参考基因
概念
生物
SDHA
基因表达
男科
基因
实时聚合酶链反应
遗传学
胎儿
怀孕
医学
作者
Lei Cheng,Jie Yu,Xiuzhong Hu,Min Xiang,Yu Xia,Bifei Tao,Xiaoyong Du,Dingfa Wang,Shuhong Zhao,Hongbo Chen
摘要
Abstract The relationship between the conceptus and the maternal uterine environment is crucial for the successful establishment and maintenance of pregnancy in cattle. Gene expression analysis of the conceptus and maternal reproductive tissues is a favourable method to assess the embryonic maternal interaction. The reliability of the commonly used method reverse transcription‐quantitative polymerase chain reaction (RT‐qPCR) depends on proper normalization to stable reference genes (RGs). The objective of this study was to determine the expression stability of 10 potential RGs in maternal reproductive tissues and foetal tissues, and to analyse the effect of RG selection on the calculation of the relative expression of target genes. The expression stability of 10 potential RGs was analysed in eight different tissues from three pregnant dairy cows. Three programs—GeNorm, NormFinder and Bestkeeper—were used to identify the best RGs. According to all three programs, the most stable RG was CNOT11 , whereas the least stable RGs were GAPDH and HPRT1 . GeNorm analysis showed that a combination of five RGs ( SDHA , PPIA , CNOT11 , RPS9 and RPL19 ) was necessary for appropriate data normalization. However, NormFinder analysis indicated that the combination of CNOT11 and PPIA was the most suitable. When target genes were normalized to these RGs, the relative expression of the Radical S ‐adenosyl methionine domain containing 2 gene was not affected by the choice of RGs, whereas a large difference was observed in the expression profile of the Nuclear erythroid2‐related factor 2 gene between the most stable and least stable RGs. The results indicate that careful selection of RGs is crucial under different conditions, especially for target genes with relatively small fold changes. Furthermore, the results provide useful information for the selection of RGs for evaluating genes affecting bovine reproduction.
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