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Life Science Alliance, Life Science Alliance, 1(3), p. e201900551, 2019

DOI: 10.26508/lsa.201900551

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Metabolome-based prediction of yield heterosis contributes to the breeding of elite rice

Journal article published in 2019 by Zhiwu Dan ORCID, Yunping Chen, Weibo Zhao, Qiong Wang, Wenchao Huang ORCID
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Improvement of the breeding efficiencies of heterotic crops adaptive to different conditions can mitigate the food shortage crisis due to overpopulation and climate change. To date, diverse molecular markers have been used to guide field phenotypic selection, whereas accurate predictions of complex heterotic traits are rarely reported. Here, we present a practical metabolome-based strategy for predicting yield heterosis in rice. The dissection of population structure based on untargeted metabolite profiles as the initial critical step in multivariate modeling performed better than the screening of predictive variables. Then the assessment of each predictive variable’s contribution to predictive models according to all latent factors was more precise than the conventional first one. Metabolites belonging to specific pathways were closely associated with yield heterosis, and the up-regulation of galactose metabolism promoted robust yield heterosis in hybrids under different growth conditions. Our study demonstrates that metabolome-based predictive models with correctly dissected population structure and screened predictive variables can facilitate accurate predictions of yield heterosis and have great potential for establishing molecular marker–based precision breeding programs.