A mathematical framework for understanding the spontaneous emergence of complexity applicable to growing multicellular systems
A mathematical framework for understanding the spontaneous emergence of complexity applicable to growing multicellular systems
In embryonic development and organogenesis, cells sharing identical genetic codes acquire diverse gene expression states in a highly reproducible spatial distribution, crucial for multicellular formation and quantifiable through positional information. To understand the spontaneous growth of complexity, we constructed a one-dimensional division-decision model, simulating the growth of cells with identical genetic networks from a single cell. Our findings highlight the pivotal role of cell division in providing positional cues, escorting the system toward states rich in information. Moreover, we pinpointed lateral inhibition as a critical mechanism translating spatial contacts into gene expression. Our model demonstrates that the spatial arrangement resulting from cell division, combined with cell lineages, imparts positional information, specifying multiple cell states with increased complexity—illustrated through examples in C.elegans. This study constitutes a foundational step in comprehending developmental intricacies, paving the way for future quantitative formulations to construct synthetic multicellular patterns.
Zhang Lu、Huang Jiandong、Li Zhiyuan、Zhou Xiaolin、Xue Gang
生物科学理论、生物科学方法系统科学、系统技术数学
Zhang Lu,Huang Jiandong,Li Zhiyuan,Zhou Xiaolin,Xue Gang.A mathematical framework for understanding the spontaneous emergence of complexity applicable to growing multicellular systems[EB/OL].(2025-03-28)[2025-04-30].https://www.biorxiv.org/content/10.1101/2024.02.05.578855.点此复制
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