Identification of putative regulatory regions and transcription factors associated with intramuscular fat content traits.

Background: Integration of high throughput DNA genotyping and RNA-sequencing data allows for the identification of genomic regions that control gene expression, known as expression quantitative trait loci (eQTL), on a whole genome scale. Intramuscular fat (IMF) content and carcass composition play important roles in metabolic and physiological processes in mammals because they influence insulin sensitivity and consequently prevalence of metabolic diseases such as obesity and type 2 diabetes. However, limited information is available on the genetic variants and mechanisms associated with IMF deposition in mammals. Thus, our hypothesis was that eQTL analyses could identify putative regulatory regions and transcription factors (TFs) associated with intramuscular fat (IMF) content traits. Results: We performed an integrative eQTL study in skeletal muscle to identify putative regulatory regions and factors associated with intramuscular fat content traits. Data obtained from skeletal muscle samples of 192 animals was used for association analysis between 461,466 SNPs and the transcription level of 11,808 genes. This yielded 1268 cis- and 10,334 trans-eQTLs, among which we identified nine hotspot regions that each affected the expression of > 119 genes. These putative regulatory regions overlapped with previously identified QTLs for IMF content. Three of the hotspots respectively harbored the transcription factors USF1, EGR4 and RUNX1T1, which are known to play important roles in lipid metabolism. From co-expression network analysis, we further identified modules significantly correlated with IMF content and associated with relevant processes such as fatty acid metabolism, carbohydrate metabolism and lipid metabolism. Conclusion: This study provides novel insights into the link between genotype and IMF content as evident from the expression level. It thereby identifies genomic regions of particular importance and associated regulatory factors. These new findings provide new knowledge about the biological processes associated with genetic variants and mechanisms associated with IMF deposition in mammals.

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Main Authors: CESAR, A. S. M., REGITANO, L. C. de A., REECY, J. M., POLETI, M. D., OLIVEIRA, P. S. N., OLIVEIRA, G. B. de, MOREIRA, G. C. M., MUDADU, M. de A., TIZIOTO, P. L., KOLTES, J. E., Fritz-Waters, E., KRAMER, L., GARRICK, D., BEIKI, H., GEISTLINGER, L., MOURÃO, G. B., ZERLOTINI NETO, A., COUTINHO, L. L.
Other Authors: ALINE S. M. CESAR, USP, Iowa State University; LUCIANA CORREIA DE ALMEIDA REGITANO, CPPSE; JAMES M. REECY, Iowa State University; MIRELE D. POLETI, USP; PRISCILA S. N. OLIVEIRA, CPPSE; GABRIELLA B. DE OLIVEIRA, USP; GABRIEL C. M. MOREIRA, USP; MAURICIO DE ALVARENGA MUDADU, CNPTIA; POLYANA C. TIZIOTO, USP; JAMES EUGENE KOLTES, Iowa State University; Elyn Fritz-Waters, Iowa State University; LUKE KRAMER, Iowa State University; DORIAN GARRICK, Massey University; HAMID BEIKI, Iowa State University; LUDWIG GEISTLINGER, CPPSE; GERSON B. MOURÃO, USP; ADHEMAR ZERLOTINI NETO, CNPTIA; LUIZ L. COUTINHO, USP.
Format: Artigo de periódico biblioteca
Language:English
eng
Published: 2018-12-20
Subjects:Expressão gênica, EQTL, Ácidos graxos, Doenças metabólicas, Expression quantitative trait loci, Gene expression, Fatty acids, Mammals, Metabolic diseases,
Online Access:http://www.alice.cnptia.embrapa.br/alice/handle/doc/1102203
https://doi.org/10.1186/s12864-018-4871-y
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Summary:Background: Integration of high throughput DNA genotyping and RNA-sequencing data allows for the identification of genomic regions that control gene expression, known as expression quantitative trait loci (eQTL), on a whole genome scale. Intramuscular fat (IMF) content and carcass composition play important roles in metabolic and physiological processes in mammals because they influence insulin sensitivity and consequently prevalence of metabolic diseases such as obesity and type 2 diabetes. However, limited information is available on the genetic variants and mechanisms associated with IMF deposition in mammals. Thus, our hypothesis was that eQTL analyses could identify putative regulatory regions and transcription factors (TFs) associated with intramuscular fat (IMF) content traits. Results: We performed an integrative eQTL study in skeletal muscle to identify putative regulatory regions and factors associated with intramuscular fat content traits. Data obtained from skeletal muscle samples of 192 animals was used for association analysis between 461,466 SNPs and the transcription level of 11,808 genes. This yielded 1268 cis- and 10,334 trans-eQTLs, among which we identified nine hotspot regions that each affected the expression of > 119 genes. These putative regulatory regions overlapped with previously identified QTLs for IMF content. Three of the hotspots respectively harbored the transcription factors USF1, EGR4 and RUNX1T1, which are known to play important roles in lipid metabolism. From co-expression network analysis, we further identified modules significantly correlated with IMF content and associated with relevant processes such as fatty acid metabolism, carbohydrate metabolism and lipid metabolism. Conclusion: This study provides novel insights into the link between genotype and IMF content as evident from the expression level. It thereby identifies genomic regions of particular importance and associated regulatory factors. These new findings provide new knowledge about the biological processes associated with genetic variants and mechanisms associated with IMF deposition in mammals.