Transcriptomic studies and assessment of Yersinia pestis reference genes in various conditions

SCIENTIFIC REPORTS(2019)

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摘要
Reverse transcription quantitative real-time polymerase chain reaction (RT-qPCR) is a very sensitive widespread technique considered as the gold standard to explore transcriptional variations. While a particular methodology has to be followed to provide accurate results many published studies are likely to misinterpret results due to lack of minimal quality requirements. Yersinia pestis is a highly pathogenic bacterium responsible for plague. It has been used to propose a ready-to-use and complete approach to mitigate the risk of technical biases in transcriptomic studies. The selection of suitable reference genes (RGs) among 29 candidates was performed using four different methods (GeNorm, NormFinder, BestKeeper and the Delta-Ct method). An overall comprehensive ranking revealed that 12 following candidate RGs are suitable for accurate normalization: gmk , proC , fabD , rpoD , nadB , rho , thrA , ribD , mutL , rpoB , adk and tmk . Some frequently used genes like 16S RNA had even been found as unsuitable to study Y . pestis . This methodology allowed us to demonstrate, under different temperatures and states of growth, significant transcriptional changes of six efflux pumps genes involved in physiological aspects as antimicrobial resistance or virulence. Previous transcriptomic studies done under comparable conditions had not been able to highlight these transcriptional modifications. These results highlight the importance of validating RGs prior to the normalization of transcriptional expression levels of targeted genes. This accurate methodology can be extended to any gene of interest in Y . pestis . More generally, the same workflow can be applied to identify and validate appropriate RGs in other bacteria to study transcriptional variations.
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关键词
Bacterial transcription,Reverse transcription polymerase chain reaction,Transcriptomics,Science,Humanities and Social Sciences,multidisciplinary
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