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利用RNA测序技术比较滇南小耳猪、武进猪和长白猪背最长肌中差异表达基因

Comparison of differentially expressed genes in longissimus dorsi muscle of Diannan small ears, Wujin and landrace pigs using RNA-seq.

作者信息

Li Qiuyan, Hao Meilin, Zhu Junhong, Yi Lanlan, Cheng Wenjie, Xie Yuxiao, Zhao Sumei

机构信息

Faculty of Animal Science and Technology, Yunnan Agricultural University, Kunming, China.

College of Biology and Agriculture, Zunyi Normal University, Zunyi, China.

出版信息

Front Vet Sci. 2024 Jan 5;10:1296208. doi: 10.3389/fvets.2023.1296208. eCollection 2023.

Abstract

INTRODUCTION

Pig growth is an important economic trait that involves the co-regulation of multiple genes and related signaling pathways. High-throughput sequencing has become a powerful technology for establishing the transcriptome profiles and can be used to screen genome-wide differentially expressed genes (DEGs). In order to elucidate the molecular mechanism underlying muscle growth, this study adopted RNA sequencing (RNA-seq) to identify and compare DEGs at the genetic level in the longissimus dorsi muscle (LDM) between two indigenous Chinese pig breeds (Diannan small ears [DSE] pig and Wujin pig [WJ]) and one introduced pig breed (Landrace pig [LP]).

METHODS

Animals under study were from two Chinese indigenous pig breeds (DSE pig,  = 3; WJ pig,  = 3) and one introduced pig breed (LP,  = 3) were used for RNA sequencing (RNA-seq) to identify and compare the expression levels of DEGs in the LDM. Then, functional annotation, Gene Ontology (GO) enrichment analysis, Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis, and Protein-Protein Interaction (PPI) network analysis were performed on these DEGs. Then, functional annotation, Gene Ontology (GO) enrichment analysis, Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis, and Protein-Protein Interaction (PPI) network analysis were performed on these DEGs.

RESULTS

The results revealed that for the DSE, WJ, and LP libraries, more than 66, 65, and 71 million clean reads were generated by transcriptome sequencing, respectively. A total of 11,213 genes were identified in the LDM tissue of these pig breeds, of which 7,127 were co-expressed in the muscle tissue of the three samples. In total, 441 and 339 DEGs were identified between DSE vs. WJ and LP vs. DSE in the study, with 254, 193 up-regulated genes and 187, 193 down-regulated genes in DSE compared to WJ and LP. GO analysis and KEGG signaling pathway analysis showed that DEGs are significantly related to contractile fiber, sarcolemma, and dystrophin-associated glycoprotein complex, myofibril, sarcolemma, and myosin II complex, Glycolysis/Gluconeogenesis, Propanoate metabolism, and Pyruvate metabolism, etc. In combination with functional annotation of DEGs, key genes such as and were identified by PPI network analysis.

DISCUSSION

In conclusion, the present study revealed key genes including , and the unannotated new gene and related signaling pathways that influence the difference in muscle growth and could provide a theoretical basis for improving pig muscle growth traits in the future.

摘要

引言

猪的生长是一个重要的经济性状,涉及多个基因和相关信号通路的共同调控。高通量测序已成为建立转录组图谱的强大技术,可用于筛选全基因组差异表达基因(DEG)。为了阐明肌肉生长的分子机制,本研究采用RNA测序(RNA-seq)技术,在两个中国本土猪品种(滇南小耳猪 [DSE] 和武进猪 [WJ])与一个引进猪品种(长白猪 [LP])的背最长肌(LDM)中,从基因水平鉴定并比较差异表达基因。

方法

选取两个中国本土猪品种(DSE猪,n = 3;WJ猪,n = 3)和一个引进猪品种(LP,n = 3)用于RNA测序(RNA-seq),以鉴定并比较LDM中差异表达基因的表达水平。然后,对这些差异表达基因进行功能注释、基因本体(GO)富集分析、京都基因与基因组百科全书(KEGG)通路富集分析以及蛋白质-蛋白质相互作用(PPI)网络分析。

结果

结果显示,对于DSE、WJ和LP文库,转录组测序分别产生了超过6600万、6500万和7100万条clean reads。在这些猪品种的LDM组织中共鉴定出11213个基因,其中7127个在三个样本的肌肉组织中共同表达。在本研究中,DSE与WJ以及LP与DSE之间分别鉴定出441个和339个差异表达基因,与WJ和LP相比,DSE中有254个、193个上调基因以及187个、193个下调基因。GO分析和KEGG信号通路分析表明,差异表达基因与收缩纤维、肌膜和抗肌萎缩蛋白相关糖蛋白复合物、肌原纤维、肌膜和肌球蛋白II复合物、糖酵解/糖异生、丙酸代谢和丙酮酸代谢等显著相关。结合差异表达基因的功能注释,通过PPI网络分析鉴定出关键基因如 和 。

讨论

总之,本研究揭示了包括 、 以及未注释的新基因 和 等关键基因,以及影响肌肉生长差异的相关信号通路,可为未来改善猪肌肉生长性状提供理论依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3953/10796741/3a66cb83ec69/fvets-10-1296208-g001.jpg

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