Literature DB >> 35536185

A network modeling approach provides insights into the environment-specific yield architecture of wheat.

Noah DeWitt1,2, Mohammed Guedira1, Joseph Paul Murphy1, David Marshall2, Mohamed Mergoum3, Christian Maltecca4, Gina Brown-Guedira1,2.   

Abstract

Wheat (Triticum aestivum) yield is impacted by a diversity of developmental processes which interact with the environment during plant growth. This complex genetic architecture complicates identifying quantitative trait loci that can be used to improve yield. Trait data collected on individual processes or components of yield have simpler genetic bases and can be used to model how quantitative trait loci generate yield variation. The objectives of this experiment were to identify quantitative trait loci affecting spike yield, evaluate how their effects on spike yield proceed from effects on component phenotypes, and to understand how the genetic basis of spike yield variation changes between environments. A 358 F5:6 recombinant inbred line population developed from the cross of LA-95135 and SS-MPV-57 was evaluated in 2 replications at 5 locations over the 2018 and 2019 seasons. The parents were 2 soft red winter wheat cultivars differing in flowering, plant height, and yield component characters. Data on yield components and plant growth were used to assemble a structural equation model to characterize the relationships between quantitative trait loci, yield components, and overall spike yield. The effects of major quantitative trait loci on spike yield varied by environment, and their effects on total spike yield were proportionally smaller than their effects on component traits. This typically resulted from contrasting effects on component traits, where an increase in traits associated with kernel number was generally associated with a decrease in traits related to kernel size. In all, the complete set of identified quantitative trait loci was sufficient to explain most of the spike yield variation observed within each environment. Still, the relative importance of individual quantitative trait loci varied dramatically. Path analysis based on coefficients estimated through structural equation model demonstrated that these variations in effects resulted from both different effects of quantitative trait loci on phenotypes and environment-by-environment differences in the effects of phenotypes on one another, providing a conceptual model for yield genotype-by-environment interactions in wheat. Published by Oxford University Press on behalf of Genetics Society of America 2022.

Entities:  

Keywords:  QTL mapping; structural equation modeling; yield components; yield variation

Mesh:

Year:  2022        PMID: 35536185      PMCID: PMC9252273          DOI: 10.1093/genetics/iyac076

Source DB:  PubMed          Journal:  Genetics        ISSN: 0016-6731            Impact factor:   4.402


  20 in total

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2.  Ecological and developmental context of natural selection: maternal effects and thermally induced plasticity in the frog Bombina orientalis.

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Journal:  Evolution       Date:  2006-01       Impact factor: 3.694

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Authors:  Scott A Boden; Colin Cavanagh; Brian R Cullis; Kerrie Ramm; Julian Greenwood; E Jean Finnegan; Ben Trevaskis; Steve M Swain
Journal:  Nat Plants       Date:  2015-01-26       Impact factor: 15.793

4.  Gibberellic Acid Regulates Cell Wall Extensibility in Wheat (Triticum aestivum L.).

Authors:  G Keyes; M E Sorrells; T L Setter
Journal:  Plant Physiol       Date:  1990-01       Impact factor: 8.340

5.  Molecular characterization of the major wheat domestication gene Q.

Authors:  Kristin J Simons; John P Fellers; Harold N Trick; Zengcui Zhang; Yin-Shan Tai; Bikram S Gill; Justin D Faris
Journal:  Genetics       Date:  2005-09-19       Impact factor: 4.562

6.  Identification and development of a functional marker of TaGW2 associated with grain weight in bread wheat (Triticum aestivum L.).

Authors:  Zhenqi Su; Chenyang Hao; Lanfen Wang; Yuchen Dong; Xueyong Zhang
Journal:  Theor Appl Genet       Date:  2010-09-14       Impact factor: 5.699

7.  'Green revolution' genes encode mutant gibberellin response modulators.

Authors:  J Peng; D E Richards; N M Hartley; G P Murphy; K M Devos; J E Flintham; J Beales; L J Fish; A J Worland; F Pelica; D Sudhakar; P Christou; J W Snape; M D Gale; N P Harberd
Journal:  Nature       Date:  1999-07-15       Impact factor: 49.962

8.  Characterizing the oligogenic architecture of plant growth phenotypes informs genomic selection approaches in a common wheat population.

Authors:  Noah DeWitt; Mohammed Guedira; Edwin Lauer; J Paul Murphy; David Marshall; Mohamed Mergoum; Jerry Johnson; James B Holland; Gina Brown-Guedira
Journal:  BMC Genomics       Date:  2021-05-31       Impact factor: 3.969

9.  Genetic dissection of grain size and grain number trade-offs in CIMMYT wheat germplasm.

Authors:  Simon Griffiths; Luzie Wingen; Julian Pietragalla; Guillermo Garcia; Ahmed Hasan; Daniel Miralles; Daniel F Calderini; Jignaben Bipinchandra Ankleshwaria; Michelle Leverington Waite; James Simmonds; John Snape; Matthew Reynolds
Journal:  PLoS One       Date:  2015-03-16       Impact factor: 3.240

10.  lme4qtl: linear mixed models with flexible covariance structure for genetic studies of related individuals.

Authors:  Andrey Ziyatdinov; Miquel Vázquez-Santiago; Helena Brunel; Angel Martinez-Perez; Hugues Aschard; Jose Manuel Soria
Journal:  BMC Bioinformatics       Date:  2018-02-27       Impact factor: 3.169

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