| Literature DB >> 29843597 |
Wenting Dai1, Quanjuan Wang1, Fengqi Zhao2, Jianxin Liu1, Hongyun Liu3.
Abstract
BACKGROUND: Bovine milk is an important nutrient source for humans. Forage plays a vital role in dairy husbandry via affecting milk quality and quantity. However, the differences in mammary metabolism of dairy cows fed different forages remain elucidated. In this study, we utilized transcriptomic RNA-seq and iTRAQ proteomic techniques to investigate and integrate the differences of molecular pathways and biological processes in the mammary tissues collected from 12 lactating cows fed corn stover (CS, low-quality, n = 6) and alfalfa hay (AH, high-quality, n = 6).Entities:
Keywords: Dairy cow; Forage source; Mammary gland; Milk protein production; Proteomics; Transcriptomics
Mesh:
Year: 2018 PMID: 29843597 PMCID: PMC5975684 DOI: 10.1186/s12864-018-4808-5
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1An overview of the transcriptomic and proteomic experiment. Schematic diagram of workflow of the RNA-seq transcriptomic and iTRAQ-based proteomic experiments. Six cows were fed either corn stover (CS) or alfalfa hay (AH) as forage for 14 weeks. RNA from two cows and protein samples from three cows within each group were pooled for transcriptomic (3 replicates/group) and proteomic (2 replicates/group) analyses. For transcriptomic assay, the pooled RNA was sequenced on the Illumina platform, and subsequently the reads were aligned and mapped to the Bos taurus genome. For the proteomic assay, the extracted proteins were digested with trypsin, and the peptides are labeled with different iTRAQ reagents, which contain reporter groups of different masses (114, 115, 116, 117), balance groups of different masses (191, 190, 189, 188), and a reactive group (R). The labeled peptides are then mixed equivalently and fractionated by strong cation exchange (SCX) chromatography. Fractions were separated by liquid chromatography (LC) and analyzed by two-step mass spectrometry (MS)
Fig. 2The venn diagram of the differentially expressed genes (DEGs) and proteins (DEPs) in the mammary gland of cows fed either corn stover (CS) or alfalfa hay (AH). The cut-off of differential expression of mRNA is set at 1.5-fold change and p < 0.05, whereas the cutoff of differential expression of protein is set at 1.2-fold and p < 0.05
Fig. 3Gene ontology (GO) categories assigned to the differentially expressed genes (DEGs, inner cycle) and proteins (DEPs, outer cycle) in the mammary gland of cows fed either corn stover (CS) or alfalfa hay (AH). The differentially expressed genes were classified into cellular component, biological process, and molecular function by WEGO (Web Gene Ontology Annotation Plot) according to the GO terms
Fig. 4Functional characterization of the increased or decreased transcripts in the mammary gland of cows fed alfalfa hay (AH) vs. corn stover (CS) by gene ontology analysis. DEG indicates differentially expressed genes. The x-axis shows the functional categories of the increased or decreased genes, the left y-axis shows the value of –Log (p-value) and the right y-axis shows the number of increased/decreased genes
