检测单细胞转录组学中的节律基因表达

IF 2.9 3区 生物学 Q2 BIOLOGY
Bingxian Xu, Dingbang Ma, Katharine Abruzzi, Rosemary Braun
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引用次数: 0

摘要

自主的、与环境同步的昼夜节律是地球上生命的一个普遍特征。在多细胞生物中,这种节律是由几乎存在于每个细胞中的转录-翻译反馈回路产生的,它以组织依赖的方式驱动着成千上万个基因的日常表达。识别受昼夜节律控制的基因可以阐明多细胞生物体生理过程的协调机制。如今,单细胞水平的转录组分析为了解细胞水平时钟的功能提供了前所未有的机会。然而,虽然已经开发出了许多循环检测算法来识别大量转录组数据中受昼夜节律控制的基因,但如何将这些算法最好地应用于单细胞 RNA seq 数据还不得而知。在此,我们对常用的昼夜节律检测方法应用于单细胞 RNA seq 数据时的可靠性和效率进行了评估。我们的结果为现有的昼夜节律检测方法适应单细胞领域提供了指导,并阐明了在单细胞数据中进行更稳健、更高效的节律检测的机会。我们还提出了一种结合谐波回归的子采样程序,作为在单细胞环境中检测昼夜节律基因的有效策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Rhythmic Gene Expression in Single-cell Transcriptomics.

An autonomous, environmentally synchronizable circadian rhythm is a ubiquitous feature of life on Earth. In multicellular organisms, this rhythm is generated by a transcription-translation feedback loop present in nearly every cell that drives daily expression of thousands of genes in a tissue-dependent manner. Identifying the genes that are under circadian control can elucidate the mechanisms by which physiological processes are coordinated in multicellular organisms. Today, transcriptomic profiling at the single-cell level provides an unprecedented opportunity to understand the function of cell-level clocks. However, while many cycling detection algorithms have been developed to identify genes under circadian control in bulk transcriptomic data, it is not known how best to adapt these algorithms to single-cell RNA seq data. Here, we benchmark commonly used circadian detection methods on their reliability and efficiency when applied to single-cell RNA seq data. Our results provide guidance on adapting existing cycling detection methods to the single-cell domain and elucidate opportunities for more robust and efficient rhythm detection in single-cell data. We also propose a subsampling procedure combined with harmonic regression as an efficient strategy to detect circadian genes in the single-cell setting.

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来源期刊
CiteScore
6.10
自引率
8.60%
发文量
48
审稿时长
>12 weeks
期刊介绍: Journal of Biological Rhythms is the official journal of the Society for Research on Biological Rhythms and offers peer-reviewed original research in all aspects of biological rhythms, using genetic, biochemical, physiological, behavioral, epidemiological & modeling approaches, as well as clinical trials. Emphasis is on circadian and seasonal rhythms, but timely reviews and research on other periodicities are also considered. The journal is a member of the Committee on Publication Ethics (COPE).
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