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The Application of GGE Biplot Analysis for Evaluating Test Locations and Mega-Environment Investigation of Cotton Regional Trials 被引量:15

The Application of GGE Biplot Analysis for Evaluating Test Locations and Mega-Environment Investigation of Cotton Regional Trials
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摘要 In the process to the marketing of cultivars, identification of superior test locations within multi-environment variety trial schemes is of critical relevance. It is relevant to breeding organizations as well as to governmental organizations in charge of cultivar registration. Where competition among breeding companies exists, effective and fair multi-environment variety trials are of utmost importance to motivate investment in breeding. The objective of this study was to use genotype main effect plus genotype by environment interaction(GGE) biplot analysis to evaluate test locations in terms of discrimination ability, representativeness and desirability, and to investigate the presence of multiple mega-environments in cotton production in the Yangtze River Valley(YaRV), China. Four traits(cotton lint yield, fiber length, lint breaking tenacity, micronaire) and two composite selection indices were considered. It was found that the assumption of a single mega-environment in the YaRV for cotton production does not hold. The YaRV consists of three cotton mega-environments: a main one represented by 11 locations and two minor ones represented by two test locations each. This demands that the strategy of cotton variety registration or recommendation must be adjusted. GGE biplot analysis has also led to the identification of test location superior for cotton variety evaluation. Although test location desirable for selecting different traits varied greatly, Jinzhou, Hubei Province, China, was found to be desirable for selecting for all traits considered while Jianyang, Sichuan Province, China, was found to be desirable for none. In the process to the marketing of cultivars, identification of superior test locations within multi-environment variety trial schemes is of critical relevance. It is relevant to breeding organizations as well as to governmental organizations in charge of cultivar registration. Where competition among breeding companies exists, effective and fair multi-environment variety trials are of utmost importance to motivate investment in breeding. The objective of this study was to use genotype main effect plus genotype by environment interaction(GGE) biplot analysis to evaluate test locations in terms of discrimination ability, representativeness and desirability, and to investigate the presence of multiple mega-environments in cotton production in the Yangtze River Valley(YaRV), China. Four traits(cotton lint yield, fiber length, lint breaking tenacity, micronaire) and two composite selection indices were considered. It was found that the assumption of a single mega-environment in the YaRV for cotton production does not hold. The YaRV consists of three cotton mega-environments: a main one represented by 11 locations and two minor ones represented by two test locations each. This demands that the strategy of cotton variety registration or recommendation must be adjusted. GGE biplot analysis has also led to the identification of test location superior for cotton variety evaluation. Although test location desirable for selecting different traits varied greatly, Jinzhou, Hubei Province, China, was found to be desirable for selecting for all traits considered while Jianyang, Sichuan Province, China, was found to be desirable for none.
出处 《Journal of Integrative Agriculture》 SCIE CAS CSCD 2014年第9期1921-1933,共13页 农业科学学报(英文版)
基金 funded by the Jiangsu Agriculture Science and Technology Innovation Fund,China(CX(12)5035) the National Natural Science Foundation of China(30971735) the China Agriculture Research System(CARS-18-20) the Special Fund for Agro-Scientific Research in the Public Interest of China(Impact of Climate Change on Agriculture Production of China,200903003)
关键词 COTTON multi-environmental trial GGE biplot test location mega-environment cotton,multi-environmental trial,GGE biplot,test location,mega-environment
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参考文献36

  • 1Annicchiarico P. 1997. Additive main effects and multiplicative interaction (AMMI) analysis of genotype-location interaction in variety trials repeated over years. Theoretical and Applied Genetics, 94, 1072-1077.
  • 2Anothai J, Patanothai A, Pannangpetch K, Jogloy S, Boote K J, Hoogenboom G. 2009. Multi-environment evaluation of peanut lines by model simulation with the cultivar coefficients derived from a reduced set of observed field data. Field Crops Research, 110, 111-122.
  • 3Badu-Apraku B, Akinwale R O. 2011. Cultivar evaluation and trait analysis of tropical early maturing maize under Striga-infested and Striga-free environments. Field Crops Research, 121, 186-194.
  • 4Baker R J. 1988. Tests for crossover genotype-environmental interactions. Canadian Journal of Plant Science, 68, 405-410.
  • 5Baxevanos D, Goulas C, Rossi J, Braojos E. 2008. Separation of cotton cultivar testing sites based on representativeness and discriminating ability using GGE biplots. Agronomy Journal, 100, 1230-1236.
  • 6Blanche S B, Myers G O. 2006. Identifying discriminating locations for cultivar selection in Louisiana. Crop Science, 46, 946-949.
  • 7Cody R P, Smith J K. 1997. Applied Statistics and the SAS Programming Language. Prentice-Hall, New Jersey, USA.
  • 8Cooper M, WoodruffD R, Eisemarm R L, Brennan P S, Delacy I H. 1995. A selection strategy to accommodate genotype- by-environment interaction for grain yield of wheat: managed-environments for selection among genotypes. Theoretical and Applied Genetics, 90, 492-502.
  • 9Cooper M, Woodruff D R, Phillips I G, Basford K E, Gilmour A R. 2001. Genotype-by-management interactions for grain yield and grain protein concentration of wheat. Field Crops Research, 69, 47-67.
  • 10Cravero V, Esp6sito M A, Anido F L, Garcia S M, Cointry E. 2010. Identification of an ideal test environment for asparagus evaluation by GGE-biplot analysis. Australian Journal of Crop Science, 4, 273-277.

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