Sagar Md Motiur Rahman, D'Amico Lorenzo, Longo Elena, Persson Irma Mahmutovic, Deyhle Richard, Tromba Giuliana, Bayat Sam, Alves Frauke, Dullin Christian
Translational Molecular Imaging, Max-Plank-Institute for Multidisciplinary Sciences, Germany.
Elettra-Sincrotrone Trieste SCpA, Italy.
J Synchrotron Radiat. 2025 May 1;32(Pt 3):678-689. doi: 10.1107/S1600577525001511. Epub 2025 Mar 26.
3D virtual histology of formalin-fixed and paraffin-embedded (FFPE) tissue by means of phase contrast micro-computed tomography (micro-CT) is an increasingly popular technique, as it allows the 3D architecture of the tissue to be addressed without the need of additional heavy ion based staining approaches. Therefore, it can be applied on archived standard FFPE tissue blocks. However, one of the major concerns of using phase contrast micro-CT in combination with FFPE tissue blocks is the trapped air within the tissue. While air inclusion within the FFPE tissue block does not strongly impact the workflow and quality of classical histology, it creates serious obstacles in 3D visualization of detailed morphology. In particular, the 3D analysis of structural features is challenging, due to a strong edge effect caused by the phase shift at the air-tissue/paraffin interface. Despite certain improvements in sample preparation to eliminate air inclusion, such as the use of negative pressure, it is not always possible to remove all trapped air, for example in soft tissues such as lung. Here, we present a novel workflow based on conditional generative adversarial networks (cGANs) to effectively replace these air artifact regions with generated tissue, which are influenced by the surrounding content. Our results show that this approach not only improves the visualization of the lung tissue but also eases the use of structural analysis on the air artifact-suppressed phase contrast micro-CT scans. In addition, we demonstrate the transferability of the generative model to FFPE specimens of porcine lung tissue.
通过相衬显微计算机断层扫描(micro-CT)对福尔马林固定石蜡包埋(FFPE)组织进行三维虚拟组织学分析是一种越来越受欢迎的技术,因为它无需额外的基于重离子的染色方法就能研究组织的三维结构。因此,它可应用于存档的标准FFPE组织块。然而,将相衬micro-CT与FFPE组织块结合使用的一个主要问题是组织内存在滞留空气。虽然FFPE组织块中的空气夹杂对传统组织学的工作流程和质量影响不大,但在详细形态的三维可视化方面却造成了严重障碍。特别是,由于空气-组织/石蜡界面处的相移导致强烈的边缘效应,结构特征的三维分析具有挑战性。尽管在样本制备方面采取了一些改进措施来消除空气夹杂,如使用负压,但并非总能去除所有滞留空气,例如在肺等软组织中。在此,我们提出一种基于条件生成对抗网络(cGANs)的新型工作流程,以用受周围内容影响而生成的组织有效替换这些空气伪影区域。我们的结果表明,这种方法不仅改善了肺组织可视化,还便于对空气伪影抑制后的相衬micro-CT扫描进行结构分析。此外,我们证明了生成模型对猪肺组织FFPE标本的可转移性。