首页> 外文会议>2011 48th ACM/EDAC/IEEE Design Automation Conference (DAC) >In silico synchronization of cellular populations through expression data deconvolution
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In silico synchronization of cellular populations through expression data deconvolution

机译:通过表达数据反卷积对细胞群体进行计算机同步

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Cellular populations are typically heterogenous collections of cells at different points in their respective cell cycles, each with a cell cycle time that varies from individual to individual. As a result, true single-cell behavior, particularly that which is cell-cycle-dependent, is often obscured in population-level (averaged) measurements. We have developed a simple deconvolution method that can be used to remove the effects of asynchronous variability from population-level time-series data. In this paper, we summarize some recent progress in the development and application of our approach, and provide technical updates that result in increased biological fidelity. We also explore several preliminary validation results and discuss several ongoing applications that highlight the method's usefulness for estimating parameters in differential equation models of single-cell gene regulation
机译:细胞群体通常是在其各自细胞周期中不同点的细胞的异质集合,每个细胞周期的时间因个体而异。结果,真实的单细胞行为,尤其是与细胞周期有关的行为通常在群体水平(平均)的测量中被遮盖。我们已经开发了一种简单的反卷积方法,可用于从总体级别的时间序列数据中消除异步可变性的影响。在本文中,我们总结了该方法的开发和应用中的一些最新进展,并提供了导致生物保真度提高的技术更新。我们还探索了一些初步的验证结果,并讨论了一些正在进行的应用,这些应用突显了该方法对于估算单细胞基因调控微分方程模型中的参数的有用性。

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