Orlando David A, Lin Charles Y, Bernard Allister, Iversen Edwin S, Hartemink Alexander J, Haase Steven B
Department of Biology, Duke University, Durham, North Carolina, USA.
Cell Cycle. 2007 Feb 15;6(4):478-88. doi: 10.4161/cc.6.4.3859. Epub 2007 Feb 12.
Synchronized populations of cells are often used to study dynamic processes during the cell division cycle. However, the analysis of time series measurements made on synchronized populations is confounded by the fact that populations lose synchrony over time. Time series measurements are thus averages over a population distribution that is broadening over time. Moreover, direct comparison of measurements taken from multiple synchrony experiments is difficult, as the kinetics of progression during the time series are rarely comparable. Here, we present a flexible mathematical model that describes the dynamics of population distributions resulting from synchrony loss over time. The model was developed using S. cerevisiae, but we show that it can be easily adapted to predict distributions in other organisms. We demonstrate that the model reliably fits data collected from populations synchronized by multiple techniques, and can accurately predict cell cycle distributions as measured by other experimental assays. To indicate its broad applicability, we show that the model can be used to compare global periodic transcription data sets from different organisms: S. cerevisiae and S. pombe.
同步化的细胞群体常被用于研究细胞分裂周期中的动态过程。然而,对同步化群体进行的时间序列测量分析会因群体随时间失去同步性这一事实而变得复杂。因此,时间序列测量是对一个随时间不断拓宽的群体分布的平均值。此外,由于时间序列中的进展动力学很少具有可比性,所以很难直接比较从多个同步实验中获取的测量值。在此,我们提出了一个灵活的数学模型,该模型描述了随时间同步性丧失导致的群体分布动态变化。该模型是利用酿酒酵母开发的,但我们表明它可以很容易地进行调整以预测其他生物体中的分布。我们证明该模型能够可靠地拟合从通过多种技术同步化的群体中收集的数据,并且能够准确预测通过其他实验测定法测量的细胞周期分布。为了表明其广泛的适用性,我们展示了该模型可用于比较来自不同生物体(酿酒酵母和粟酒裂殖酵母)的全局周期性转录数据集。