ICG-3 (Phytosphäre), Forschungszentrum Jülich, D-52425 Jülich, Germany.
J Exp Bot. 2010 May;61(8):2043-55. doi: 10.1093/jxb/erp358. Epub 2010 Jan 4.
In the past, biologists have characterized the responses of a wide range of plant species to their environment. As a result, phenotypic data from hundreds of experiments are publicly available now. Unfortunately, this information is not structured in a way that enables quantitative and comparative analyses. We aim to fill this gap by building a large database which currently contains data on 1000 experiments and 800 species. This paper presents methodology to generalize across different experiments and species, taking the response of specific leaf area (SLA; leaf area:leaf mass ratio) to irradiance as an example. We show how to construct and quantify a normalized mean light-response curve, and subsequently test whether there are systematic differences in the form of the curve between contrasting subgroups of species. This meta-analysis is then extended to a range of other environmental factors important for plant growth as well as other phenotypic traits, using >5300 mean values. The present approach, which we refer to as 'meta-phenomics', represents a valuable tool in understanding the integrated response of plants to their environment and could serve as a benchmark for future phenotyping efforts as well as for modelling global change effects on both wild species and crops.
过去,生物学家已经描述了广泛的植物物种对其环境的响应。因此,现在有数百个实验的表型数据可供公开使用。不幸的是,这些信息没有以一种能够进行定量和比较分析的方式进行结构化。我们旨在通过构建一个大型数据库来填补这一空白,该数据库目前包含了 1000 个实验和 800 个物种的数据。本文提出了一种跨不同实验和物种进行概括的方法,以特定叶面积(SLA;叶面积与叶质量比)对光照的响应为例。我们展示了如何构建和量化归一化平均光响应曲线,然后检验在具有对比性的物种亚组之间,曲线的形式是否存在系统差异。然后,我们使用超过 5300 个平均值,将这种元分析扩展到对植物生长和其他表型特征很重要的一系列其他环境因素。本研究方法,我们称之为“元组学”,是理解植物对环境综合响应的一种有价值的工具,可作为未来表型分析工作的基准,以及对野生物种和作物的全球变化影响进行建模的基准。