Sarkar Rituparna, Darby Daniel, Meilhac Sigolène, Olivo-Marin Jean-Christophe
BioImage Analysis Unit, Institut Pasteur, Paris, France.
CNRS UMR 3691, Paris, France.
Biol Imaging. 2022 Apr 22;2:e2. doi: 10.1017/S2633903X22000022. eCollection 2022.
Advances in tissue engineering for cardiac regenerative medicine require cellular-level understanding of the mechanism of cardiac muscle growth during embryonic developmental stage. Computational methods to automatize cell segmentation in 3D and deliver accurate, quantitative morphology of cardiomyocytes, are imperative to provide insight into cell behavior underlying cardiac tissue growth. Detecting individual cells from volumetric images of dense tissue, poised with low signal-to-noise ratio and severe intensity in homogeneity, is a challenging task. In this article, we develop a robust segmentation tool capable of extracting cellular morphological parameters from 3D multifluorescence images of murine heart, captured via light-sheet microscopy. The proposed pipeline incorporates a neural network for 2D detection of nuclei and cell membranes. A graph-based global association employs the 2D nuclei detections to reconstruct 3D nuclei. A novel optimization embedding the network flow algorithm in an alternating direction method of multipliers is proposed to solve the global object association problem. The associated 3D nuclei serve as the initialization of an active mesh model to obtain the 3D segmentation of individual myocardial cells. The efficiency of our method over the state-of-the-art methods is observed via various qualitative and quantitative evaluation.
心脏再生医学组织工程的进展需要在细胞水平上了解胚胎发育阶段心肌生长的机制。用于自动进行三维细胞分割并提供准确、定量的心肌细胞形态的计算方法,对于深入了解心脏组织生长背后的细胞行为至关重要。从密集组织的体积图像中检测单个细胞,面临着低信噪比和严重强度不均匀性的挑战,是一项艰巨的任务。在本文中,我们开发了一种强大的分割工具,能够从通过光片显微镜捕获的小鼠心脏三维多荧光图像中提取细胞形态参数。所提出的流程包含一个用于二维细胞核和细胞膜检测的神经网络。基于图的全局关联利用二维细胞核检测来重建三维细胞核。提出了一种将网络流算法嵌入交替方向乘子法的新颖优化方法来解决全局对象关联问题。相关的三维细胞核用作主动网格模型的初始化,以获得单个心肌细胞的三维分割。通过各种定性和定量评估观察到我们的方法相对于现有方法的效率。