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Predicting rates of cell state change caused by stochastic fluctuations using a data-driven landscape model

机译:使用数据驱动的景观模型预测由随机波动引起的细胞状态变化率

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摘要

We develop a potential landscape approach to quantitatively describe experimental data from a fibroblast cell line that exhibits a wide range of GFP expression levels under the control of the promoter for tenascin-C. Time-lapse live-cell microscopy provides data about short-term fluctuations in promoter activity, and flow cytometry measurements provide data about the long-term kinetics, because isolated subpopulations of cells relax from a relatively narrow distribution of GFP expression back to the original broad distribution of responses. The landscape is obtained from the steady state distribution of GFP expression and connected to a potential-like function using a stochastic differential equation description (Langevin/Fokker–Planck). The range of cell states is constrained by a force that is proportional to the gradient of the potential, and biochemical noise causes movement of cells within the landscape. Analyzing the mean square displacement of GFP intensity changes in live cells indicates that these fluctuations are described by a single diffusion constant in log GFP space. This finding allows application of the Kramers’ model to calculate rates of switching between two attractor states and enables an accurate simulation of the dynamics of relaxation back to the steady state with no adjustable parameters. With this approach, it is possible to use the steady state distribution of phenotypes and a quantitative description of the short-term fluctuations in individual cells to accurately predict the rates at which different phenotypes will arise from an isolated subpopulation of cells.
机译:我们开发了一种潜在的景观方法来定量描述来自成纤维细胞系的实验数据,该成纤维细胞系在腱生蛋白-C的启动子的控制下展现出广泛的GFP表达水平。延时活细胞显微镜检查可提供有关启动子活性短期波动的数据,而流式细胞术则可提供长期动力学的数据,因为分离的细胞亚群从相对较窄的GFP表达分布恢复为原始的宽泛分布响应的分布。景观是从GFP表达的稳态分布中获得的,并使用随机微分方程描述(Langevin / Fokker-Planck)连接到类似电位的函数。细胞状态的范围受到与电势梯度成比例的力的约束,生化噪声导致细胞在景观中移动。分析活细胞中GFP强度变化的均方位移表明,这些波动由对数GFP空间中的单个扩散常数描述。这一发现可以应用Kramers模型计算两个吸引子状态之间的转换率,并且可以精确模拟松弛动力学返回稳态,而无需调整参数。通过这种方法,可以使用表型的稳态分布以及单个细胞中短期波动的定量描述来准确预测从分离的细胞亚群中出现不同表型的速率。

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