Tracking of cell populations to understand their spatio-temporal behavior in response to physical stimuli

D. House, Matthew L. Walker, Zheng Wu, J. Wong, Margrit Betke
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引用次数: 45

Abstract

We have developed methods for segmentation and tracking of cells in time-lapse phase-contrast microscopy images. Our multi-object Bayesian algorithm detects and tracks large numbers of cells in presence of clutter and identifies cell division. To solve the data association problem, the assignment of current measurements to cell tracks, we tested various cost functions with both an optimal and a fast, suboptimal assignment algorithm. We also propose metrics to quantify cell migration properties, such as motility and directional persistence, and compared our findings of cell migration with the standard random walk model. We measured how cell populations respond to the physical stimuli presented in the environment, for example, the stiffness property of the substrate. Our analysis of hundreds of spatio-temporal cell trajectories revealed significant differences in the behavioral response of fibroblast cells to changes in hydrogel conditions.
追踪细胞群,了解它们在物理刺激下的时空行为
我们已经开发了在延时相衬显微镜图像中分割和跟踪细胞的方法。我们的多目标贝叶斯算法检测和跟踪大量存在杂波的细胞,并识别细胞分裂。为了解决数据关联问题,将当前测量值分配给单元轨道,我们使用最优和快速次最优分配算法测试了各种成本函数。我们还提出了量化细胞迁移特性的指标,如运动性和定向持久性,并将我们的细胞迁移发现与标准随机漫步模型进行了比较。我们测量了细胞群对环境中出现的物理刺激的反应,例如,基质的刚度特性。我们对数百个时空细胞轨迹的分析揭示了成纤维细胞对水凝胶条件变化的行为反应的显著差异。
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