320-4 Predictive Ability Assessment of Linear Mixed Models In Multienvironment Trials In Corn.

Poster Number 631

See more from this Division: C01 Crop Breeding & Genetics
See more from this Session: Molecular, Statistical and Breeding Tools to Improve Selection Efficiency
Wednesday, October 19, 2011
Henry Gonzalez Convention Center, Hall C
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Yoon-sup So, Department of Crop Science, Chungbuk National University, Cheongju, South Korea and Jode Edwards, Iowa State University, USDA-ARS, Ames, IA
Prediction of future performance of cultivars is an important objective of multienvironment trials(MET). A series of linear mixed models with varying degrees of heterogeneous genotypic variance, correlation, and error variance structure were compared for their ability to predict performance in an untested environment in 51 data sets from the Iowa Crop Performance Test for corn (Zea mays L.). In most cases there was no substantial improvement in predictions among models that included heterogeneity of genotypic variance–covariance components, but the best prediction model included heterogeneous environment-specific error variances in 63% of data sets analyzed. The largest differences in predictive ability among models appeared to be due to poor estimation of genotypic covariance components in data sets with few common hybrids across 2 yr in a data set. Simulation confirmed the observation from cross validation. Our results suggested that predictions were not improved by modeling heterogeneous genotypic covariance components because of the small number of common hybrids across years. Inclusion of heterogeneous error variances did lead to slight improvements in predictions.
See more from this Division: C01 Crop Breeding & Genetics
See more from this Session: Molecular, Statistical and Breeding Tools to Improve Selection Efficiency