Nonlinear memory in cell division dynamics across species

Shijie Zhang, Chenyi Fei, Jörn Dunkel
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Abstract

Regulation of cell growth and division is essential to achieve cell-size homeostasis. Recent advances in imaging technologies, such as ``mother machines" for bacteria or yeast, have allowed long-term tracking of cell-size dynamics across many generations, and thus have brought major insights into the mechanisms underlying cell-size control. However, understanding the governing rules of cell growth and division within a quantitative dynamical-systems framework remains a major challenge. Here, we implement and apply a framework that makes it possible to infer stochastic differential equation (SDE) models with Poisson noise directly from experimentally measured time series for cellular growth and divisions. To account for potential nonlinear memory effects, we parameterize the Poisson intensity of stochastic cell division events in terms of both the cell's current size and its ancestral history. By applying the algorithm to experimentally measured cell size trajectories, we are able to quantitatively evaluate the linear one-step memory hypothesis underlying the popular ``sizer",``adder", and ``timer" models of cell homeostasis. For Escherichia coli and Bacillus subtilis bacteria, Schizosaccharomyces pombe yeast and Dictyostelium discoideum amoebae, we find that in many cases the inferred stochastic models have a substantial nonlinear memory component. This suggests a need to reevaluate and generalize the currently prevailing linear-memory paradigm of cell homeostasis. More broadly, the underlying inference framework is directly applicable to identify quantitative models for stochastic jump processes in a wide range of scientific disciplines.
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不同物种细胞分裂动态的非线性记忆
细胞生长和分裂的调控对于实现细胞大小平衡至关重要。成像技术(如细菌或酵母的 "母机")的最新进展使人们可以对细胞大小动态进行多代长期跟踪,从而对细胞大小调控的基本机制有了重大认识。然而,在定量动态系统框架内理解细胞生长和分裂的调控机制仍然是一项重大挑战。在这里,我们实现并应用了一个框架,它能直接从实验测量的细胞生长和分裂时间序列中推断出带有泊松噪声的随机微分方程(SDE)模型。为了考虑潜在的非线性记忆效应,我们根据细胞的当前大小及其祖先历史对随机细胞分裂事件的泊松强度进行了参数化。通过将该算法应用于实验测量的细胞大小轨迹,我们能够定量评估流行的细胞稳态 "调节器"、"阶梯 "和 "定时器 "模型所依据的线性一步记忆假说。对于大肠杆菌、枯草杆菌、熊果酵母和盘基变形虫,我们发现在许多情况下,推断出的随机模型具有很大的非线性记忆成分。这表明有必要重新评估和推广目前流行的细胞平衡线性记忆范式。从更广泛的意义上讲,基本推理框架可直接用于确定广泛科学领域中随机跳跃过程的定量模型。
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