利用单细胞RNA测序数据的伪时间衍生物来鉴定细胞周期调控的基因。

IF 2.8 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Bioinformatics advances Pub Date : 2025-05-29 eCollection Date: 2025-01-01 DOI:10.1093/bioadv/vbaf123
Yohan Lefol, Geir Amund Svan Hasle, Siv Anita Hegre, Helle Samdal, Pål Sætrom
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引用次数: 0

摘要

动机:细胞周期是细胞生命的一个关键部分,长期以来一直被研究,无论是直接的,还是通过其调节成分。通常,为了研究细胞周期,进行细胞周期同步或选择实验,从而对细胞进行化学修饰,或将它们选择到特定的阶段。我们寻求开发一种方法,通过使用单细胞RNA测序来研究细胞周期,有效地规避了对此类实验的需要。结果:我们利用一种完善的伪时间方法,结合基因的预测和真实表达来计算单个基因的速度。然后,我们利用统计数据和预期的生物行为来识别在伪时间内速度有显著变化的基因。此外,我们展示了观察基因调控行为的能力,如mRNA剪接和降解率。由于许多基于细胞系的研究利用多个复制,我们对技术复制实施合并方法,以调整技术变化,从而创建更稳健的分析。总之,我们的研究开发了一种强大的方法来绘制在细胞系实验中整个细胞周期阶段中个体的、生物学的和统计学上显著的基因的速度。可用性和实现:数据和代码可在:https://github.com/Ylefol/CC_vel上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using pseudotime derivative on single-cell RNA sequencing data to identify genes undergoing cell cycle regulation.

Motivation: The cell cycle is a critical part of cellular life, one that has long been studied, both directly, and through its regulatory components. Commonly, cell cycle synchronization or selection experiments are performed in order to study the cell cycle, thus chemically modifying the cells, or selecting them for specific phases. We seek to develop a means to study the cell cycle through the use of single cell RNA sequencing, effectively circumventing the need for such experiments.

Results: We utilize a well-established pseudotime method, along with the predicted and real expression of genes to calculate the velocity of individual genes. We then utilize statistics and expected biological behaviour to identify genes with significant shifts in velocity within the pseudotime. Additionally, we show the ability to observe gene regulatory behaviour such as mRNA splicing and degradation rates. As many cell line based research utilize multiple replicates we implement a merger method for technical replicates to adjust for technical variations, creating a more robust analysis. In summary, our study develops a robust approach to map the velocities of individual, biologically, and statistically significant genes throughout the cell cycle's phases within a cell line experiment.

Availability and implementation: Data and code are available at: https://github.com/Ylefol/CC_vel.

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CiteScore
1.60
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