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A linear programming approach to reconstructing subcellular structures from confocal images for automated generation of representative 3D cellular models

机译:一种线性规划方法来重建代表性3D蜂窝模型自动生成的共聚焦图像的亚细胞结构

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摘要

This paper presents a novel computer vision algorithm to analyze 3D stacks of confocal images of fluorescently stained single cells. The goal of the algorithm is to create representative in silico model structures that can be imported into finite element analysis software for mechanical characterization. Segmentation of cell and nucleus boundaries is accomplished via standard thresholding methods. Using novel linear programming methods, a representative actin stress fiber network is generated by computing a linear superposition of fibers having minimum discrepancy compared with an experimental 3D confocal image. Qualitative validation is performed through analysis of seven 3D confocal image stacks of adherent vascular smooth muscle cells (VSMCs) grown in 2D culture. The presented method is able to automatically generate 3D geometries of the cell's boundary, nucleus, and representative F-actin network based on standard cell microscopy data. These geometries can be used for direct importation and implementation in structural finite element models for analysis of the mechanics of a single cell to potentially speed discoveries in the fields of regenerative medicine, mechanobiology, and drug discovery.
机译:本文提出了一种新颖的计算机视觉算法,用于分析荧光染色的单细胞的共聚焦图像的3D堆栈。该算法的目标是创建代表性的计算机模型结构,可以将其导入到有限元分析软件中进行机械表征。细胞和细胞核边界的分割是通过标准阈值方法完成的。使用新颖的线性编程方法,通过计算与实验3D共聚焦图像相比具有最小差异的纤维的线性叠加,可以生成代表性的肌动蛋白应力纤维网络。通过分析在2D培养中生长的七个贴壁血管平滑肌细胞(VSMC)的3D共聚焦图像堆栈来进行定性验证。提出的方法能够基于标准细胞显微镜数据自动生成细胞边界,细胞核和代表性F-肌动蛋白网络的3D几何形状。这些几何形状可用于结构有限元模型中的直接导入和实现,以分析单个细胞的力学,从而有可能加速再生医学,机械生物学和药物发现领域的发现。

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