Abstract

Genomic selection, enabled by whole genome prediction (WGP) methods, is revolutionizing plant breeding. Existing WGP methods have been shown to deliver accurate predictions in the most common settings, such as prediction of across environment performance for traits with additive gene effects. However, prediction of traits with non-additive gene effects and prediction of genotype by environment interaction (G×E), continues to be challenging. Previous attempts to increase prediction accuracy for these particularly difficult tasks employed prediction methods that are purely statistical in nature. Augmenting the statistical methods with biological knowledge has been largely overlooked thus far. Crop growth models (CGMs) attempt to represent the impact of functional relationships between plant physiology and the environment in the formation of yield and similar output traits of interest. Thus, they can explain the impact of G×E and certain types of non-additive gene effects on the expressed phenotype. Approximate Bayesian computation (ABC), a novel and powerful computational procedure, allows the incorporation of CGMs directly into the estimation of whole genome marker effects in WGP. Here we provide a proof of concept study for this novel approach and demonstrate its use with synthetic data sets. We show that this novel approach can be considerably more accurate than the benchmark WGP method GBLUP in predicting performance in environments represented in the estimation set as well as in previously unobserved environments for traits determined by non-additive gene effects. We conclude that this proof of concept demonstrates that using ABC for incorporating biological knowledge in the form of CGMs into WGP is a very promising and novel approach to improving prediction accuracy for some of the most challenging scenarios in plant breeding and applied genetics.

Highlights

  • Genomic selection [1], enabled by whole genome prediction (WGP) methods, is revolutionizing plant breeding [2]

  • Integrating Crop Growth Models with Whole Genome Prediction employment responsibilities at DuPont Pioneer include developing systems and methods disclosed in the manuscript

  • This superiority of crop growth models (CGMs)-WGP over GBLUP can be explained by the presence of nonadditive gene effects which cannot be captured fully by the latter

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Summary

Introduction

Genomic selection [1], enabled by whole genome prediction (WGP) methods, is revolutionizing plant breeding [2]. Integrating Crop Growth Models with Whole Genome Prediction employment responsibilities at DuPont Pioneer include developing systems and methods disclosed in the manuscript. The authors declare they are unaware of any competing interests. Focused on: developing improved and specialized statistical models [3–6], increasing the marker density used [7–9], increasing the size and defining optimal designs of estimation sets [10–13] and better understanding the genetic determinants driving prediction accuracy [14, 15]. In-silico phenotypic prediction, enabled by dynamic crop growth models (CGMs), dates back to the late 1960’s [16] and it has constantly evolved through inclusion of scientific advances made in plant physiology, soil science and micrometeorology [16, 17]. CGMs used in plant breeding are structured around concepts of resource capture, utilization efficiency and allocation among plant organs [18–21] and are used to: characterize environments [22, 23], predict consequences of trait variation on yield within a genotype × environment × management context [24], evaluate breeding strategies [25–27], and assess hybrid performance [2]

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