Biometris, Wageningen University & Research Centre, P.O. Box 16, 6700 AC Wageningen, The Netherlands.
Biometris, Wageningen University & Research Centre, P.O. Box 16, 6700 AC Wageningen, The Netherlands.
Plant Sci. 2019 May;282:23-39. doi: 10.1016/j.plantsci.2018.06.018. Epub 2018 Jun 30.
New types of phenotyping tools generate large amounts of data on many aspects of plant physiology and morphology with high spatial and temporal resolution. These new phenotyping data are potentially useful to improve understanding and prediction of complex traits, like yield, that are characterized by strong environmental context dependencies, i.e., genotype by environment interactions. For an evaluation of the utility of new phenotyping information, we will look at how this information can be incorporated in different classes of genotype-to-phenotype (G2P) models. G2P models predict phenotypic traits as functions of genotypic and environmental inputs. In the last decade, access to high-density single nucleotide polymorphism markers (SNPs) and sequence information has boosted the development of a class of G2P models called genomic prediction models that predict phenotypes from genome wide marker profiles. The challenge now is to build G2P models that incorporate simultaneously extensive genomic information alongside with new phenotypic information. Beyond the modification of existing G2P models, new G2P paradigms are required. We present candidate G2P models for the integration of genomic and new phenotyping information and illustrate their use in examples. Special attention will be given to the modelling of genotype by environment interactions. The G2P models provide a framework for model based phenotyping and the evaluation of the utility of phenotyping information in the context of breeding programs.
新型表型工具可生成大量关于植物生理学和形态学多方面的具有高时空分辨率的数据。这些新的表型数据对于提高对复杂性状(如产量)的理解和预测可能是有用的,这些性状的特点是强烈依赖环境背景,即基因型与环境互作。为了评估新表型信息的效用,我们将研究如何将这些信息纳入不同类型的基因型-表型(G2P)模型中。G2P 模型将表型性状预测为基因型和环境输入的函数。在过去的十年中,高密度单核苷酸多态性标记(SNP)和序列信息的获取促进了一类 G2P 模型的发展,称为基因组预测模型,它可以从全基因组标记图谱预测表型。现在的挑战是构建能够同时整合广泛的基因组信息和新的表型信息的 G2P 模型。除了对现有 G2P 模型进行修改外,还需要新的 G2P 范例。我们提出了用于整合基因组和新表型信息的候选 G2P 模型,并举例说明了它们的用途。特别关注基因型与环境互作的建模。G2P 模型为基于模型的表型提供了一个框架,并在育种计划的背景下评估了表型信息的效用。