Spyroglou Ioannis, Skalák Jan, Balakhonova Veronika, Benedikty Zuzana, Rigas Alexandros G, Hejátko Jan
Plant Sciences Core Facility, CEITEC-Central European Institute of Technology, Masaryk University, Kamenice 5, 62500 Brno, Czech Republic.
Functional Genomics & Proteomics of Plants, CEITEC-Central European Institute of Technology and National Centre for Biotechnology Research, Faculty of Science, Kamenice 5, 62500 Brno, Czech Republic.
Plants (Basel). 2021 Feb 13;10(2):362. doi: 10.3390/plants10020362.
Plants adapt to continual changes in environmental conditions throughout their life spans. High-throughput phenotyping methods have been developed to noninvasively monitor the physiological responses to abiotic/biotic stresses on a scale spanning a long time, covering most of the vegetative and reproductive stages. However, some of the physiological events comprise almost immediate and very fast responses towards the changing environment which might be overlooked in long-term observations. Additionally, there are certain technical difficulties and restrictions in analyzing phenotyping data, especially when dealing with repeated measurements. In this study, a method for comparing means at different time points using generalized linear mixed models combined with classical time series models is presented. As an example, we use multiple chlorophyll time series measurements from different genotypes. The use of additional time series models as random effects is essential as the residuals of the initial mixed model may contain autocorrelations that bias the result. The nature of mixed models offers a viable solution as these can incorporate time series models for residuals as random effects. The results from analyzing chlorophyll content time series show that the autocorrelation is successfully eliminated from the residuals and incorporated into the final model. This allows the use of statistical inference.
植物在其整个生命周期中适应环境条件的持续变化。高通量表型分析方法已被开发出来,用于在长时间尺度上非侵入性地监测对非生物/生物胁迫的生理反应,涵盖大部分营养和生殖阶段。然而,一些生理事件包括对不断变化的环境几乎立即和非常快速的反应,这些反应在长期观察中可能会被忽视。此外,在分析表型数据时存在一定的技术困难和限制,特别是在处理重复测量时。在本研究中,提出了一种使用广义线性混合模型结合经典时间序列模型来比较不同时间点均值的方法。作为一个例子,我们使用来自不同基因型的多个叶绿素时间序列测量值。将额外的时间序列模型用作随机效应至关重要,因为初始混合模型的残差可能包含会使结果产生偏差的自相关性。混合模型的性质提供了一个可行的解决方案,因为这些模型可以将残差的时间序列模型纳入作为随机效应。分析叶绿素含量时间序列的结果表明,自相关性已成功从残差中消除并纳入最终模型。这使得能够进行统计推断。