Schmidt Julia, Labode Jonas, Wrede Christoph, Regin Yannick, Toelen Jaan, Mühlfeld Christian
Hannover Medical School, Institute of Functional and Applied Anatomy, Hannover, Germany.
Biomedical Research in Endstage and Obstructive Lung Disease Hannover (BREATH), German Center for Lung Research (DZL), Hannover, Germany.
J Microsc. 2025 Apr;298(1):74-91. doi: 10.1111/jmi.13390. Epub 2025 Jan 31.
Diseases like bronchopulmonary dysplasia (BPD) affect the development of the pulmonary vasculature, including the alveolar capillary network (ACN). Since pulmonary development is highly dependent on angiogenesis and microvascular maturation, ACN investigations are essential. Therefore, efficient methods are needed for quantitative comparative studies. Here, the suitability of deep learning (DL) for processing serial block-face scanning electron microscopic (SBF-SEM) data by generating ACN segmentations, 3D reconstructions and performing automated quantitative analyses based on them, was tested. Since previous studies revealed inefficient ACN segmentation as the limiting factor in the overall workflow, a 2D DL-based approach was used with existing data, aiming at the reduction of necessary manual interaction. Automated quantitative analyses based on completed segmentations were performed subsequently. The results were compared to stereological estimations, assessing segmentation quality and result reliability. It was shown that the DL-based approach was suitable for generating segmentations on SBF-SEM data. This approach generated more complete initial ACN segmentations than an established method, despite the limited amount of available training data and the use of a 2D rather than a 3D approach. The quality of the completed ACN segmentations was assessed as sufficient. Furthermore, quantitative analyses delivered reliable results about the ACN architecture, automatically obtained contrary to manual stereological approaches. This study demonstrated that ACN segmentation is still the part of the overall workflow that requires improvement regarding the reduction of manual interaction to benefit from available automated software tools. Nevertheless, the results indicated that it could be advantageous taking further efforts to implement a 3D DL-based segmentation approach. As the amount of analysed data was limited, this study was not conducted to obtain representative data about BPD-induced ACN alterations, but to highlight next steps towards a fully automated segmentation and evaluation workflow, enabling larger sample sizes and representative studies.
支气管肺发育不良(BPD)等疾病会影响肺血管系统的发育,包括肺泡毛细血管网络(ACN)。由于肺发育高度依赖血管生成和微血管成熟,因此对ACN的研究至关重要。因此,需要高效的方法进行定量比较研究。在此,测试了深度学习(DL)通过生成ACN分割、三维重建并基于它们进行自动定量分析来处理连续块面扫描电子显微镜(SBF-SEM)数据的适用性。由于先前的研究表明低效的ACN分割是整个工作流程中的限制因素,因此使用基于二维DL的方法处理现有数据,旨在减少必要的人工干预。随后基于完成的分割进行自动定量分析。将结果与体视学估计进行比较,以评估分割质量和结果可靠性。结果表明,基于DL的方法适用于在SBF-SEM数据上生成分割。尽管可用训练数据量有限且使用的是二维而非三维方法,但该方法生成的初始ACN分割比既定方法更完整。完成的ACN分割质量被评估为足够。此外,定量分析给出了关于ACN结构的可靠结果,与手动体视学方法不同,这些结果是自动获得的。本研究表明,ACN分割仍然是整个工作流程中需要改进的部分,即减少人工干预以受益于可用的自动化软件工具。然而,结果表明进一步努力实施基于三维DL的分割方法可能是有利的。由于分析的数据量有限,本研究并非为了获取关于BPD诱导的ACN改变的代表性数据,而是为了突出迈向全自动分割和评估工作流程的下一步,从而能够进行更大样本量和更具代表性的研究。