Translational Imaging Group, CMIC, University College London, UK.
Translational Imaging Group, CMIC, University College London, UK.
Med Image Anal. 2018 May;46:73-105. doi: 10.1016/j.media.2018.02.004. Epub 2018 Feb 21.
Histology permits the observation of otherwise invisible structures of the internal topography of a specimen. Although it enables the investigation of tissues at a cellular level, it is invasive and breaks topology due to cutting. Three-dimensional (3D) reconstruction was thus introduced to overcome the limitations of single-section studies in a dimensional scope. 3D reconstruction finds its roots in embryology, where it enabled the visualisation of spatial relationships of developing systems and organs, and extended to biomedicine, where the observation of individual, stained sections provided only partial understanding of normal and abnormal tissues. However, despite bringing visual awareness, recovering realistic reconstructions is elusive without prior knowledge about the tissue shape. 3D medical imaging made such structural ground truths available. In addition, combining non-invasive imaging with histology unveiled invaluable opportunities to relate macroscopic information to the underlying microscopic properties of tissues through the establishment of spatial correspondences; image registration is one technique that permits the automation of such a process and we describe reconstruction methods that rely on it. It is thereby possible to recover the original topology of histology and lost relationships, gain insight into what affects the signals used to construct medical images (and characterise them), or build high resolution anatomical atlases. This paper reviews almost three decades of methods for 3D histology reconstruction from serial sections, used in the study of many different types of tissue. We first summarise the process that produces digitised sections from a tissue specimen in order to understand the peculiarity of the data, the associated artefacts and some possible ways to minimise them. We then describe methods for 3D histology reconstruction with and without the help of 3D medical imaging, along with methods of validation and some applications. We finally attempt to identify the trends and challenges that the field is facing, many of which are derived from the cross-disciplinary nature of the problem as it involves the collaboration between physicists, histolopathologists, computer scientists and physicians.
组织学允许观察标本内部形貌的原本不可见结构。虽然它能够在细胞水平上研究组织,但它是一种侵入性的方法,会因切割而破坏拓扑结构。因此,引入了三维(3D)重建来克服在维度范围内进行单截面研究的局限性。3D 重建起源于胚胎学,它使人们能够可视化发育系统和器官的空间关系,并扩展到生物医学领域,在该领域中,观察单个染色切片只能提供对正常和异常组织的部分理解。然而,尽管 3D 重建带来了视觉上的认识,但如果没有关于组织形状的先验知识,就很难恢复逼真的重建。3D 医学成像为此提供了结构上的真实情况。此外,将非侵入性成像与组织学相结合,通过建立空间对应关系,为将宏观信息与组织的微观特性相关联提供了宝贵的机会;图像配准是一种允许自动完成此过程的技术,我们描述了依赖它的重建方法。因此,可以恢复组织学的原始拓扑结构和丢失的关系,深入了解影响用于构建医学图像的信号的因素(并对其进行特征描述),或构建高分辨率解剖图谱。本文回顾了近三十年来自连续切片的 3D 组织学重建方法,这些方法用于研究许多不同类型的组织。我们首先总结了从组织标本生成数字化切片的过程,以便了解数据的特殊性、相关的伪影以及一些可能的最小化方法。然后,我们描述了有无 3D 医学成像帮助的 3D 组织学重建方法,以及验证方法和一些应用。最后,我们试图确定该领域面临的趋势和挑战,其中许多是由该问题的跨学科性质引起的,因为它涉及物理学家、组织病理学家、计算机科学家和医生之间的合作。