Analyzing variety by environment data using multiplicative mixed models and adjustments for spatial field trend

Smith, Alison, Cullis, Brian and Thompson, Robin (2001) Analyzing variety by environment data using multiplicative mixed models and adjustments for spatial field trend. Biometrics, 57 (4). pp. 1138-1147. 10.1111/j.0006-341X.2001.01138.x
Copy

The recommendation of new plant varieties for commercial use requires reliable and accurate predictions of the average yield of each variety across a range of target environments and knowledge of important interactions with the environment. This information is obtained from series of plant variety trials, also known as multi-environment trials (MET). Cullis, Cogel, Verbyla, and Thompson (1998) presented a spatial mixed model approach for the analysis of MET data. In this paper we extend the analysis to include multiplicative models for the variety effects in each environment. The multiplicative model corresponds to that used in the multivariate technique of factor analysis. It allows a separate genetic variance for each environment and provides a parsimonious and interpretable model for the genetic covariances between environments. The model can be regarded as a random effects analogue of AMMI (additive main effects and multiplicative interactions). We illustrate the method using a large set of MET data from a South Australian barley breeding program.

mail Request Copy

picture_as_pdf
Smith_et_al-2001-Biometrics.pdf
subject
Published Version
lock
Restricted to Repository staff only
Creative Commons Attribution
Available under Creative Commons: Attribution 4.0

Request Copy

EndNote BibTeX Reference Manager Refer Atom Dublin Core RIOXX2 XML OpenURL ContextObject in Span METS HTML Citation ASCII Citation MODS Data Cite XML MPEG-21 DIDL OpenURL ContextObject OPENAIRE
Export

Downloads