Searching new signals for production traits through gene‐based association analysis in three Italian cattle breeds

Genome‐wide association studies (GWAS) have been widely applied to disentangle the genetic basis of complex traits. In cattle breeds, classical GWAS approaches with medium‐density marker panels are far from conclusive, especially for complex traits. This is due to the intrinsic limitations of GWAS a...

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Published inAnimal genetics Vol. 46; no. 4; pp. 361 - 370
Main Authors Capomaccio, Stefano, Milanesi, Marco, Bomba, Lorenzo, Cappelli, Katia, Nicolazzi, Ezequiel L, Williams, John L, Ajmone‐Marsan, Paolo, Stefanon, Bruno
Format Journal Article
LanguageEnglish
Published England Blackwell Science 01.08.2015
Blackwell Publishing Ltd
Wiley Subscription Services, Inc
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Summary:Genome‐wide association studies (GWAS) have been widely applied to disentangle the genetic basis of complex traits. In cattle breeds, classical GWAS approaches with medium‐density marker panels are far from conclusive, especially for complex traits. This is due to the intrinsic limitations of GWAS and the assumptions that are made to step from the association signals to the functional variations. Here, we applied a gene‐based strategy to prioritize genotype–phenotype associations found for milk production and quality traits with classical approaches in three Italian dairy cattle breeds with different sample sizes (Italian Brown n = 745; Italian Holstein n = 2058; Italian Simmental n = 477). Although classical regression on single markers revealed only a single genome‐wide significant genotype–phenotype association, for Italian Holstein, the gene‐based approach identified specific genes in each breed that are associated with milk physiology and mammary gland development. As no standard method has yet been established to step from variation to functional units (i.e., genes), the strategy proposed here may contribute to revealing new genes that play significant roles in complex traits, such as those investigated here, amplifying low association signals using a gene‐centric approach.
Bibliography:http://dx.doi.org/10.1111/age.12303
ark:/67375/WNG-0R880BJ6-6
Cariplo Foundation
istex:93295C3EA8240C540696E39919F2FDDF6A987000
Figure S1 Multidimensional scaling (MDS) plots for Italian Brown, Simmental and Holstein.Figure S2 Descriptive statistics for the Italian Brown, Italian Holstein and Italian Simmental.Figure S3 Manhattan plots and QQ-plots respectively for (a) fat percentage, (b) milk yield and (c) protein percentage in the Italian Brown.Figure S4 Manhattan plots and QQ-plots respectively for (a) fat percentage, (b) milk yield and (c) protein percentage in the Italian Holstein.Figure S5 Manhattan plots and QQ-plots respectively for (a) fat percentage, (b) milk yield and (c) protein percentage in the ItalianDGAT.Figure S6 Manhattan plots and QQ-plots respectively for (a) fat percentage, (b) milk yield and (c) protein percentage in the Simmental.Figure S7 Genome-wide linkage disequilibrium decay for the three breeds.Figure S8 Focus on the linkage disequilibrium (LD) of the DGAT1 region in all the datasets.Table S1 Number of subjects and SNPs after quality control (QC).Table S2 Full results of the SNPs that overcame the suggestive threshold.Table S3 Full results of the significant genes associated with the traits in all the datasets.Table S4 Gene-wise p-values of the discussed genes in all the analysis.Table S5 Genes from the gene-based association mapping into known QTLs.
MIPAAF
ArticleID:AGE12303
ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 23
ISSN:0268-9146
1365-2052
DOI:10.1111/age.12303