UMR BFP, INRA, Université de Bordeaux, Villenave d'Ornon, France.
CIRAD, UMR AGAP and Université de Montpellier, Montpellier, France.
J Exp Bot. 2019 Oct 24;70(20):5687-5701. doi: 10.1093/jxb/erz331.
Plant development studies often generate data in the form of multivariate time series, each variable corresponding to a count of newly emerged organs for a given development process. These phenological data often exhibit highly structured patterns, and the aim of this study was to identify such patterns in cultivated strawberry. Six strawberry genotypes were observed weekly for their course of emergence of flowers, leaves, and stolons during 7 months. We assumed that these phenological series take the form of successive phases, synchronous between individuals. We applied univariate multiple change-point models for the identification of flowering, vegetative development, and runnering phases, and multivariate multiple change-point models for the identification of consensus phases for these three development processes. We showed that the flowering and the runnering processes are the main determinants of the phenological pattern. On this basis, we propose a typology of the six genotypes in the form of a hierarchical classification. This study introduces a new longitudinal data modeling approach for the identification of phenological phases in plant development. The focus was on development variables but the approach can be directly extended to growth variables and to multivariate series combining growth and development variables.
植物发育研究通常以多元时间序列的形式产生数据,每个变量对应于给定发育过程中新出现的器官的计数。这些物候数据通常表现出高度结构化的模式,本研究的目的是在栽培草莓中识别这些模式。对 6 个草莓基因型进行了每周观察,以了解它们在 7 个月期间花、叶和匍匐茎出现的过程。我们假设这些物候系列呈现出连续的阶段,个体之间是同步的。我们应用单变量多元变化点模型来识别开花、营养生长和匍匐茎生长阶段,以及多变量多元变化点模型来识别这三个发育过程的共识阶段。结果表明,开花和匍匐茎生长过程是物候模式的主要决定因素。在此基础上,我们以层次分类的形式提出了 6 个基因型的分类法。本研究提出了一种新的纵向数据建模方法,用于识别植物发育中的物候阶段。重点是发育变量,但该方法可以直接扩展到生长变量和结合生长和发育变量的多变量系列。