| Literature DB >> 25236445 |
Christina Lehermeier1, Nicole Krämer1, Eva Bauer1, Cyril Bauland2, Christian Camisan3, Laura Campo4, Pascal Flament3, Albrecht E Melchinger5, Monica Menz6, Nina Meyer6, Laurence Moreau2, Jesús Moreno-González4, Milena Ouzunova7, Hubert Pausch8, Nicolas Ranc6, Wolfgang Schipprack5, Manfred Schönleben1, Hildrun Walter1, Alain Charcosset2, Chris-Carolin Schön9.
Abstract
The efficiency of marker-assisted prediction of phenotypes has been studied intensively for different types of plant breeding populations. However, one remaining question is how to incorporate and counterbalance information from biparental and multiparental populations into model training for genome-wide prediction. To address this question, we evaluated testcross performance of 1652 doubled-haploid maize (Zea mays L.) lines that were genotyped with 56,110 single nucleotide polymorphism markers and phenotyped for five agronomic traits in four to six European environments. The lines are arranged in two diverse half-sib panels representing two major European heterotic germplasm pools. The data set contains 10 related biparental dent families and 11 related biparental flint families generated from crosses of maize lines important for European maize breeding. With this new data set we analyzed genome-based best linear unbiased prediction in different validation schemes and compositions of estimation and test sets. Further, we theoretically and empirically investigated marker linkage phases across multiparental populations. In general, predictive abilities similar to or higher than those within biparental families could be achieved by combining several half-sib families in the estimation set. For the majority of families, 375 half-sib lines in the estimation set were sufficient to reach the same predictive performance of biomass yield as an estimation set of 50 full-sib lines. In contrast, prediction across heterotic pools was not possible for most cases. Our findings are important for experimental design in genome-based prediction as they provide guidelines for the genetic structure and required sample size of data sets used for model training.Entities:
Keywords: MPP; Multiparent Advanced Generation Inter-Cross (MAGIC); Multiparental populations; complex traits; genome-based prediction; genomic selection; high-density genotyping; linkage phases; maize breeding; mixed models
Mesh:
Year: 2014 PMID: 25236445 PMCID: PMC4174941 DOI: 10.1534/genetics.114.161943
Source DB: PubMed Journal: Genetics ISSN: 0016-6731 Impact factor: 4.562