Özdemir Bugra, Reski Ralf
Plant Biotechnology, Faculty of Biology, University of Freiburg, Freiburg, Germany.
Signalling Research Centres BIOSS and CIBSS, Freiburg, Germany.
Comput Struct Biotechnol J. 2021 Apr 15;19:2106-2120. doi: 10.1016/j.csbj.2021.04.019. eCollection 2021.
Cytoskeletal filaments are structures of utmost importance to biological cells and organisms due to their versatility and the significant functions they perform. These biopolymers are most often organised into network-like scaffolds with a complex morphology. Understanding the geometrical and topological organisation of these networks provides key insights into their functional roles. However, this non-trivial task requires a combination of high-resolution microscopy and sophisticated image processing/analysis software. The correct analysis of the network structure and connectivity needs precise segmentation of microscopic images. While segmentation of filament-like objects is a well-studied concept in biomedical imaging, where tracing of neurons and blood vessels is routine, there are comparatively fewer studies focusing on the segmentation of cytoskeletal filaments and networks from microscopic images. The developments in the fields of microscopy, computer vision and deep learning, however, began to facilitate the task, as reflected by an increase in the recent literature on the topic. Here, we aim to provide a short summary of the research on the (semi-)automated enhancement, segmentation and tracing methods that are particularly designed and developed for microscopic images of cytoskeletal networks. In addition to providing an overview of the conventional methods, we cover the recently introduced, deep-learning-assisted methods alongside the advantages they offer over classical methods.
细胞骨架丝对于生物细胞和生物体至关重要,因为它们具有多功能性并执行着重要功能。这些生物聚合物通常组织成具有复杂形态的网络状支架。了解这些网络的几何和拓扑组织为深入了解其功能作用提供了关键线索。然而,这项具有挑战性的任务需要结合高分辨率显微镜和复杂的图像处理/分析软件。对网络结构和连通性的正确分析需要对微观图像进行精确分割。虽然丝状物体的分割在生物医学成像中是一个研究充分的概念,其中追踪神经元和血管是常规操作,但相对较少有研究专注于从微观图像中分割细胞骨架丝和网络。然而,显微镜、计算机视觉和深度学习领域的发展开始推动这项任务,这一点从近期关于该主题的文献增多中可见一斑。在此,我们旨在简要总结专门为细胞骨架网络微观图像设计和开发的(半)自动化增强、分割和追踪方法的研究。除了概述传统方法外,我们还介绍了最近引入的深度学习辅助方法以及它们相对于经典方法的优势。