Register      Login
Crop and Pasture Science Crop and Pasture Science Society
Plant sciences, sustainable farming systems and food quality
RESEARCH ARTICLE

Adding genotypic differences in reproductive partitioning and grain set efficiency for estimating sorghum grain number

Brenda L. Gambín A B and Lucas Borrás A
+ Author Affiliations
- Author Affiliations

A Departamento de Producción Vegetal, Facultad de Ciencias Agrarias, Universidad Nacional de Rosario, S2125ZAA Zavalla, Santa Fe, Argentina.

B Corresponding author. Email: bgambin@unr.edu.ar

Crop and Pasture Science 64(1) 9-17 https://doi.org/10.1071/CP13013
Submitted: 9 January 2013  Accepted: 4 March 2013   Published: 8 April 2013

Abstract

Current models of sorghum crop growth predict grain number using a calculated plant growth rate around flowering and a genotype-dependent parameter that describes the relationship between both traits. Few values for this parameter have been reported, being similar within triple-dwarf or single-dwarf sorghum genotypes. This approach narrows genotypic differences in grain number determination mostly to differences in traits affecting biomass production. Relevant traits such as biomass partitioning to reproductive structures and grain-set efficiency are not specifically considered, but both vary across genotypes and could improve grain number estimations. We first explored variation for these traits (CGR, crop growth rate around flowering; PR, biomass partitioning to reproductive structures during this period; EG, grain set per unit of accumulated reproductive biomass) for a set a sorghum commercial hybrids and inbred lines growing under different conditions. Later, we used a second set of experiments to test whether considering genotype-specific PR and EG improved estimates of grain number compared with the current approach used in crop simulation models.

Grain number variations (14–63 × 103 grains m–2) due to genotype and environment were a consequence of significant differences (P < 0.05) in all analysed traits (CGR, PR, EG). Biomass partitioning and grain set per unit of accumulated reproductive biomass showed consistent genotypic differences (P < 0.001); however, they also showed significant environment or genotype × environment effects. When these specific genotypic parameters dealing with biomass partitioning and grain-set efficiency were used for estimating grain number in other non-related experiments, the predicted accuracy improved (r2 = 0.47, P < 0.05, RMSE = 7029 grains m–2) relative to the general approach using a constant parameter for most genotypes (r2 = 0.14, P < 0.28, RMSE = 12 630 grains m–2) or a calculated parameter for each genotype (r2 = 0.38, P < 0.10, RMSE = 8919 grains m–2). We propose that these traits (PR and EG) need to be considered and included in sorghum crop growth models, as they help predict grain number performance of different genotypes in different growth environments.

Additional keywords: Sorghum bicolor (L. Moench), grain sorghum, grain size, yield, genotypic variation, modelling.


References

Acreche MM, Briceno-Félix G, Sánchez JAM, Slafer GA (2008) Physiological bases of genetic gains in Mediterranean bread wheat yield in Spain. European Journal of Agronomy 28, 162–170.
Physiological bases of genetic gains in Mediterranean bread wheat yield in Spain.Crossref | GoogleScholarGoogle Scholar |

Andrade FH, Vega CRC, Uhart SA, Cirilo AG, Cantarero M, Valentinuz OR (1999) Kernel number determination in maize. Crop Science 39, 453–459.
Kernel number determination in maize.Crossref | GoogleScholarGoogle Scholar |

Araus JL, Slafer GA, Royo C, Serret MD (2008) Breeding for yield potential and stress adaptation in cereals. Critical Reviews in Plant Sciences 27, 377–412.
Breeding for yield potential and stress adaptation in cereals.Crossref | GoogleScholarGoogle Scholar |

Blum A, Golan G, Mayer J, Sinmena B (1997) The effect of dwarfing genes on sorghum grain filling from remobilized stem reserves, under stress. Field Crops Research 52, 43–54.
The effect of dwarfing genes on sorghum grain filling from remobilized stem reserves, under stress.Crossref | GoogleScholarGoogle Scholar |

Borrás L, Astini JP, Westgate ME, Severini AD (2009) Modeling anthesis to silking in maize using a plant biomass framework. Crop Science 49, 937–948.
Modeling anthesis to silking in maize using a plant biomass framework.Crossref | GoogleScholarGoogle Scholar |

