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Joint modeling of cell and nuclear shape variation

机译:细胞和核形状变化的联合建模

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Modeling cell shape variation is critical to our understanding of cell biology. Previous work has demonstrated the utility of nonrigid image registration methods for the construction of nonparametric nuclear shape models in which pairwise deformation distances are measured between all shapes and are embedded into a low-dimensional shape space. Using these methods, we explore the relationship between cell shape and nuclear shape. We find that these are frequently dependent on each other and use this as the motivation for the development of combined cell and nuclear shape space models, extending nonparametric cell representations to multiple-component three-dimensional cellular shapes and identifying modes of joint shape variation. We learn a first-order dynamics model to predict cell and nuclear shapes, given shapes at a previous time point. We use this to determine the effects of endogenous protein tags or drugs on the shape dynamics of cell lines and show that tagged C1QBP reduces the correlation between cell and nuclear shape. To reduce the computational cost of learning these models, we demonstrate the ability to reconstruct shape spaces using a fraction of computed pairwise distances. The open-source tools provide a powerful basis for future studies of the molecular basis of cell organization.
机译:对细胞形状变化进行建模对于我们对细胞生物学的理解至关重要。先前的工作证明了非刚性图像配准方法在构建非参数核形状模型中的实用性,在该模型中,成对的变形距离在所有形状之间进行测量,并嵌入到低维形状空间中。使用这些方法,我们探索细胞形状与核形状之间的关系。我们发现它们经常相互依赖,并以此为动力来发展组合的细胞和核形状空间模型,将非参数细胞表示扩展到多分量三维细胞形状并确定关节形状变化的模式。我们学习了一阶动力学模型来预测细胞和核的形状,并在先前的时间点给定形状。我们用它来确定内源性蛋白质标签或药物对细胞系形状动力学的影响,并表明标记的C1QBP减少了细胞与核形状之间的相关性。为了减少学习这些模型的计算成本,我们演示了使用一部分计算出的成对距离来重构形状空间的能力。开源工具为将来研究细胞组织的分子基础提供了强大的基础。

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