Label-free evaluation of lung and heart transplant biopsies using virtual staining

Yuzhu Li, Nir Pillar, Tairan Liu, Guangdong Ma, Yuxuan Qi, Kevin de Haan, Yijie Zhang, Xilin Yang, Adrian J. Correa, Guangqian Xiao, Kuang-Yu Jen, Kenneth A. Iczkowski, Yulun Wu, William Dean Wallace, Aydogan Ozcan
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Abstract

Organ transplantation serves as the primary therapeutic strategy for end-stage organ failures. However, allograft rejection is a common complication of organ transplantation. Histological assessment is essential for the timely detection and diagnosis of transplant rejection and remains the gold standard. Nevertheless, the traditional histochemical staining process is time-consuming, costly, and labor-intensive. Here, we present a panel of virtual staining neural networks for lung and heart transplant biopsies, which digitally convert autofluorescence microscopic images of label-free tissue sections into their brightfield histologically stained counterparts, bypassing the traditional histochemical staining process. Specifically, we virtually generated Hematoxylin and Eosin (H&E), Masson's Trichrome (MT), and Elastic Verhoeff-Van Gieson (EVG) stains for label-free transplant lung tissue, along with H&E and MT stains for label-free transplant heart tissue. Subsequent blind evaluations conducted by three board-certified pathologists have confirmed that the virtual staining networks consistently produce high-quality histology images with high color uniformity, closely resembling their well-stained histochemical counterparts across various tissue features. The use of virtually stained images for the evaluation of transplant biopsies achieved comparable diagnostic outcomes to those obtained via traditional histochemical staining, with a concordance rate of 82.4% for lung samples and 91.7% for heart samples. Moreover, virtual staining models create multiple stains from the same autofluorescence input, eliminating structural mismatches observed between adjacent sections stained in the traditional workflow, while also saving tissue, expert time, and staining costs.
利用虚拟染色技术对肺和心脏移植活检组织进行无标记评估
器官移植是晚期器官衰竭的主要治疗策略。然而,异体移植排斥反应是器官移植的常见并发症。组织学评估对于及时发现和诊断移植排斥反应至关重要,目前仍是金标准。然而,传统的组织化学染色过程耗时长、成本高、劳动强度大。在这里,我们展示了一个用于肺和心脏移植活检的虚拟染色神经网络面板,它能将无标记组织切片的自动荧光显微图像数字化转换成经组织学染色的明场图像,从而绕过了传统的组织化学染色过程。具体来说,我们为无标记的移植肺组织虚拟生成了血红素和伊红(H&E)、马森三色素(MT)和弹性维尔霍夫-范吉森(EVG)染色,并为无标记的移植心脏组织虚拟生成了 H&E 和 MT 染色。随后,由三位经委员会认证的病理学家进行的盲法评估证实,虚拟染色网络能始终如一地生成高质量的组织学图像,色彩均匀度高,在各种组织特征上与染色良好的组织化学图像非常相似。此外,虚拟染色模型从相同的荧光输入创建多个染色,消除了传统工作流程中染色的相邻切片之间的结构不匹配现象,同时还节省了组织、专家时间和染色成本。
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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