| Literature DB >> 33985436 |
O Gervais1, A Barria1, A Papadopoulou1, R L Gratacap1, B Hillestad2, A E Tinch3, S A M Martin4, D Robledo5, R D Houston6.
Abstract
BACKGROUND: Infectious Salmonid Anaemia Virus (ISAV) causes a notifiable disease that poses a large threat for Atlantic salmon (Salmo salar) aquaculture worldwide. There is no fully effective treatment or vaccine, and therefore selective breeding to increase resistance to ISAV is a promising avenue for disease prevention. Genomic selection and potentially genome editing can be applied to enhance host resistance, and these approaches benefit from improved knowledge of the genetic and functional basis of the target trait. The aim of this study was to characterise the genetic architecture of resistance to ISAV in a commercial Atlantic salmon population and study its underlying functional genomic basis using RNA Sequencing.Entities:
Keywords: Aquaculture; Disease resistance; Fish; GWAS; Heritability; RNA-Seq; Salmo salar; TRIM25
Year: 2021 PMID: 33985436 PMCID: PMC8117317 DOI: 10.1186/s12864-021-07671-6
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Patterns of mortality observed during the ISAV challenge. a Percentage of survival for each full-sibling family at the end of the challenge, and b) percentage of surviving fish in the population throughout the duration of the challenge
Fig. 2Weighted single-step genome-wide association analyses for resistance to ISAV in the challenged Atlantic salmon population. a Shows the p-value for each SNP in a single SNP GWAS, and the red dotted horizontal line represents the significance threshold (p-value < 0.05 after Bonferroni correction); b shows the percentage of additive variation explained by windows of 20 consecutive SNPs. 17 SNPs are placed in scaffolds not assigned to chromosomes (ICSASG_v2; Lien et al. 2016) and are not shown. These unassigned SNPs explained less than 0.01% of the genetic variance and were not significantly associated with resistance to ISA
Top 10 SNPs associated with resistance to ISAV according to p-value and percentage of genetic variation explained (p-value < 0.05)
| Chr. | Position | Pval | Gen.Var. (%) | Chr. | Position | Pval | Gen.Var. (%) |
|---|---|---|---|---|---|---|---|
| 16 | 31,177,052 | 4.77E-08 | 0.01 | 18 | 5,920,835 | 1.52E-04 | 4.80 |
| 13 | 16,490,837 | 2.06E-07 | 3.13 | 2 | 45,107,000 | 9.75E-03 | 4.13 |
| 13 | 16,491,495 | 1.50E-06 | 1.47 | 18 | 5,928,874 | 1.23E-05 | 3.60 |
| 13 | 16,449,439 | 9.14E-06 | 2.75 | 13 | 16,490,837 | 2.06E-07 | 3.13 |
| 18 | 5,928,874 | 1.23E-05 | 3.60 | 13 | 16,474,523 | 1.08E-03 | 3.09 |
| 13 | 18,222,026 | 1.49E-05 | 1.23 | 9 | 63,708,663 | 5.62E-04 | 2.84 |
| 13 | 18,189,947 | 1.28E-04 | 1.97 | 9 | 63,494,740 | 3.04E-02 | 2.82 |
| 18 | 5,920,835 | 1.52E-04 | 4.80 | 9 | 63,493,152 | 9.60E-03 | 2.82 |
| 13 | 18,220,651 | 2.34E-04 | 1.25 | 9 | 63,275,439 | 8.06E-03 | 2.80 |
| 9 | 63,755,526 | 4.62E-04 | 2.55 | 13 | 164,49,439 | 9.14E-06 | 2.75 |
Fig. 3Principal Components Analysis showing the clustering of the heart RNA-Seq data
Fig. 4Differential expression of transcripts between ISAV-infected and control fish. a Venn diagram depicting the number of common and unique genes showing differential expression at 7 and 14 days compared to control. b Volcano plot showing the differential expression and differentially expressed interferon genes in control vs 7 dpi, and c controls vs 14 dpi. Each point in the plots represents a gene, with its log2 fold change in the x-axis and its –log10 p-value in the y-axis. Genes are classified in 4 categories depending on their FC and FDR corrected p-value: i) grey = p-value > 0.05; ii) purple = p-value < 0.05 and log2 fold change < |1.5|; iii) pink = p-value < 0.05 and log2 fold change > |1.5|
Selected KEGG pathways identified as enriched among differentially expressed genes
| Carbon metabolism | 83 | 6.01 | 10−16 | Complement and coagulation cascades | 23 | 2.73 | 0.002 |
| Aminoacyl-tRNA biosynthesis | 39 | 2.98 | 10−13 | FoxO signalling pathway | 36 | 1.90 | 0.010 |
| Citrate cycle (TCA cycle) | 38 | 2.27 | 10−11 | HTLV-I infection | 50 | 1.67 | 0.012 |
| Carbon metabolism | 75 | 9.31 | 10−30 | Complement and coagulation cascades | 57 | 12.76 | 10− 36 |
| Glycolysis / gluconeogenesis | 31 | 4.50 | 10−11 | 24 | 5.31 | 10−15 | |
| Biosynthesis of amino acids | 35 | 6.99 | 10−10 | Systemic lupus erythematosus | 17 | 7.17 | 10−5 |
KEGG KEGG pathway, N Number of genes differentially expressed assigned to the corresponding KEGG pathway, FE Fold enrichment, p False discovery rate corrected p-value.
Fig. 5Heatmap showing the patterns of expression of genes differentially expressed between resistant and susceptible fish in each sample at all of the three timepoints
Fig. 6Genetic association and differential expression results in the genomic region with the lowest p-value (Ssa13) and the one explaining the highest percentage of genetic variation (Ssa18). The SNPs explaining at least 1% of the genetic variance in each region are shown as red dots, with the shading representing the percentage of genetic variance explained (darker points explaining more variance); the SNPs are placed on the y-axis according to their GWAS –log 10 p-values (association with resistance to ISAV). The log2 fold change of the genes showing differential expression versus controls at 7 dpi (light blue) or 14 dpi (dark blue) are shown as bars, with the scale on the left y-axis