Flis Anna, Fernández Aurora Piñas, Zielinski Tomasz, Mengin Virginie, Sulpice Ronan, Stratford Kevin, Hume Alastair, Pokhilko Alexandra, Southern Megan M, Seaton Daniel D, McWatters Harriet G, Stitt Mark, Halliday Karen J, Millar Andrew J
Max Planck Institute of Molecular Plant Physiology, Am Muehlenberg 1, 14476 Potsdam-Golm, Germany.
SynthSys and School of Biological Sciences, University of Edinburgh, C.H. Waddington Building, Edinburgh EH9 3JD, UK.
Open Biol. 2015 Oct;5(10). doi: 10.1098/rsob.150042.
Our understanding of the complex, transcriptional feedback loops in the circadian clock mechanism has depended upon quantitative, timeseries data from disparate sources. We measure clock gene RNA profiles in Arabidopsis thaliana seedlings, grown with or without exogenous sucrose, or in soil-grown plants and in wild-type and mutant backgrounds. The RNA profiles were strikingly robust across the experimental conditions, so current mathematical models are likely to be broadly applicable in leaf tissue. In addition to providing reference data, unexpected behaviours included co-expression of PRR9 and ELF4, and regulation of PRR5 by GI. Absolute RNA quantification revealed low levels of PRR9 transcripts (peak approx. 50 copies cell(-1)) compared with other clock genes, and threefold higher levels of LHY RNA (more than 1500 copies cell(-1)) than of its close relative CCA1. The data are disseminated from BioDare, an online repository for focused timeseries data, which is expected to benefit mechanistic modelling. One data subset successfully constrained clock gene expression in a complex model, using publicly available software on parallel computers, without expert tuning or programming. We outline the empirical and mathematical justification for data aggregation in understanding highly interconnected, dynamic networks such as the clock, and the observed design constraints on the resources required to make this approach widely accessible.
我们对生物钟机制中复杂的转录反馈回路的理解,依赖于来自不同来源的定量时间序列数据。我们测量了拟南芥幼苗在有或没有外源蔗糖的情况下生长,以及在土壤中生长的野生型和突变体背景下的生物钟基因RNA谱。这些RNA谱在各种实验条件下都非常稳定,因此当前的数学模型可能广泛适用于叶片组织。除了提供参考数据外,还发现了一些意外现象,包括PRR9和ELF4的共表达,以及GI对PRR5的调控。绝对RNA定量显示,与其他生物钟基因相比,PRR9转录本水平较低(峰值约为50个拷贝/细胞),而LHY RNA水平比其近亲CCA1高三倍(超过1500个拷贝/细胞)。这些数据已通过BioDare(一个专注于时间序列数据的在线存储库)发布,预计将有助于机理建模。一个数据子集使用并行计算机上的公开可用软件,在没有专家调整或编程的情况下,成功地在一个复杂模型中限制了生物钟基因的表达。我们概述了在理解像生物钟这样高度互联的动态网络时进行数据汇总的经验和数学依据,以及为使这种方法广泛可用所需资源的观察到的设计限制。