4.8 Article

Leaf Photosynthetic Parameters Related to Biomass Accumulation in a Global Rice Diversity Survey

期刊

PLANT PHYSIOLOGY
卷 175, 期 1, 页码 248-258

出版社

OXFORD UNIV PRESS INC
DOI: 10.1104/pp.17.00332

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资金

  1. CAS [XDA08020301]
  2. Shanghai Municipal Natural Science Foundation [17YF1421800, 14ZR1446700]
  3. Bill & Melinda Gates Foundation

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Mining natural variations is a major approach to identify new options to improve crop light use efficiency. So far, successes in identifying photosynthetic parameters positively related to crop biomass accumulation through this approach are scarce, possibly due to the earlier emphasis on properties related to leaf instead of canopy photosynthetic efficiency. This study aims to uncover rice (Oryza sativa) natural variations to identify leaf physiological parameters that are highly correlated with biomass accumulation, a surrogate of canopy photosynthesis. To do this, we systematically investigated 14 photosynthetic parameters and four morphological traits in a rice population, which consists of 204 U.S. Department of Agriculture-curated minicore accessions collected globally and 11 elite Chinese rice cultivars in both Beijing and Shanghai. To identify key components responsible for the variance of biomass accumulation, we applied a stepwise feature-selection approach based on linear regression models. Although there are large variations in photosynthetic parameters measured in different environments, we observed that photosynthetic rate under low light (Alow) was highly related to biomass accumulation and also exhibited high genomic inheritability in both environments, suggesting its great potential to be used as a target for future rice breeding programs. Large variations in Alow among modern rice cultivars further suggest the great potential of using this parameter in contemporary rice breeding for the improvement of biomass and, hence, yield potential.

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