Department of Basic Science, Graduate School of Arts and Sciences, The University of Tokyo, Tokyo, Japan.
Department of Biology, New York University, New York, United States.
Elife. 2022 Dec 6;11:e72299. doi: 10.7554/eLife.72299.
Intracellular states probed by gene expression profiles and metabolic activities are intrinsically noisy, causing phenotypic variations among cellular lineages. Understanding the adaptive and evolutionary roles of such variations requires clarifying their linkage to population growth rates. Extending a cell lineage statistics framework, here we show that a population's growth rate can be expanded by the cumulants of a fitness landscape that characterize how fitness distributes in a population. The expansion enables quantifying the contribution of each cumulant, such as variance and skewness, to population growth. We introduce a function that contains all the essential information of cell lineage statistics, including mean lineage fitness and selection strength. We reveal a relation between fitness heterogeneity and population growth rate response to perturbation. We apply the framework to experimental cell lineage data from bacteria to mammalian cells, revealing distinct levels of growth rate gain from fitness heterogeneity across environments and organisms. Furthermore, third or higher order cumulants' contributions are negligible under constant growth conditions but could be significant in regrowing processes from growth-arrested conditions. We identify cellular populations in which selection leads to an increase of fitness variance among lineages in retrospective statistics compared to chronological statistics. The framework assumes no particular growth models or environmental conditions, and is thus applicable to various biological phenomena for which phenotypic heterogeneity and cellular proliferation are important.
细胞内状态可以通过基因表达谱和代谢活性来探测,这些状态本质上是嘈杂的,导致细胞谱系之间出现表型变异。要理解这种变异的适应和进化作用,就需要阐明其与种群增长率的联系。扩展细胞谱系统计框架,我们在这里表明,通过适应度景观的累积量可以扩展种群的增长率,适应度景观描述了适应度在种群中的分布方式。这种扩展使我们能够量化每个累积量(如方差和偏度)对种群增长的贡献。我们引入了一个函数,该函数包含了细胞谱系统计的所有基本信息,包括谱系平均适应度和选择强度。我们揭示了适应度异质性与种群增长率对扰动的响应之间的关系。我们将该框架应用于来自细菌到哺乳动物细胞的实验细胞谱系数据,揭示了在不同环境和生物中,适应度异质性对种群增长率的不同增益水平。此外,在恒定生长条件下,三阶或更高阶累积量的贡献可以忽略不计,但在从生长停滞状态恢复生长的过程中,它们可能会变得很重要。我们在回溯统计中识别出了与选择导致谱系之间适应度方差增加有关的细胞群体,而在时间顺序统计中则没有这种情况。该框架不假设特定的生长模型或环境条件,因此适用于各种生物学现象,其中表型异质性和细胞增殖很重要。