| Literature DB >> 29507735 |
Francois Laurens1, Maria José Aranzana2,3, Pere Arus2,3, Daniele Bassi4, Marco Bink5,6, Joan Bonany7, Andrea Caprera8, Luca Corelli-Grappadelli9, Evelyne Costes10, Charles-Eric Durel11, Jehan-Baptiste Mauroux12, Hélène Muranty1, Nelson Nazzicari8, Thierry Pascal11, Andrea Patocchi11, Andreas Peil13, Bénédicte Quilot-Turion12, Laura Rossini4,8, Alessandra Stella8, Michela Troggio14, Riccardo Velasco14,15, Eric van de Weg16.
Abstract
Despite the availability of whole genome sequences of apple and peach, there has been a considerable gap between genomics and breeding. To bridge the gap, the European Union funded the FruitBreedomics project (March 2011 to August 2015) involving 28 research institutes and private companies. Three complementary approaches were pursued: (i) tool and software development, (ii) deciphering genetic control of main horticultural traits taking into account allelic diversity and (iii) developing plant materials, tools and methodologies for breeders. Decisive breakthroughs were made including the making available of ready-to-go DNA diagnostic tests for Marker Assisted Breeding, development of new, dense SNP arrays in apple and peach, new phenotypic methods for some complex traits, software for gene/QTL discovery on breeding germplasm via Pedigree Based Analysis (PBA). This resulted in the discovery of highly predictive molecular markers for traits of horticultural interest via PBA and via Genome Wide Association Studies (GWAS) on several European genebank collections. FruitBreedomics also developed pre-breeding plant materials in which multiple sources of resistance were pyramided and software that can support breeders in their selection activities. Through FruitBreedomics, significant progresses were made in the field of apple and peach breeding, genetics, genomics and bioinformatics of which advantage will be made by breeders, germplasm curators and scientists. A major part of the data collected during the project has been stored in the FruitBreedomics database and has been made available to the public. This review covers the scientific discoveries made in this major endeavour, and perspective in the apple and peach breeding and genomics in Europe and beyond.Entities:
Year: 2018 PMID: 29507735 PMCID: PMC5830435 DOI: 10.1038/s41438-018-0016-3
Source DB: PubMed Journal: Hortic Res ISSN: 2052-7276 Impact factor: 6.793
Fig. 1Illustration of the six clusters obtained from a hierarchical ascendant classification (HAC) of an apple core collection based on morphological traits measured.
Information of the physiological traits and one characteristic genotype for each group are also presented (adapted from Lopez et al. 2015[12])
Fig. 2Genetic composition of the groups of apple cultivars clustered by country of origin for K = 3 groups (depicted in blue, green and red) inferred with Structure[58].
The pies represent the proportion of each country, with indication of the number of apple cultivars
Fig. 3Genome wide association results for the acid/subacid trait in peach
. a Manhattan plot. Chromosomes are marked with a different colour on the horizontal axis. The horizontal green line represents the significance threshold for the association. b Associated haplotypes constructed with the associated SNPs. The grey bar represents the position of the SNPs in a 1.8 Mb region. The bar chart represents the number of accessions with subacid and acid phenotype per haplotype
Fig. 4Within-training population distribution of genotypic BLUP (light green) used for building genome-wide prediction model in apple and within-application family distribution of phenotypic data (means over 2 years, beige) for two traits scored at harvest, Preharvest dropping (first column) and Percent Overcolour (third column)
. Relationship between genomic predictions and phenotypic values for the same traits (Preharvest dropping: second column; Percent Overcolour: fourth column). The 10% (best) individuals with the highest predicted GBV are represented by green points, the 10% (worst) individuals with the lowest predicted GBV by red points, the other individuals by blue points. Accuracies, i.e. correlations between genomic predictions and phenotypic values, are written in the title line, followed by the significance of the difference between the 10% best and worst individuals