Lindemann Max C, Glänzer Lukas, Roeth Anjali A, Schmitz-Rode Thomas, Slabu Ioana
Institute of Applied Medical Engineering, Helmholtz Institute, Medical Faculty, RWTH Aachen University, Pauwelsstraße 20, 52074 Aachen, Germany.
Department of General, Visceral and Transplant Surgery, RWTH Aachen University Hospital, Pauwelsstrasse 30, 52074 Aachen, Germany.
Cancers (Basel). 2023 Nov 9;15(22):5352. doi: 10.3390/cancers15225352.
For reliable in silico or in vitro investigations in, for example, biosensing and drug delivery applications, accurate models of tumor vascular networks down to the capillary size are essential. Compared to images acquired with conventional medical imaging techniques, digitalized histological tumor slices have a higher resolution, enabling the delineation of capillaries. Volume rendering procedures can then be used to generate a 3D model. However, the preparation of such slices leads to misalignments in relative slice orientation between consecutive slices. Thus, image registration algorithms are necessary to re-align the slices. Here, we present an algorithm for the registration and reconstruction of a vascular network from histologic slices applied to 169 tumor slices. The registration includes two steps. First, consecutive images are incrementally pre-aligned using feature- and area-based transformations. Second, using the previous transformations, parallel registration for all images is enabled. Combining intensity- and color-based thresholds along with heuristic analysis, vascular structures are segmented. A 3D interpolation technique is used for volume rendering. This results in a 3D vascular network with approximately 400-450 vessels with diameters down to 25-30 µm. A delineation of vessel structures with close distance was limited in areas of high structural density. Improvement can be achieved by using images with higher resolution and or machine learning techniques.
例如,对于生物传感和药物递送应用中可靠的计算机模拟或体外研究而言,精确到毛细血管尺寸的肿瘤血管网络模型至关重要。与传统医学成像技术获取的图像相比,数字化组织学肿瘤切片具有更高的分辨率,能够描绘出毛细血管。然后可以使用体绘制程序生成三维模型。然而,制备此类切片会导致连续切片之间的相对切片方向出现错位。因此,需要图像配准算法来重新对齐切片。在此,我们提出一种算法,用于从应用于169个肿瘤切片的组织学切片中对血管网络进行配准和重建。配准包括两个步骤。首先,使用基于特征和区域的变换对连续图像进行逐步预对齐。其次,利用先前的变换对所有图像进行并行配准。结合基于强度和颜色的阈值以及启发式分析,对血管结构进行分割。使用三维插值技术进行体绘制。这产生了一个三维血管网络,其中大约有400 - 450条直径低至25 - 30微米的血管。在高结构密度区域,近距离血管结构的描绘受到限制。通过使用更高分辨率的图像和/或机器学习技术可以实现改进。