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From Single-Cell Genetic Architecture to Cell Population Dynamics: Quantitatively Decomposing the Effects of Different Population Heterogeneity Sources for a Genetic Network with Positive Feedback Architecture

机译:从单细胞遗传架构到细胞种群动态:定量分解具有正反馈架构的遗传网络的不同种群异质性源的影响

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摘要

Phenotypic cell-to-cell variability or cell population heterogeneity originates from two fundamentally different sources: unequal partitioning of cellular material at cell division and stochastic fluctuations associated with intracellular reactions. We developed a mathematical and computational framework that can quantitatively isolate both heterogeneity sources and applied it to a genetic network with positive feedback architecture. The framework consists of three vastly different mathematical formulations: a), a continuum model, which completely neglects population heterogeneity; b), a deterministic cell population balance model, which accounts for population heterogeneity originating only from unequal partitioning at cell division; and c), a fully stochastic model accommodating both sources of population heterogeneity. The framework enables the quantitative decomposition of the effects of the different population heterogeneity sources on system behavior. Our results indicate the importance of cell population heterogeneity in accurately predicting even average population properties. Moreover, we find that unequal partitioning at cell division and sharp division rates shrink the region of the parameter space where the population exhibits bistable behavior, a characteristic feature of networks with positive feedback architecture. In addition, intrinsic noise at the single-cell level due to slow operator fluctuations and small numbers of molecules further contributes toward the shrinkage of the bistability regime at the cell population level. Finally, the effect of intrinsic noise at the cell population level was found to be markedly different than at the single-cell level, emphasizing the importance of simulating entire cell populations and not just individual cells to understand the complex interplay between single-cell genetic architecture and behavior at the cell population level.
机译:表型细胞间差异或细胞群体异质性源自两个根本不同的来源:细胞分裂时细胞物质的不均匀分配以及与细胞内反应相关的随机波动。我们开发了一种数学和计算框架,可以定量隔离两个异质性源,并将其应用于具有正反馈架构的遗传网络。该框架由三种截然不同的数学公式组成:a)连续模型,它完全忽略了人口异质性; b)一种确定性的细胞种群平衡模型,该模型解释了种群异质性仅源自细胞分裂时的不平等分配; c)是一个完全随机的模型,它同时适应了人口异质性的两个来源。该框架能够定量分解不同总体异质性源对系统行为的影响。我们的结果表明细胞群体异质性在准确预测甚至平均群体特性方面的重要性。此外,我们发现,在细胞分裂和不均匀的分裂速率下不平等的划分缩小了参数空间中总体表现出双稳态行为的区域,这是具有正反馈架构的网络的特征。另外,由于缓慢的操作员波动和少量分子导致的单细胞水平的内在噪声进一步导致双稳态在细胞群体水平上的缩小。最后,发现固有噪声在细胞群体水平上的影响与在单细胞水平上的显着不同,强调了模拟整个细胞群体而不是单个细胞以了解单细胞遗传结构之间复杂相互作用的重要性。和细胞群体水平的行为。

著录项

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    Mantzaris, Nikos V.;

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  • 年度 2007
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  • 正文语种 en
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