Genotype by environment interaction and stability analysis of three agronomic traits in Kersting's groundnut (Macrotyloma geocarpum) using factor analytic modeling and environmental covariates

Author:

Coulibaly Mariam123ORCID,Bodjrenou Guillaume1,Fassinou Hotègni Nicodème V.1ORCID,Akohoue Félicien1,Agossou Chaldia A.1,Azon Christel Ferréol1,Matro Xavier1,Bello Saliou4,Adjé Charlotte O. A.1,Sanou Jacob3,Batieno Benoît Joseph3,Sawadogo Mahamadou2,Achigan‐Dako Enoch Gbènato1ORCID

Affiliation:

1. Genetics, Biotechnology and Seed Science Unit (GBioS), Faculty of Agricultural Sciences University of Abomey‐Calavi Abomey‐Calavi Republic of Benin

2. Laboratory of Biosciences, Faculty of Earth and Life science University of Ouaga I Pr. Joseph Ki‐Zerbo Ouagadougou Burkina Faso

3. National Institute of the Environment and Agricultural Research (INERA) Ouagadougou Burkina Faso

4. National Institute of Agronomic Research of Benin (INRAB) Cotonou Republic of Benin

Abstract

AbstractUnderstanding genotype by environment interaction (GEI) represents a challenge in Kersting's groundnut [Macrotyloma geocarpum (Harms) Maréchal and Baudet] breeding for selecting high‐performing and stable lines across environments. Here, we investigated GEI and stability in Kersting's groundnut using factor analytic (FA) based linear mixed models and environmental covariates. A total of 375 accessions were evaluated across 3 years (2017, 2018, and 2019) and two locations (Sékou and Savè) in Benin, generating five environments (E1, E2, E3, E4, and E5). The traits measured included days to 50% flowering (DFF), grain yield (YLD), and 100‐seed weight (HSW). The study generated multi‐environment values for grain yield and its components in Kersting's groundnut. The genetic correlations between pairs of environments ranged from −0.71 to 0.99. The genetic correlations between YLD and HSW indicated positive and moderate to high correlations in all environments. The FA analysis revealed that FA2 structure accounted for 93.9% of the genetic variability in DFF with factor 1 accounting for more than 90% of the environments variations. Two factors explained 87% of the genetic variance in grain yield, and 70% of the environments variability were clustered by factor 1. For HSW, two factors explained 85% of the genetic variance of the environments, and factor 1 accounted for 72.7%. Combining environmental covariates to FA models revealed that precipitation, temperature, and growth cycle duration were highly correlated to the environmental loadings of factor 1. Relative humidity and solar radiation showed moderate to high correlations with factor 2 loadings. Those covariates explained the high GEI among environments clustered by a given factor. Precipitations and temperatures affected the variations in grain yield. Finally, based on latent regression analysis, the accessions AF202, AF221, AF223, AF225, and AF256 were identified as accessions combining best performance for grain yield, early flowering, and 100‐seed weight, showing adaptability across environments and stability to some environments.

Publisher

Wiley

Reference93 articles.

1. GGE Biplot Analysis of Multi-environment Yield Trials of Durum Wheat (Triticum turgidum Desf.) Genotypes in North Western Ethiopia

2. An Accurate Mathematical Formula for Estimating Plant Population in a Four Dimensional Field of Sole Crop

3. Evaluation of growth and yield potential of genotypes of kersting's groundnut (Macrotyloma geocarpum harms) in Northern Ghana;Adu‐Gyamfi R.;International Research Journal of Agricultural Science and Soil Science,2012

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