| Literature DB >> 36199148 |
Marina Martínez-Álvaro1, Jennifer Mattock2, Marc Auffret3, Ziqing Weng4, Carol-Anne Duthie5, Richard J Dewhurst5, Matthew A Cleveland4, Mick Watson2, Rainer Roehe5.
Abstract
BACKGROUND: Healthier ruminant products can be achieved by adequate manipulation of the rumen microbiota to increase the flux of beneficial fatty acids reaching host tissues. Genomic selection to modify the microbiome function provides a permanent and accumulative solution, which may have also favourable consequences in other traits of interest (e.g. methane emissions). Possibly due to a lack of data, this strategy has never been explored.Entities:
Keywords: Beef; Conjugated linoleic acid; Genomic selection; Methane emissions; Microbial genes; Microbiome-driven breeding; Rumen microbiome; Very long-chain n-3 fatty acids
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Year: 2022 PMID: 36199148 PMCID: PMC9533493 DOI: 10.1186/s40168-022-01352-6
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 16.837
Fig. 1Host-genomically influenced functional core microbiome (HGFC) in the rumen of cattle identified as additive log-ratio transformed microbial gene abundances (alr-MGs) with ≥ 70% occupancy across animals and highly probable host genomic effects. A Number of alr-MGs and summed cumulative relative abundance of alr-MGs numerators comprehending the HGFC in our population. B Violin plots represent the distribution of heritability estimates for the 1002 HGFC alr-MGs, classified by COG functional modules of the numerators, represented by different colors. Full COG names are described in Table S11
Fig. 2Microbial genomes of genera from the Proteobacteria phylum highly enriched in microbial genes genomically correlated with N3 and CLA indices. The number of microbial genes present in each microbial genus ranges from 70 (Desulfovibrio) to 96 (Vibrio) (see Table S4). Different colours represent different COG functional modules. Full COG names are described in Table S11
Fig. 3Study of 110 additive log-ratio transformed microbial gene abundances (alr-MGs) host-genomically influenced and correlated with N3 and CLA indices in the same direction. A Genomic correlations (RG) between alr-MGs and N3 and CLA indices in beef, classified by COG functional modules of the alr-MG numerators. Host genomic correlation estimates, and the names of the microbial genes are provided in Table S3. Co-abundance network analysis of B corrected phenotypic values or C estimated genomic breeding values for microbial gene abundances. Different colours indicate different clusters: 1 (green), 2 (orange) and 3 (blue). Edges correspond to the absolute Pearson correlation value between alr-MGs > l0.30l, and the thickness of the edges increases with the correlation size. The nodes represent alr-MGs and their size corresponds to the node degree (number of incident edges per node). D Thirty-one out of the 110 alr-MGs selected for breeding purposes classified along clusters and functions. Colours represent their position in the genomic co-abundance network analysis.
Fig. 4Responses to selection in A N3 and CLA indices and B methane emissions (CH4, g/kg of dry matter intake) using the 31 additive log-ratio transformed microbial gene abundances (alr-MGs) as selection information (i.e., microbiome-driven breeding strategy). Responses to selection in CLA, N3 indices and CH4 emissions are estimated by selecting animals for their aggregate estimated breeding value for CLA and N3 (assuming equal economical weights) predicted using the 31 alr-MGs. Response is expressed in units of phenotypic standard deviations of the trait (SD)
Fig. 5Host genomic correlations (Rg) between the 31 additive log-ratio transformed microbial gene abundances (alr-MGs) and CH4 (rgCH4), N3 (rgN3) and CLA (rgCLA) indices. The vast majority are favourable across traits, which indicate that an increase of CLA and N3 indices by genomic selection of the microbial gene abundances reduces CH4 emissions. Bars represent means and highest posterior density interval at 95% probability. For full names of alr-MGs, see Table S8