Open Access
Implementing within‐cross genomic prediction to reduce oat breeding costs
Author(s) -
Mellers Greg,
Mackay Ian,
Cowan Sandy,
Griffiths Irene,
MartinezMartin Pilar,
Poland Jesse A.,
Bekele Wubishet,
Tinker Nicholas A.,
Bentley Alison R.,
Howarth Catherine J.
Publication year - 2020
Publication title -
the plant genome
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.403
H-Index - 41
ISSN - 1940-3372
DOI - 10.1002/tpg2.20004
Subject(s) - genotyping , biology , genomic selection , population , genotype , genetics , computational biology , microbiology and biotechnology , gene , single nucleotide polymorphism , demography , sociology
Abstract A barrier to the adoption of genomic prediction in small breeding programs is the initial cost of genotyping material. Although decreasing, marker costs are usually higher than field trial costs. In this study we demonstrate the utility of stratifying a narrow‐base biparental oat population genotyped with a modest number of markers to employ genomic prediction at early and later generations. We also show that early generation genotyping data can reduce the number of lines for later phenotyping based on selections of siblings to progress. Using sets of small families selected at an early generation could enable the use of genomic prediction for adaptation to multiple target environments at an early stage in the breeding program. In addition, we demonstrate that mixed marker data can be effectively integrated to combine cheap dominant marker data (including legacy data) with more expensive but higher density codominant marker data in order to make within generation and between lineage predictions based on genotypic information. Taken together, our results indicate that small programs can test and initiate genomic predictions using sets of stratified, narrow‐base populations and incorporating low density legacy genotyping data. This can then be scaled to include higher density markers and a broadened population base.