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首页> 外文期刊>Frontiers in Genetics >Cell Cycle and Cell Size Dependent Gene Expression Reveals Distinct Subpopulations at Single-Cell Level
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Cell Cycle and Cell Size Dependent Gene Expression Reveals Distinct Subpopulations at Single-Cell Level

机译:细胞周期和细胞大小依赖性基因表达揭示单细胞水平上不同的亚群。

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摘要

Cell proliferation includes a series of events that is tightly regulated by several checkpoints and layers of control mechanisms. Most studies have been performed on large cell populations, but detailed understanding of cell dynamics and heterogeneity requires single-cell analysis. Here, we used quantitative real-time PCR, profiling the expression of 93 genes in single-cells from three different cell lines. Individual unsynchronized cells from three different cell lines were collected in different cell cycle phases (G0/G1 – S – G2/M) with variable cell sizes. We found that the total transcript level per cell and the expression of most individual genes correlated with progression through the cell cycle, but not with cell size. By applying the random forests algorithm, a supervised machine learning approach, we show how a multi-gene signature that classifies individual cells into their correct cell cycle phase and cell size can be generated. To identify the most predictive genes we used a variable selection strategy. Detailed analysis of cell cycle predictive genes allowed us to define subpopulations with distinct gene expression profiles and to calculate a cell cycle index that illustrates the transition of cells between cell cycle phases. In conclusion, we provide useful experimental approaches and bioinformatics to identify informative and predictive genes at the single-cell level, which opens up new means to describe and understand cell proliferation and subpopulation dynamics.
机译:细胞增殖包括一系列事件,这些事件受到几个检查点和控制机制层的严格控制。大多数研究都是在大型细胞群体上进行的,但是对细胞动力学和异质性的详细了解需要单细胞分析。在这里,我们使用了定量实时PCR,分析了来自三种不同细胞系的单细胞中93个基因的表达。在不同的细胞周期阶段(G0 / G1 – S – G2 / M)中,从三个不同细胞系收集的单个未同步细胞,其细胞大小可变。我们发现每个细胞的总转录水平和大多数单个基因的表达与整个细胞周期的进展相关,但与细胞大小无关。通过应用随机森林算法(一种有监督的机器学习方法),我们展示了如何生成将单个细胞分为正确的细胞周期阶段和细胞大小的多基因签名。为了确定最可预测的基因,我们使用了可变选择策略。细胞周期预测基因的详细分析使我们能够定义具有不同基因表达谱的亚群,并计算出细胞周期指数来说明细胞在细胞周期各相之间的转变。总之,我们提供了有用的实验方法和生物信息学,以鉴定单细胞水平的信息性和预测性基因,这为描述和理解细胞增殖和亚群动态提供了新的手段。

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