Integrated Analysis of Proteomic and Transcriptomic Data Highlights Late Fetal Muscle Maturation Process

被引:3
|
作者
Voillet, Valentin [1 ]
Cristobal, Magali San [1 ]
Pere, Marie-Christine [2 ]
Billon, Yvon [3 ]
Canario, Laurianne [1 ]
Liaubet, Laurence [1 ]
Lefaucheur, Louis [2 ]
机构
[1] Univ Toulouse, INRA, ENVT, GenPhyse, F-31326 Castanet Tolosan, France
[2] INRA, PEGASE, UMR1348, F-35590 Hermitage, France
[3] INRA, UE1372, GenESI, F-17700 Surgeres, France
关键词
MYOSIN HEAVY-CHAIN; RESIDUAL FEED-INTAKE; LARGE WHITE-PIGS; SKELETAL-MUSCLE; GENE-EXPRESSION; COACTIVATOR PGC-1-ALPHA; DIVERGENT SELECTION; PROTEIN EXPRESSION; NEONATAL SURVIVAL; QUANTIFICATION;
D O I
10.1074/mcp.M116.066357
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
In pigs, the perinatal period is the most critical time for survival. Piglet maturation, which occurs at the end of gestation, is an important determinant of early survival. Skeletal muscle plays a key role in adaptation to extrauterine life, e.g. motor function and thermoregulation. Progeny from two breeds with extreme neonatal mortality rates were analyzed at 90 and 110 days of gestation (dg). The Large White breed is a highly selected breed for lean growth and exhibits a high rate of neonatal mortality, whereas the Meishan breed is fatter and more robust and has a low neonatal mortality. Our aim was to identify molecular signatures underlying late fetal longissimus muscle development. First, integrated analysis was used to explore relationships between co-expression network models built from a proteomic data set (bi-dimensional electrophoresis) and biological phenotypes. Second, correlations with a transcriptomic data set (microarrays) were investigated to combine different layers of expression with a focus on transcriptional regulation. Muscle glycogen content and myosin heavy chain polymorphism were good descriptors of muscle maturity and were used for further data integration analysis. Using 89 identified unique proteins, network inference, correlation with biological phenotypes and functional enrichment revealed that mitochondrial oxidative metabolism was a key determinant of neonatal muscle maturity. Some proteins, including ATP5A1 and CKMT2, were important nodes in the network related to muscle metabolism. Transcriptomic data suggest that overexpression of mitochondrial PCK2 was involved in the greater glycogen content of Meishan fetuses at 110 dg. GPD1, an enzyme involved in the mitochondrial oxidation of cytosolic NADH, was overexpressed in Meishan. Thirty-one proteins exhibited a positive correlation between mRNA and protein levels in both extreme fetal genotypes, suggesting transcriptional regulation. Gene ontology enrichment and Ingenuity analyses identified PPARGC1A and ESR1 as possible transcriptional factors positively involved in late fetal muscle maturation.
引用
收藏
页码:672 / 693
页数:22
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