Brown PJ, Klein PE, Bortiri E, Acharya CB, Rooney WL, Kresovich S (2006) Inheritance of inflorescence architecture in sorghum. Theoretical and Applied Genetics 113, 931–942.
Inheritance of inflorescence architecture in sorghum.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD28XotlChtbo%3D&md5=91d0cc594d590d8c51de36ed756451c7CAS | 16847662PubMed |

Chapman SC, Cooper M, Hammer GL, Butler DG (2000) Genotype by environment interactions affecting grain sorghum. II. Frequencies of different seasonal patterns of drought stress are related to location effects on hybrids yields. Australian Journal of Agricultural Research 51, 209–221.
Genotype by environment interactions affecting grain sorghum. II. Frequencies of different seasonal patterns of drought stress are related to location effects on hybrids yields.Crossref | GoogleScholarGoogle Scholar |

Charles-Edwards DA (1984) On the ordered development of plants. 1. An hypothesis. Annals of Botany 53, 699–707.

Doggett H (1988) ‘Sorghum.’ (Longman Group UK Ltd: London)

Donald CM, Hamblin J (1976) The biological yield and harvest index of cereals as agronomic and plant breeding criteria. Advances in Agronomy 28, 361–405.
The biological yield and harvest index of cereals as agronomic and plant breeding criteria.Crossref | GoogleScholarGoogle Scholar |

Echarte L, Andrade FH, Vega CRC, Tollenaar M (2006) Kernel number determination in Argentinean maize hybrids released between 165 and 1993. Crop Science 44, 1654–1661.

Egli DB (1998) ‘Seed biology and the yield of grain crops.’ (CAB International: Wallingford, UK)

Egli DB, Zhen-wen Y (1991) Crop growth rate and seed number per unit area in soybean. Crop Science 31, 439–442.
Crop growth rate and seed number per unit area in soybean.Crossref | GoogleScholarGoogle Scholar |

Gambín BL, Borrás L (2010) Resource distribution and the trade-off between seed number and seed weight: a comparison across crop species. Annals of Applied Biology 156, 91–102.
Resource distribution and the trade-off between seed number and seed weight: a comparison across crop species.Crossref | GoogleScholarGoogle Scholar |

Gambín BL, Borrás L, Otegui ME (2006) Source–sink relations and kernel weight differences in maize temperate hybrids. Field Crops Research 95, 316–326.
Source–sink relations and kernel weight differences in maize temperate hybrids.Crossref | GoogleScholarGoogle Scholar |

Gambín BL, Borrás L, Otegui ME (2008) Kernel weight dependence upon plant growth at different grain-filling stages in maize and sorghum. Australian Journal of Agricultural Research 59, 280–290.
Kernel weight dependence upon plant growth at different grain-filling stages in maize and sorghum.Crossref | GoogleScholarGoogle Scholar |

Gerik TJ, Rosenthal WD, Vanderlip RL, Wade LJ (2004) Simulating seed number in grain sorghum from increases in plant dry weight. Agronomy Journal 96, 1222–1230.
Simulating seed number in grain sorghum from increases in plant dry weight.Crossref | GoogleScholarGoogle Scholar |

Hammer GL, Broad IJ (2003) Genotype and environmental effects on dynamics of harvest index during grain filling in sorghum. Agronomy Journal 95, 199–206.
Genotype and environmental effects on dynamics of harvest index during grain filling in sorghum.Crossref | GoogleScholarGoogle Scholar |

Hammer GL, Carberry PS, Muchow RC (1993) Modelling genotypic and environmental control of leaf area dynamics in grain sorghum. I. Whole plant level. Field Crops Research 33, 293–310.
Modelling genotypic and environmental control of leaf area dynamics in grain sorghum. I. Whole plant level.Crossref | GoogleScholarGoogle Scholar |

Hammer G, Cooper M, Tardieu F, Welch S, Walsh B, van Eeuwijk F, Chapman S, Podlich D (2006) Models for navigating biological complexity in breeding improved crop plants. Trends in Plant Science 11, 587–593.

