Llanos Agustina, François Jean Marie, Parrou Jean-Luc
Université de Toulouse; INSA, UPS, INP; LISBP, 135 Avenue de Rangueil, F-31077, Toulouse, France.
INRA, UMR792 Ingénierie des Systèmes Biologiques et des Procédés, F-31400, Toulouse, France.
BMC Genomics. 2015 Feb 14;16(1):71. doi: 10.1186/s12864-015-1224-y.
A critical step in the RT-qPCR workflow for studying gene expression is data normalization, one of the strategies being the use of reference genes. This study aimed to identify and validate a selection of reference genes for relative quantification in Talaromyces versatilis, a relevant industrial filamentous fungus. Beyond T. versatilis, this study also aimed to propose reference genes that are applicable more widely for RT-qPCR data normalization in filamentous fungi.
A selection of stable, potential reference genes was carried out in silico from RNA-seq based transcriptomic data obtained from T. versatilis. A dozen functionally unrelated candidate genes were analysed by RT-qPCR assays over more than 30 relevant culture conditions. By using geNorm, we showed that most of these candidate genes had stable transcript levels in most of the conditions, from growth environments to conidial germination. The overall robustness of these genes was explored further by showing that any combination of 3 of them led to minimal normalization bias. To extend the relevance of the study beyond T. versatilis, we challenged their stability together with sixteen other classically used genes such as β-tubulin or actin, in a representative sample of about 100 RNA-seq datasets. These datasets were obtained from 18 phylogenetically distant filamentous fungi exposed to prevalent experimental conditions. Although this wide analysis demonstrated that each of the chosen genes exhibited sporadic up- or down-regulation, their hierarchical clustering allowed the identification of a promising group of 6 genes, which presented weak expression changes and no tendency to up- or down-regulation over the whole set of conditions. This group included ubcB, sac7, fis1 and sarA genes, as well as TFC1 and UBC6 that were previously validated for their use in S. cerevisiae.
We propose a set of 6 genes that can be used as reference genes in RT-qPCR data normalization in any field of fungal biology. However, we recommend that the uniform transcription of these genes is tested by systematic experimental validation and to use the geometric averaging of at least 3 of the best ones. This will minimize the bias in normalization and will support trustworthy biological conclusions.
在研究基因表达的RT-qPCR工作流程中,一个关键步骤是数据归一化,其中一种策略是使用参考基因。本研究旨在鉴定和验证一组用于特异曲霉(一种相关的工业丝状真菌)相对定量的参考基因。除了特异曲霉,本研究还旨在提出更广泛适用于丝状真菌RT-qPCR数据归一化的参考基因。
从特异曲霉获得的基于RNA-seq的转录组数据中,通过计算机分析筛选出一组稳定的潜在参考基因。通过RT-qPCR分析,在30多种相关培养条件下对十几个功能不相关的候选基因进行了分析。使用geNorm软件,我们发现这些候选基因中的大多数在从生长环境到分生孢子萌发的大多数条件下都具有稳定的转录水平。通过证明其中任意3个基因的组合导致最小的归一化偏差,进一步探究了这些基因的整体稳健性。为了将研究的相关性扩展到特异曲霉之外,我们在约100个RNA-seq数据集的代表性样本中,将它们与其他16个经典使用的基因(如β-微管蛋白或肌动蛋白)一起测试其稳定性。这些数据集来自18种系统发育距离较远的丝状真菌,它们处于普遍的实验条件下。尽管这种广泛的分析表明每个选定的基因都表现出零星的上调或下调,但它们的层次聚类允许识别出一组有前景的6个基因,这些基因在整个条件集中呈现出微弱的表达变化,且没有上调或下调的趋势。该组包括ubcB、sac7、fis1和sarA基因,以及先前已在酿酒酵母中验证其用途的TFC1和UBC6。
我们提出了一组6个基因,可用于真菌生物学任何领域的RT-qPCR数据归一化。然而,我们建议通过系统的实验验证来测试这些基因的一致转录,并使用至少3个最佳基因的几何平均值。这将使归一化偏差最小化,并支持可靠的生物学结论。