Fig. 5Functional characterization of the increased or decreased proteins in the mammary gland of cows fed alfalfa hay (AH) vs. corn stover (CS) by gene ontology analysis. DEP indicates differentially expressed proteins. The x-axis shows the functional categories of increased or decreased proteins, the left y-axis shows the value of –Log (p-value) and the right y-axis shows the number of increased/decreased proteins
The KEGG pathway enrichment by up−/down-regulated genes in the mammary gland of cows fed corn stover (CS) vs. alfalfa hay (AH)
| KEGG ID | Pathway Name | No. of Increased Genes | ID of Increased Genes | Gene Symbol of Increased Genes | No. of Decreased Genes | ID of Decreased Genes | Gene Symbol of Decreased Genes | |
|---|---|---|---|---|---|---|---|---|
| ko04974 | Protein digestion and absorption | 0.0269 | 0 | 7 | XLOC_022008;XLOC_001311; XLOC_000568;XLOC_027248; XLOC_000569;XLOC_017584; | SLC38A2; SLC7A8; BT.23508; COL12A1; COL6A2; COL17A1; COL6A3 | ||
| ko04141 | Protein processing in endoplasmic reticulum | 0.0450 | 10 | XLOC_000859;XLOC_003872;XLOC_006584;XLOC_009297;XLOC_020319;XLOC_022100;XLOC_024455;XLOC_025681;XLOC_026233;XLOC_027001 | HSPH1;DNAJB1;DNAJA1;DDIT3;CRYAB;SAR1B;BT.59327;MAN1A2;SEC63;DNAJB11 | 0 | ||
| ko04120 | Ubiquitin mediated proteolysis | 0.0277 | 4 | XLOC_024865;XLOC_018298;XLOC_021649;XLOC_025981 | UBE2B;HERC4;UBE2H;BT.19212 | 1 | XLOC_025357 | KEAP1 |
| ko0970 | Aminoacyl-tRNA biosynthesis | 0.0312 | 1 | XLOC_025065 | RARS | |||
| ko03010 | Ribosome | 0.0201 | 1 | XLOC_028013 | RPS23 | |||
| ko03008 | Ribosome biogenesis in eukaryotes | 0.0219 | 2 | XLOC_001726; XLOC_010292 | FCF1;UTP6 | 3 | XLOC_025000;XLOC_023340;XLOC_026685 | TCOF1;RRP7A;NOL6 |
| ko03040 | Spliceosome | 0.0388 | 11 | XLOC_000309;XLOC_004289;XLOC_007964;XLOC_012182;XLOC_012566;XLOC_017604;XLOC_019531;XLOC_021421;XLOC_023325;XLOC_025841;XLOC_028252 | SNRPB2;TRA2B;SMNDC1;TRA2A;BCAS2;SF3B1;PHF5A;BT.59135;SLU7;BT.91058;BT.91058;PLRG1 | 1 | XLOC_012196 | SFRS4 |
| ko03050 | Proteasome | 0.0142 | 7 | XLOC_001624;XLOC_001843;XLOC_003577;XLOC_004136;XLOC_012473;XLOC_020934;XLOC_021072 | BT.22570;PSMD14;PSMA3;BT.56882;PSMA2;POMP;PSMC2 | |||
| ko04142 | Lysosome | 0.0394 | 0 | 5 | XLOC_001832;XLOC_006153;XLOC_010442;XLOC_012190;XLOC_013979 | BT.35140; LAPTM5; ARSB; CD68; CTSH | ||
| ko04150 | mTOR signaling pathway | 0.0300 | 1 | XLOC_018127 | DDIT4 | 1 | XLOC_013054; | RICTOR |
| ko04350 | TGF-beta signaling pathway | 0.0190 | 2 | XLOC_003540;XLOC_018178 | ID2;BT.48514 | 3 | XLOC_004021;XLOC_004591;XLOC_013257 | FST;ID1;TFDP1 |
| ko04115 | p53 signaling pathway | 0.0247 | 5 | XLOC_007111;XLOC_012771;XLOC_025054;XLOC_026769;XLOC_026996 | GADD45G;SESN1;BT.36413;SESN2;CCNG1 | 2 | XLOC_021046;XLOC_018555 | IGFBP3;BT.33239 |
| ko04310 | Wnt signaling pathway | 0.0458 | 1 | XLOC_007394 | CACYBP | 1 | XLOC_007966 | SFRP2 |
