A Bayesian Updating Framework for Long-term Multi-Environment Trial Data in Plant Breeding
Stephan Bark, Waqas Ahmed Malik, Maryna Prus, Hans-Peter Piepho, Volker Schmid

TL;DR
This paper introduces a Bayesian framework for analyzing multi-environment trial data in plant breeding, leveraging historical data to improve variance component estimation and uncertainty quantification.
Contribution
It proposes a Bayesian linear mixed model with conjugate priors that incorporate historical data, enhancing variance estimation in MET analysis.
Findings
Bayesian approach yields more realistic variance component estimates.
Incorporating historical data improves stability of variance estimates.
Application demonstrates optimized trial allocations using Bayesian posterior samples.
Abstract
In variety testing, multi-environment trials (MET) are essential for evaluating the genotypic performance of crop plants. A persistent challenge in the statistical analysis of MET data is the estimation of variance components, which are often still inaccurately estimated or shrunk to exactly zero when using residual (restricted) maximum likelihood (REML) approaches. At the same time, institutions conducting MET typically possess extensive historical data that can, in principle, be leveraged to improve variance component estimation. However, these data are rarely incorporated sufficiently. The purpose of this paper is to address this gap by proposing a Bayesian framework that systematically integrates historical information to stabilize variance component estimation and better quantify uncertainty. Our Bayesian linear mixed model (BLMM) reformulation uses priors and Markov chain Monte…
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