Sakurai Kengo, Toda Yusuke, Kajiya-Kanegae Hiromi, Ohmori Yoshihiro, Yamasaki Yuji, Takahashi Hirokazu, Takanashi Hideki, Tsuda Mai, Tsujimoto Hisashi, Kaga Akito, Nakazono Mikio, Fujiwara Toru, Iwata Hiroyoshi
Graduate School of Agricultural and Life Sciences, Univ. of Tokyo, Tokyo, Japan.
Arid Land Research Center, Tottori Univ., Tottori, Japan.
Plant Genome. 2022 Dec;15(4):e20244. doi: 10.1002/tpg2.20244. Epub 2022 Aug 22.
Multispectral (MS) imaging enables the measurement of characteristics important for increasing the prediction accuracy of genotypic and phenotypic values for yield-related traits. In this study, we evaluated the potential application of temporal MS imaging for the prediction of aboveground biomass (AGB) in soybean [Glycine max (L.) Merr.]. Field experiments with 198 accessions of soybean were conducted with four different irrigation levels. Five vegetation indices (VIs) were calculated using MS images from soybean canopies from early vegetative to early reproductive stage. To predict the genotypic values of AGB, VIs at the different growth stages were used as secondary traits in a multitrait genomic prediction. The prediction accuracy of the genotypic values of AGB from MS and genomic data largely outperformed that of the genomic data alone before the flowering stage (90% of accessions did not flower), suggesting that it would be possible to determine cross-combinations based on the predicted genotypic values of AGB. We compared the prediction accuracy of a model using the five VIs and a model using only one VI to predict the phenotypic values of AGB and found that the difference in prediction accuracy decreased over time at all irrigation levels except for the most severe drought. The difference in the most severe drought was not as small as that in the other treatments. Only the prediction accuracy of a model using the five VIs in the most severe droughts gradually increased over time. Therefore, the optimal timing for MS imaging may depend on the irrigation levels.
多光谱(MS)成像能够测量一些重要特征,这些特征有助于提高与产量相关性状的基因型和表型值的预测准确性。在本研究中,我们评估了时间序列MS成像在预测大豆[Glycine max (L.) Merr.]地上生物量(AGB)方面的潜在应用。对198份大豆种质进行了田间试验,设置了四种不同的灌溉水平。利用大豆冠层从营养生长早期到生殖生长早期的MS图像计算了五个植被指数(VI)。为了预测AGB的基因型值,将不同生长阶段的VI作为多性状基因组预测中的次要性状。在开花期之前(90%的种质未开花),基于MS和基因组数据对AGB基因型值的预测准确性在很大程度上优于仅基于基因组数据的预测准确性,这表明有可能根据预测的AGB基因型值来确定杂交组合。我们比较了使用五个VI的模型和仅使用一个VI的模型预测AGB表型值的准确性,发现除了最严重干旱处理外,在所有灌溉水平下,预测准确性的差异随时间推移而减小。最严重干旱处理下的差异不像其他处理那么小。只有在最严重干旱条件下使用五个VI的模型的预测准确性随时间逐渐提高。因此,MS成像的最佳时间可能取决于灌溉水平。