| ko03050 | Proteasome | 0.0142 | 7 | XLOC_001624;XLOC_001843;XLOC_003577;XLOC_004136;XLOC_012473;XLOC_020934;XLOC_021072 | BT.22570;PSMD14;PSMA3;BT.56882;PSMA2;POMP;PSMC2 |
The KEGG pathway enrichment by up−/down-regulated proteins in the mammary gland of cows fed corn stover (CS) vs. alfalfa hay (AH)
| KEGG ID | Pathway Name | No. of Increased Transcripts | ID of Increased Proteins | Gene Symbol of Increased Proteins | No. of Decreased Proteins | ID of Decreased Proteins | Gene Symbol of Decreased Proteins | |
|---|---|---|---|---|---|---|---|---|
| ko03040 | Spliceosome | 0.0232 | 4 | IPI00687479;IPI00715218; IPI00702381; IPI00687395 | SNRNP40;LSM3; SNRPB;PRPF8 | 6 | IPI00690232;IPI00699558;IPI00687560;IPI00687015;IPI00717302; IPI00688521 | MAGOHB;SNRPD3;PCBP1;SNRPD2;SF3B4;BUD31 |
| ko04141 | Protein processing in endoplasmic reticulum | 0.0370 | 7 | IPI00702891;IPI00699038; IPI00693007; IPI00699107;IPI00691963; IPI00696616;IPI00688461 | ERP29; TXNDC5; DNAJC3;DNAJB11; CALR; SSR2; DNAJB1 | 1 | IPI00692963 | SEC23 |
| ko04974 | Protein digestion and absorption | 0.0101 | 0 | 7 | IPI00707857;IPI00708244;IPI00711933;IPI00712524;IPI00731432;IPI00826022;IPI00905045 | COL4A2; COL3A1; COL5A2; COL1A1; COL1A2;COL11A1; | ||
| ko04142 | Lysosome | 0.0314 | 2 | IPI00711862; IPI00706203 | NPC2; HEXB | 4 | IPI00697314;IPI00699372;IPI00717554;IPI00716195 | CTSC; ATP6V0A1; NAGLU; ATP6V0D1 |
| ko03010 | Ribosome | 0.0069 | 0 | 6 | IPI00695732;IPI00699146;IPI00707431;IPI00713536;IPI00714445;IPI00715091 | RPS2; RPS16; RPS20; RPS19; RPS12; RPS27 | ||
| ko00260 | Glycine, serine and threonine metabolism | 0.0090 | 1 | IPI00698589 | PGAM1 | 3 | IPI00698059;IPI00707303;IPI00715285 | SARDH; DMGDH; MAOA |
| ko04150 | mTOR signaling pathway | 0.0350 | 1 | IPI00700182 | EIF4B | 2 | IPI00903663; IPI00732002 | IKBKB; MAPK3 |
| ko03008 | Ribosome biogenesis in eukaryotes | 0.0374 | 2 | IPI00705941;IPI00708018 | REXO2; RAN | 1 | IPI00852474 | NAT10 |
| ko00280 | Valine, leucine and isoleucine degradation | 0.0468 | 3 | IPI00711918;IPI00717256;IPI00968674 | DBT; ACAT1; HMGCS1 | |||
| ko00380 | Tryptophan metabolism | 0.0381 | 1 | IPI00711918 | ACAT1 | 1 | IPI00698059 | MAOA |
| ko00330 | Arginine and proline metabolism | 0.0370 | 0 | 2 | IPI00698059;IPI00838420 | P4HA2; MAOA | ||
| ko00970 | Aminoacyl-tRNA biosynthesis | 0.0236 | 0 | 2 | IPI00689365;IPI00703906 | TARS2; AARS2 | ||
| ko00360 | Phenylalanine metabolism | 0.0473 | 0 | 1 | IPI00698059 | MAOA | ||
| ko00340 | Histidine metabolism | 0.0461 | 0 | 1 | IPI00698059 | MAOA | ||
| ko00350 | Tyrosine metabolism | 0.0365 | 0 | 1 | IPI00698059 | MAOA | ||
| ko00270 | Cysteine and methionine metabolism | 0.0432 | 1 | IPI00694739 | APIP | |||
| ko00010 | Glycolysis / Gluconeogenesis | 0.0302 | 3 | IPI00696912; IPI00698589; IPI00712164 | ACSS1; PGAM1; GALM | 2 | IPI00687211;IPI00715799 | HK1; GAPDHS |
| ko00190 | Oxidative phosphorylation | 0.0287 | 0 | 5 | IPI00697768;IPI00699372;IPI00712252;IPI00716163;IPI00716195 | ATPsynGL;ATP6V0A1; ATP5H;NDUFC1; | ||
