Brault Charlotte, Lazerges Juliette, Doligez Agnès, Thomas Miguel, Ecarnot Martin, Roumet Pierre, Bertrand Yves, Berger Gilles, Pons Thierry, François Pierre, Le Cunff Loïc, This Patrice, Segura Vincent
UMR AGAP Institut, Univ Montpellier, CIRAD, INRAE, Institut Agro Montpellier, Montpellier, 34398, France.
UMT Geno-Vigne®, IFV, INRAE, Institut Agro Montpellier, 34398, Montpellier, France.
Plant Methods. 2022 Sep 5;18(1):108. doi: 10.1186/s13007-022-00940-9.
Phenomic prediction has been defined as an alternative to genomic prediction by using spectra instead of molecular markers. A reflectance spectrum provides information on the biochemical composition within a tissue, itself being under genetic determinism. Thus, a relationship matrix built from spectra could potentially capture genetic signal. This new methodology has been mainly applied in several annual crop species but little is known so far about its interest in perennial species. Besides, phenomic prediction has only been tested for a restricted set of traits, mainly related to yield or phenology. This study aims at applying phenomic prediction for the first time in grapevine, using spectra collected on two tissues and over two consecutive years, on two populations and for 15 traits, related to berry composition, phenology, morphological and vigour. A major novelty of this study was to collect spectra and phenotypes several years apart from each other. First, we characterized the genetic signal in spectra and under which condition it could be maximized, then phenomic predictive ability was compared to genomic predictive ability.
For the first time, we showed that the similarity between spectra and genomic relationship matrices was stable across tissues or years, but variable across populations, with co-inertia around 0.3 and 0.6 for diversity panel and half-diallel populations, respectively. Applying a mixed model on spectra data increased phenomic predictive ability, while using spectra collected on wood or leaves from one year or another had less impact. Differences between populations were also observed for predictive ability of phenomic prediction, with an average of 0.27 for the diversity panel and 0.35 for the half-diallel. For both populations, a significant positive correlation was found across traits between predictive ability of genomic and phenomic predictions.
NIRS is a new low-cost alternative to genotyping for predicting complex traits in perennial species such as grapevine. Having spectra and phenotypes from different years allowed us to exclude genotype-by-environment interactions and confirms that phenomic prediction can rely only on genetics.
表型组预测被定义为一种通过使用光谱而非分子标记来替代基因组预测的方法。反射光谱提供了关于组织内生化组成的信息,而组织本身受遗传决定。因此,基于光谱构建的关系矩阵有可能捕获遗传信号。这种新方法主要应用于几种一年生作物物种,但目前对于其在多年生物种中的应用价值知之甚少。此外,表型组预测仅针对一组有限的性状进行了测试,主要与产量或物候相关。本研究旨在首次在葡萄中应用表型组预测,使用在两个组织上连续两年收集的光谱,涉及两个群体以及与浆果组成、物候、形态和活力相关的15个性状。本研究的一个主要新颖之处在于相隔数年收集光谱和表型。首先,我们表征了光谱中的遗传信号以及在何种条件下该信号可以最大化,然后将表型组预测能力与基因组预测能力进行了比较。
我们首次表明,光谱与基因组关系矩阵之间的相似性在不同组织或年份间是稳定的,但在不同群体间存在差异,多样性群体和半双列群体的共同惯性分别约为0.3和0.6。对光谱数据应用混合模型提高了表型组预测能力,而使用不同年份木材或叶片上收集的光谱影响较小。在表型组预测能力方面也观察到群体间的差异,多样性群体平均为0.27,半双列群体为0.35。对于两个群体,基因组和表型组预测能力在各性状间均发现显著正相关。
近红外光谱是一种用于预测葡萄等多年生物种复杂性状的新型低成本基因分型替代方法。拥有来自不同年份的光谱和表型使我们能够排除基因型与环境的相互作用,并证实表型组预测仅可依赖于遗传学。