors. One alternative is digital staining, which leverages machine learning to map IR spectra to a corresponding chemical stain. This replaces human annotation with computer-aided alignment. Previous work relies on alignment of adjacent serial tissue sections. Since the tissue samples are not identical at the cellular level, this technique cannot be applied to high-definition FT-IR images. In this paper, we demonstrate that cellular-level mapping can be accomplished using identical samples for both FT-IR and chemical labels. In addition, higher-resolution results can be achieved using a deep convolutional neural network that integrates spatial and spectral features.
机译:组织学污渍,例如苏木精和曙红(H&E),常常用于临床诊断和研究。虽然这些标签提供高度的特异性,但吞吐量受到多个样本的有限限制。传统的组织学污渍,例如免疫组织化学标记,也依赖于蛋白质表达,并且不能定量可能有助于诊断的小分子和代谢物。最后,化学污渍和染料永久性地改变了组织,使下游分析不可能。傅里叶变换红外(FT-IR)光谱成像已经显示出有关重要组织表型的无标记表征的承诺,并且可以绕过许多化学标签的需求。傅里叶变换红外分类常常利用监督学习,需要人类注释,这是乏味和易于错误的。一种替代方案是数字染色,从而利用机器学习将IR光谱映射到相应的化学污渍。这将用计算机辅助对齐取代人类注释。以前的工作依赖于相邻的串联组织部分的对准。由于组织样本在蜂窝水平处不相同,因此该技术不能应用于高清FT-IR图像。在本文中,我们证明可以使用用于FT-IR和化学标签的相同样本来完成细胞级映射。此外,可以使用集成空间和光谱特征的深度卷积神经网络来实现更高分辨率的结果。

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