| ko00020 | Citrate cycle (TCA cycle) | 0.0399 | 2 | IPI00702781;IPI00708438 | IDH1; SUCLG1 | 1 | IPI00714468 | IDH2 |
| ko00640 | Propanoate metabolism | 0.0423 | 3 | IPI00696912;IPI00708438;IPI00711918 | ACSS1; ACAT1; SUCLG1 | |||
| ko00030 | Pentose phosphate pathway | 0.0352 | 2 | IPI00728589;IPI00904104 | TKT; RBKS | |||
| ko04146 | Peroxisome | 0.0169 | 4 | IPI00686601;IPI00702781;IPI00704382;IPI00714468 | SOD2; SCP2; IDH1; ECH1 | 1 | IPI00714468 | IDH2 |
| ko03320 | PPAR signaling pathway | 0.0263 | 4 | IPI00686601;IPI00699355;IPI00715548;IPI00839653 | SCP2; FABP4; APOA1; PPARD | |||
| ko04975 | Fat digestion and absorption | 0.0370 | 2 | IPI00695965;IPI00715548 | APOA4; APOA1 | 1 | IPI00710056 | APOB |
| ko04540 | Gap junction | 0.0352 | 0 | 2 | IPI00695917;IPI00732002 | MAPK3; GNAS | ||
| ko04210 | Apoptosis | 0.0261 | 1 | IPI00704835 | DFFA | 2 | IPI00709124; IPI00903663 | ENDOG; IKBKB |
| ko04151 | PI3K-Akt signaling pathway | 0.0301 | 1 | IPI00700182 | EIF4B | 9 | IPI00697595;IPI00707857;IPI00708244;IPI00712524;IPI00731432;IPI00732002;IPI00826022;IPI00903663;IPI00905045 | COL4A2; IKBKB; COL3A1; COL5A2; COL1A1; COL1A2; COL11A1; MAPK3; ITGA1 |
| ko04310 | Wnt signaling pathway | 0.0375 | 1 | IPI00708311 | CACYBP | 1 | IPI00699355 | PPARD |
| ko04350 | TGF-beta signaling pathway | 0.0272 | 0 | 1 | IPI00732002 | MAPK3 |
Fig. 6Real time PCR analysis of mRNA expression changes of genes involved in mammary metabolism of cows fed corn stover (CS) and alfalfa hay (AH). Relative mRNA expression levels were normalized by the levels of β-actin. Error bars represent the standard deviation. ** and * indicate that the difference in gene expression between CS and AH groups reached p < 0.01, and 0.01 < p < 0.05, respectively
Fig. 7Western blot analysis of expression of IDH2, SLC7A8, SCP2, and COL4A2 proteins in the mammary gland of cows fed corn stover (CS) and alfalfa hay (AH). β-Actin was used as a sample loading control. ** and * indicate p < 0.01 and 0.01 < p < 0.05, respectively. IDH2: Isocitrate dehydrogenase 2; SLC7A8: also referred as LAT2, L type amino acid transporter 2; SCP2: sterol carrier protein 2; COL4A2: collagen type IV alpha 2
Fig. 8An overview of possible biological changes that might contribute to low milk production in cows fed corn stover-based diet vs. cows fed alfalfa hay-based diet. The color coding for the individual genes is as follows: black letters and pink background represents the up-regulated genes, yellow letters and pink background represents increased proteins, black letters and green background represents the down-regulated genes, and blue letters and green background represents decreased proteins. The half blue/half black letters with green background represents genes that were both down-regulated at mRNA and protein levels. The half black/half yellow letters with pink background represent the genes that were up-regulated at both protein and gene levels. The full name of each protein is listed in Additional file 6: Table S9