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Stability Indices to Deciphering the Genotype-by-Environment Interaction (GEI) Effect: An Applicable Review for Use in Plant Breeding Programs

Alireza Pour‐Aboughadareh, Marouf Khalili, Péter Poczai, Tiago Olivoto

2022Plants155 citationsDOIOpen Access PDF

Abstract

Experiments measuring the interaction between genotypes and environments measure the spatial (e.g., locations) and temporal (e.g., years) separation and/or combination of these factors. The genotype-by-environment interaction (GEI) is very important in plant breeding programs. Over the past six decades, the propensity to model the GEI led to the development of several models and mathematical methods for deciphering GEI in multi-environmental trials (METs) called "stability analyses". However, its size is hidden by the contribution of improved management in the yield increase, and for this reason comparisons of new with old varieties in a single experiment could reveal its real size. Due to the existence of inherent differences among proposed methods and analytical models, it is necessary for researchers that calculate stability indices, and ultimately select the superior genotypes, to dissect their usefulness. Thus, we have collected statistics, as well as models and their equations, to explore these methods further. This review introduces a complete set of parametric and non-parametric methods and models with a selection pattern based on each of them. Furthermore, we have aligned each method or statistic with a matched software, macro codes, and/or scripts.

Topics & Concepts

Stability (learning theory)StatisticParametric statisticsSelection (genetic algorithm)MacroStatisticsParametric modelComputer scienceGene–environment interactionSet (abstract data type)Scripting languageInteractionMeasure (data warehouse)Data miningMathematicsEconometricsMachine learningGenotypeBiologyGeneOperating systemProgramming languageBiochemistryGenetics and Plant BreedingGenetic Mapping and Diversity in Plants and AnimalsAgricultural Practices and Plant Genetics