Tanaka Ryokei, Lui-King James, Mandaharisoa Sarah Tojo, Rakotondramanana Mbolatantely, Ranaivo Harisoa Nicole, Pariasca-Tanaka Juan, Kanegae Hiromi Kajiya, Iwata Hiroyoshi, Wissuwa Matthias
Department of Agricultural and Environmental Biology, Graduate School of Agricultural and Life Sciences, The University of Tokyo, 1-1-1 Yayoi, Bunkyo, Tokyo, 113-8657, Japan.
International Program in Agricultural Development Studies, Graduate School of Agricultural and Life Sciences, The University of Tokyo, 1-1-1 Yayoi, Bunkyo, Tokyo, 113-8657, Japan.
Theor Appl Genet. 2021 Oct;134(10):3397-3410. doi: 10.1007/s00122-021-03909-9. Epub 2021 Jul 15.
Despite phenotyping the training set under unfavorable conditions on smallholder farms in Madagascar, we were able to successfully apply genomic prediction to select donors among gene bank accessions. Poor soil fertility and low fertilizer application rates are main reasons for the large yield gap observed for rice produced in sub-Saharan Africa. Traditional varieties that are preserved in gene banks were shown to possess traits and alleles that would improve the performance of modern variety under such low-input conditions. How to accelerate the utilization of gene bank resources in crop improvement is an unresolved question and here our objective was to test whether genomic prediction could aid in the selection of promising donors. A subset of the 3,024 sequenced accessions from the IRRI rice gene bank was phenotyped for yield and agronomic traits for two years in unfertilized farmers' fields in Madagascar, and based on these data, a genomic prediction model was developed. This model was applied to predict the performance of the entire set of 3024 accessions, and the top predicted performers were sent to Madagascar for confirmatory trials. The prediction accuracies ranged from 0.10 to 0.30 for grain yield, from 0.25 to 0.63 for straw biomass, to 0.71 for heading date. Two accessions have subsequently been utilized as donors in rice breeding programs in Madagascar. Despite having conducted phenotypic evaluations under challenging conditions on smallholder farms, our results are encouraging as the prediction accuracy realized in on-farm experiments was in the range of accuracies achieved in on-station studies. Thus, we could provide clear empirical evidence on the value of genomic selection in identifying suitable genetic resources for crop improvement, if genotypic data are available.
尽管在马达加斯加小农户的不利条件下对训练集进行了表型分析,但我们仍能够成功应用基因组预测在基因库种质中选择供体。土壤肥力差和肥料施用量低是撒哈拉以南非洲水稻产量差距大的主要原因。保存在基因库中的传统品种被证明具有能在这种低投入条件下提高现代品种性能的性状和等位基因。如何加速基因库资源在作物改良中的利用是一个尚未解决的问题,我们的目标是测试基因组预测是否有助于选择有潜力的供体。从国际水稻研究所(IRRI)水稻基因库的3024个测序种质中选取了一部分,在马达加斯加未施肥的农民田间对产量和农艺性状进行了两年的表型分析,并基于这些数据建立了一个基因组预测模型。该模型被用于预测3024个种质的整体表现,预测表现最佳的种质被送往马达加斯加进行验证试验。籽粒产量的预测准确率在0.10至0.30之间,秸秆生物量的预测准确率在0.25至0.63之间,抽穗期的预测准确率高达0.71。随后,有两个种质被用作马达加斯加水稻育种计划的供体。尽管在小农户农场的具有挑战性的条件下进行了表型评估,但我们的结果令人鼓舞,因为田间试验实现的预测准确率与试验站研究中获得的准确率范围相当。因此,如果有基因型数据,我们可以为基因组选择在识别适合作物改良的遗传资源方面的价值提供明确的实证证据。