Identification of genomic regions and candidate genes for chicken meat ultimate pH by combined detection of selection signatures and QTL

被引:16
|
作者
Le Bihan-Duval, Elisabeth [1 ]
Hennequet-Antier, Christelle [1 ]
Berri, Cecile [1 ]
Beauclercq, Stephane A. [1 ]
Bourin, Marie Christine [2 ]
Boulay, Maryse [3 ]
Demeure, Olivier [4 ,5 ]
Boitard, Simon [6 ]
机构
[1] Univ Tours, BOA, INRA, F-37380 Nouzilly, France
[2] Ctr INRA Val de Loire, Inst Tech Aviculture ITAVI, F-37380 Nouzilly, France
[3] Ctr INRA Val de Loire, Unite Recherches Avicoles, Syndicat Selectionneurs Avicoles & Aquacoles Fran, F-37380 Nouzilly, France
[4] INRA, Agrocampus Ouest, PEGASE, F-35590 St Gilles, France
[5] Grp Grimaud, F-49450 La Corbiere, Roussay, France
[6] Univ Toulouse, INRA, ENVT, GenPhySE, F-31320 Castanet Tolosan, France
来源
BMC GENOMICS | 2018年 / 19卷
关键词
Chicken; Meat ultimate pH; Muscle glycogen; QTL; Selection signatures; PECTORALIS MAJOR MUSCLE; BROILER-CHICKENS; BODY-COMPOSITION; DIVERGENT SELECTION; GLYCOGEN-METABOLISM; QUALITY TRAITS; BREAST MEAT; CARCASS; PARAMETERS; GROWTH;
D O I
10.1186/s12864-018-4690-1
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Background: The understanding of the biological determinism of meat ultimate pH, which is strongly related to muscle glycogen content, is a key point for the control of muscle integrity and meat quality in poultry. In the present study, we took advantage of a unique model of two broiler lines divergently selected for the ultimate pH of the pectoralis major muscle (PM-pHu) in order to decipher the genetic control of this trait. Two complementary approaches were used: detection of selection signatures generated during the first five generations and genome-wide association study for PM-pHu and Sartorius muscle pHu (SART-pHu) at the sixth generation of selection. Results: Sixty-three genomic regions showed significant signatures of positive selection. Out of the 10 most significant regions (detected by HapFLK or FLK method with a p-value below 1e-6), 4 were detected as soon as the first generation (G1) and were recovered at each of the four following ones (G2-G5). Another four corresponded to a later onset of selection as they were detected only at G5. In total, 33 SNPs, located in 24 QTL regions, were significantly associated with PM-pHu. For SART-pHu, we detected 18 SNPs located in 10 different regions. These results confirmed a polygenic determinism for these traits and highlighted two major QTL: one for PM-pHu on GGA1 (with a Bayes Factor (BF) of 300) and one for SART-pHu on GGA4 (with a BF of 257). Although selection signatures were enriched in QTL for PM-pHu, several QTL with strong effect haven't yet responded to selection, suggesting that the divergence between lines might be further increased. Conclusions: A few regions of major interest with significant selection signatures and/or strong association with PM-pHu or SART-pHu were evidenced for the first time in chicken. Their gene content suggests several candidates associated with diseases of glycogen storage in humans. The impact of these candidate genes on meat quality and muscle integrity should be further investigated in chicken.
引用
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页数:14
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