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Enabling histopathological annotations on immunofluorescent images through virtualization of hematoxylin and eosin

机译:通过苏木精和曙红的虚拟化在免疫荧光图像上启用组织病理学注释

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Context: Medical diagnosis and clinical decisions rely heavily on the histopathological evaluation of tissue samples, especially in oncology. Historically, classical histopathology has been the gold standard for tissue evaluation and assessment by pathologists. The most widely and commonly used dyes in histopathology are hematoxylin and eosin (H&E) as most malignancies diagnosis is largely based on this protocol. H&E staining has been used for more than a century to identify tissue characteristics and structures morphologies that are needed for tumor diagnosis. In many cases, as tissue is scarce in clinical studies, fluorescence imaging is necessary to allow staining of the same specimen with multiple biomarkers simultaneously. Since fluorescence imaging is a relatively new technology in the pathology landscape, histopathologists are not used to or trained in annotating or interpreting these images. Aims, Settings and Design: To allow pathologists to annotate these images without the need for additional training, we designed an algorithm for the conversion of fluorescence images to brightfield H&E images. Subjects and Methods: In this algorithm, we use fluorescent nuclei staining to reproduce the hematoxylin information and natural tissue autofluorescence to reproduce the eosin information avoiding the necessity to specifically stain the proteins or intracellular structures with an additional fluorescence stain. Statistical Analysis Used: Our method is based on optimizing a transform function from fluorescence to H&E images using least mean square optimization. Results: It results in high quality virtual H&E digital images that can easily and efficiently be analyzed by pathologists. We validated our results with pathologists by making them annotate tumor in real and virtual H&E whole slide images and we obtained promising results. Conclusions: Hence, we provide a solution that enables pathologists to assess tissue and annotate specific structures based on multiplexed fluorescence images.
机译:背景:医学诊断和临床决策在很大程度上取决于组织样本的组织病理学评估,尤其是在肿瘤学方面。从历史上看,经典的组织病理学一直是病理学家进行组织评估和评估的金标准。在组织病理学中最广泛和最常用的染料是苏木精和曙红(H&E),因为大多数恶性肿瘤的诊断很大程度上基于此方案。 H&E染色已用于识别肿瘤诊断所需的组织特征和结构形态已有一个多世纪的历史了。在许多情况下,由于临床研究中的组织稀缺,因此必须进行荧光成像才能使同一样本同时被多个生物标记物染色。由于荧光成像是病理学领域中的一种相对较新的技术,因此组织病理学家不习惯于或未受过注释或解释这些图像的培训。目的,设置和设计:为了让病理学家无需额外的培训即可注释这些图像,我们设计了一种将荧光图像转换为明场H&E图像的算法。主题和方法:在该算法中,我们使用荧光核染色来复制苏木精信息,并使用自然组织自体荧光来复制曙红信息,从而避免了使用额外的荧光染色剂对蛋白质或细胞内结构进行特异性染色的必要。使用的统计分析:我们的方法基于使用最小均方优化来优化从荧光到H&E图像的转换函数。结果:可以生成高质量的虚拟H&E数字图像,病理医生可以轻松,高效地对其进行分析。我们通过让病理学家在真实和虚拟的H&E完整幻灯片图像中对肿瘤进行注释来验证我们的结果,并获得了可喜的结果。结论:因此,我们提供了一种使病理学家能够根据多重荧光图像评估组织并注释特定结构的解决方案。

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