Mu Tong, Hu Honghong, Ma Yanfen, Wen Huiyu, Yang Chaoyun, Feng Xiaofang, Wen Wan, Zhang Juan, Gu Yaling
School of Agriculture, Ningxia University, Yinchuan, 750021, China.
Key Laboratory of Ruminant Molecular and Cellular Breeding, Ningxia Hui Autonomous Region, Ningxia University, Yinchuan, 750021, China.
Sci Rep. 2022 Apr 27;12(1):6836. doi: 10.1038/s41598-022-10435-1.
Milk fat is the most important and energy-rich substance in milk, and its content and composition are important reference elements in the evaluation of milk quality. However, the current identification of valuable candidate genes affecting milk fat is limited. IlluminaPE150 was used to sequence bovine mammary epithelial cells (BMECs) with high and low milk fat rates (MFP), the weighted gene co-expression network (WGCNA) was used to analyze mRNA expression profile data in this study. As a result, a total of 10,310 genes were used to construct WGCNA, and the genes were classified into 18 modules. Among them, violet (r = 0.74), yellow (r = 0.75) and darkolivegreen (r = - 0.79) modules were significantly associated with MFP, and 39, 181, 75 hub genes were identified, respectively. Combining enrichment analysis and differential genes (DEs), we screened five key candidate DEs related to lipid metabolism, namely PI4K2A, SLC16A1, ATP8A2, VEGFD and ID1, respectively. Relative to the small intestine, liver, kidney, heart, ovary and uterus, the gene expression of PI4K2A is the highest in mammary gland, and is significantly enriched in GO terms and pathways related to milk fat metabolism, such as monocarboxylic acid transport, phospholipid transport, phosphatidylinositol signaling system, inositol phosphate metabolism and MAPK signaling pathway. This study uses WGCNA to form an overall view of MFP, providing a theoretical basis for identifying potential pathways and hub genes that may be involved in milk fat synthesis.
乳脂肪是牛奶中最重要且富含能量的物质,其含量和组成是评估牛奶质量的重要参考因素。然而,目前对影响乳脂肪的有价值候选基因的鉴定有限。本研究使用IlluminaPE150对乳脂肪率高低不同的牛乳腺上皮细胞(BMECs)进行测序,并利用加权基因共表达网络(WGCNA)分析mRNA表达谱数据。结果,共使用10310个基因构建WGCNA,这些基因被分为18个模块。其中,紫色(r = 0.74)、黄色(r = 0.75)和深橄榄绿(r = -0.79)模块与乳脂肪率显著相关,分别鉴定出39、181、75个枢纽基因。结合富集分析和差异基因(DEs),我们筛选出5个与脂质代谢相关的关键候选DEs,分别为PI4K2A、SLC16A1、ATP8A2、VEGFD和ID1。相对于小肠、肝脏、肾脏、心脏、卵巢和子宫,PI4K2A在乳腺中的基因表达最高,且在与乳脂肪代谢相关的GO术语和通路中显著富集,如单羧酸转运、磷脂转运、磷脂酰肌醇信号系统、肌醇磷酸代谢和MAPK信号通路。本研究利用WGCNA对乳脂肪率形成了整体认识,为鉴定可能参与乳脂肪合成的潜在途径和枢纽基因提供了理论依据。