Quantitative Image Analysis Unit, Institut Pasteur, 75015 Paris, France.
Bioinformatics. 2013 Mar 15;29(6):772-9. doi: 10.1093/bioinformatics/btt027. Epub 2013 Jan 21.
In developmental biology, quantitative tools to extract features from fluorescence microscopy images are becoming essential to characterize organ morphogenesis at the cellular level. However, automated image analysis in this context is a challenging task, owing to perturbations induced by the acquisition process, especially in organisms where the tissue is dense and opaque.
We propose an automated framework for the segmentation of 3D microscopy images of highly cluttered environments such as developing tissues. The approach is based on a partial differential equation framework that jointly takes advantage of the nuclear and cellular membrane information to enable accurate extraction of nuclei and cells in dense tissues. This framework has been used to study the developing mouse heart, allowing the extraction of quantitative information such as the cell cycle duration; the method also provides qualitative information on cell division and cell polarity through the creation of 3D orientation maps that provide novel insight into tissue organization during organogenesis.
在发育生物学中,从荧光显微镜图像中提取特征的定量工具对于在细胞水平上描述器官形态发生变得至关重要。然而,由于采集过程引起的干扰,特别是在组织密集且不透明的生物体中,该领域的自动化图像分析是一项具有挑战性的任务。
我们提出了一种用于分割 3D 显微镜图像的自动化框架,这些图像来自高度混乱的环境,如发育中的组织。该方法基于偏微分方程框架,该框架联合利用核和细胞膜信息,从而能够在密集组织中准确提取核和细胞。该框架已用于研究发育中的小鼠心脏,允许提取定量信息,例如细胞周期持续时间;该方法还通过创建 3D 取向图提供了关于细胞分裂和细胞极性的定性信息,为器官发生过程中的组织组织提供了新的见解。