Hammer GL, van Oosterom E, McLean G, Chapman SC, Broad I, Harland P, Muchow RC (2010) Adapting APSIM to model the physiology and genetics of complex adaptive traits in field crops. Journal of Experimental Botany 61, 2185–2202.
Adapting APSIM to model the physiology and genetics of complex adaptive traits in field crops.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3cXmsVGnsr0%3D&md5=5101e9c6f36e696e8da65f971f2bd5d7CAS | 20400531PubMed |

Heiniger RW, Vanderlip RL, Welch SM (1997) Developing guidelines for replanting grain sorghum: I. Validation and sensitivity analysis of the SORKAM sorghum growth model. Agronomy Journal 89, 75–83.

Messina C, Hammer G, Dong Z, Podlich D, Cooper M (2009) Modelling crop improvement in a GXEXM framework via gene-trail-phenotype relationships. In ‘Crop physiology: Applications for genetic improvement and agronomy’. (Eds VO Sadras, D Calderini) pp. 235–265. (Elsevier: Amsterdam)

Rosenthal WD, Vanderlip RL, Jackson BS, Arkin GF (1989) ‘SORKAM: A grain sorghum crop growth model.’ Miscellaneous Publication MP-1669. (Texas Agricultural Experiment Station: College Station, TX)

Rotundo JL, Borrás L, De Bruin J, Pedersen P (2012) Physiological strategies for seed number determination in soybean: biomass accumulation, partitioning and seed set efficiency. Field Crops Research 135, 58–66.
Physiological strategies for seed number determination in soybean: biomass accumulation, partitioning and seed set efficiency.Crossref | GoogleScholarGoogle Scholar |

Sadras VO (2007) Evolutionary aspects of the trade-off between seed size and number in crops. Field Crops Research 100, 125–138.
Evolutionary aspects of the trade-off between seed size and number in crops.Crossref | GoogleScholarGoogle Scholar |

Sadras VO, Lawson C (2011) Genetic gain in yield and associated changes in phenotype, trait plasticity and competitive ability of South Australian wheat varieties released between 1958 and 2007. Crop & Pasture Science 62, 533–549.
Genetic gain in yield and associated changes in phenotype, trait plasticity and competitive ability of South Australian wheat varieties released between 1958 and 2007.Crossref | GoogleScholarGoogle Scholar |

Saeed M, Francis CA, Clegg MD (1986) Yield components analysis in grain sorghum. Crop Science 26, 346–351.
Yield components analysis in grain sorghum.Crossref | GoogleScholarGoogle Scholar |

SAS Institute (1999) ‘The SAS Online Doc v.8.’ (SAS Institute: Cary, NC)

Setiyono TD, Cassman KG, Specht JE, Dobermann A, Weiss A, Yang H, Conley SP, Robinson AP, Pedersen P, De Bruin JL (2010) Simulation of soybean growth and yield in near-optimal growth conditions. Field Crops Research 119, 161–174.
Simulation of soybean growth and yield in near-optimal growth conditions.Crossref | GoogleScholarGoogle Scholar |

Slafer GA (2003) Genetic basis of yield as viewed from a crop physiologist’s perspective. Annals of Applied Biology 142, 117–128.
Genetic basis of yield as viewed from a crop physiologist’s perspective.Crossref | GoogleScholarGoogle Scholar |

Soil Survey Staff (2010) ‘Keys to soil taxonomy.’ 11th edn (USDA/NRCS: Washington, DC)

Stickler FC, Pauli AW (1961) Influence of data of planting on yield and yield components in grain sorghum. Agronomy Journal 31, 21–22.

van Oosterom EJ, Hammer GL (2008) Determination of grain number in sorghum. Field Crops Research 108, 259–268.
Determination of grain number in sorghum.Crossref | GoogleScholarGoogle Scholar |

Vega CRC, Andrade FH, Sadras VO (2001) Reproductive partitioning and seed set efficiency in soybean, sunflower and maize. Field Crops Research 72, 163–175.
Reproductive partitioning and seed set efficiency in soybean, sunflower and maize.Crossref | GoogleScholarGoogle Scholar |

Vleeshouwers LM, Kropff MJ (2000) Modelling field emergence patterns in arable soils. New Phytologist 148, 445–457.
Modelling field emergence patterns in arable soils.Crossref | GoogleScholarGoogle Scholar |