Genotype by environment interaction and indirect selection for yield in sunflower II. Three-mode principal component analysis of oil and biomass yield across environments in Argentina

被引:19
作者
de la Vega, AJ
Chapman, SC
机构
[1] Advanta Semillas SAIC, RA-2600 Venado Tuerto, Argentina
[2] CSIRO, Long Pocket Labs, Indooroopilly, Qld 4068, Australia
关键词
adaptation; determinants of yield; G x E interaction; three-mode principal component analysis; sunflower;
D O I
10.1016/S0378-4290(01)00163-0
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
The genotype by environment (G x E) interactions observed for sunflower oil yield in different regions of Argentina can be analyzed in terms of differences among genotypes in individual environments for its components grain number, grain weight, and oil content (yield analysis). Similarly, G x E interactions observed for oil-corrected grain yield can be analyzed in terms of its determinants total biomass and harvest index (physiological analysis). Three-mode (genotypes x environments x attributes) principal component analysis was applied to 10 x 21 x 4 and 10 x I I x 3 matrices, for each of the first and the second analyses, respectively, to collectively interpret the changes in these attributes in a sunflower genotype-environment system, and to assess the relative importance of each trait as underlying determinant of the observed G x E interaction for oil yield. The 3 x 2 x 3 and 4 x 4 x 2 (genotypes x environments x attributes) principal component models explained about 65% of the variation computed for first and second approaches, respectively. For the yield analysis, the first environment component (54% of the variation) explained the common pattern of oil yield over environments and showed that oil content was highly positively correlated to oil yield, while grain number and grain weight showed lack of association with oil yield and were negatively correlated. The second environment component (11% of the variation) contrasted northern and central environments and showed that grain number is the main underlying determinant of the observed G x E interactions between these two mega-environments for oil yield. In the physiological analysis, the first environment component (29% of the variation) explained the common pattern of oil-corrected grain yield over environments and showed that harvest index was more strongly positively correlated to oil-corrected grain yield, but not to total oil-corrected biomass. The second environmental component (19% of the variation) contrasted northern and central environments and showed that oil-corrected biomass is the physiological attribute that is largely responsible for the G x E interactions for oil-corrected grain yield. (C) 2001 Elsevier Science B.V. All rights reserved.
引用
收藏
页码:39 / 50
页数:12
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