2011
DOI: 10.4148/2475-7772.1054
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Comparison of Linear Mixed Models for Multiple Environment Plant Breeding Trials

Abstract: Evaluations of multiple environment trials (MET) often reveal substantial genotype by environment interactions, and the effects of genotypes within environments are often estimated using cell means, i.e. the simple mean of the observations of each genotype in each environment. However, these estimates are inaccurate, especially for unreplicated or partially replicated trials, so alternative methods of analysis are necessary. One possible approach utilizes information, often from pedigree data, about relationsh… Show more

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Cited by 3 publications
(2 citation statements)
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“…Data collected in multi-location trials are complex in nature and need suitable statistical analysis for accurate interpretation. MET often reveal significant genotype environment interaction, making the selection of genotypes imprecise (Walker et al, 2011). In the presence of significant genotype environment interaction (GEI), selection should be location specific with adaptability.…”
Section: Evaluation Of Advanced Sugarcane Clonesmentioning
confidence: 99%
“…Data collected in multi-location trials are complex in nature and need suitable statistical analysis for accurate interpretation. MET often reveal significant genotype environment interaction, making the selection of genotypes imprecise (Walker et al, 2011). In the presence of significant genotype environment interaction (GEI), selection should be location specific with adaptability.…”
Section: Evaluation Of Advanced Sugarcane Clonesmentioning
confidence: 99%
“…Even though no one-size-fits-all model can be applied to all situations, the general suggestion is that more models must be tested and compared to find the optimal one; indeed, one or a few models might be preferred to deal with multiple environments for a certain crop. Simulated datasets used to compare mixed models might not fit all practical cases well for MET (Walker et al 2011;Ferraudo and Perecin 2014). Some models have been employed to study a certain number of real datasets but, because the number of datasets was limited, drawing generic conclusions on the optimal models for some crops was difficult.…”
Section: Introductionmentioning
confidence: 99%