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Model-Based Deconvolution of Cell Cycle Time-Series Data Reveals Gene Expression Details at High Resolution

机译:细胞周期时间序列数据的基于模型的反卷积揭示高分辨率的基因表达细节

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In both prokaryotic and eukaryotic cells, gene expression is regulated across the cell cycle to ensure “just-in-time” assembly of select cellular structures and molecular machines. However, present in all time-series gene expression measurements is variability that arises from both systematic error in the cell synchrony process and variance in the timing of cell division at the level of the single cell. Thus, gene or protein expression data collected from a population of synchronized cells is an inaccurate measure of what occurs in the average single-cell across a cell cycle. Here, we present a general computational method to extract “single-cell”-like information from population-level time-series expression data. This method removes the effects of 1) variance in growth rate and 2) variance in the physiological and developmental state of the cell. Moreover, this method represents an advance in the deconvolution of molecular expression data in its flexibility, minimal assumptions, and the use of a cross-validation analysis to determine the appropriate level of regularization. Applying our deconvolution algorithm to cell cycle gene expression data from the dimorphic bacterium Caulobacter crescentus, we recovered critical features of cell cycle regulation in essential genes, including ctrA and ftsZ, that were obscured in population-based measurements. In doing so, we highlight the problem with using population data alone to decipher cellular regulatory mechanisms and demonstrate how our deconvolution algorithm can be applied to produce a more realistic picture of temporal regulation in a cell.
机译:在原核和真核细胞中,基因表达在整个细胞周期中受到调控,以确保“及时”组装选定的细胞结构和分子机器。但是,在所有时间序列基因表达测量中都存在着变异性,这种变异性是由细胞同步过程中的系统误差和单个细胞水平上细胞分裂的时机差异引起的。因此,从一组同步细胞中收集的基因或蛋白质表达数据无法准确衡量整个细胞周期中平均单细胞中发生了什么。在这里,我们提出了一种通用的计算方法,可从总体水平的时序表达数据中提取“单细胞”样的信息。此方法消除了以下影响:1)生长速率的差异和2)细胞生理和发育状态的差异。而且,该方法在分子表达数据的去卷积方面具有灵活性,最小的假设以及使用交叉验证分析来确定适当的正则化水平方面的进步。将我们的反卷积算法应用于来自双态细菌新月形杆菌的细胞周期基因表达数据,我们恢复了在基于人群的测量中被遮盖的基本基因(包括ctrA和ftsZ)中细胞周期调控的关键特征。在这样做的过程中,我们强调了仅使用种群数据来破译细胞调节机制的问题,并演示了如何将我们的反卷积算法应用于在细胞中产生更现实的时间调节图。

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