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Cell differentiation processes as spatial networks: Identifying four-dimensional structure in embryogenesis

机译:细胞分化过程作为空间网络:鉴定胚胎发生中的四维结构

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摘要

One overarching principle of eukaroytic development is the generative spatial emergence and self-organization of cell populations. As cells divide and differentiate, they and their descendents form a spatiotemporal explicit and increasingly compartmentalized complex system. Yet despite this comparmentalization, there is selective functional overlap between these structural components. While contemporary tools such as lineage trees and molecular signaling networks prvide a window into this complexity, they do not characterize embryogenesis as a global process. Using a four-dimensional spatial representation, major features of the developmental process are revealed. To establish the role of developmental mechanisms that turn a spherical embryo into a highly asymmetrical adult phenotype, we can map the outcomes of the cell division process to a complex network model. This representational model provides information about the top-down mechanisms relevant to the differentiation process. In a complementary manner, looking for phenomena such as superdiffusive positioning and sublineage-based anatomical clustering incorporates dynamic information to our parallel view of embryogenesis. Characterizing the spatial organization and geometry of embryos in this way allows for novel indicators of developmental patterns both within and between organisms.
机译:一种富核开发的一个总体原则是生成的空间出现和细胞群体的自我组织。随着细胞分裂和区分,它们及其后代形成时尚明确且越来越多地分区的复杂系统。然而,尽管具有这种比较,这些结构部件之间存在有选择性的功能重叠。虽然诸如谱系树和分子信令网络等当代工具,但它们的窗口普遍存在这种复杂性中,但它们不会将胚胎发生作为全局过程。使用四维空间表示,揭示了发展过程的主要特征。为了建立将球形胚胎转化为高度不对称的成人表型的发育机制的作用,我们可以将细胞分裂过程的结果映射到复杂的网络模型。该代表性模型提供有关与差异化过程相关的自上而下机制的信息。以互补的方式,寻找超级定位定位和基于Sublineage的解剖聚类的现象将动态信息与我们的平行胚胎发生观察结合起来。以这种方式表征胚胎的空间组织和几何形状,允许生物体内和之间的发育模式的新指标。

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