High-throughput identification of reference genes for research and clinical RT-qPCR analysis of breast cancer samples.

Diana V Maltseva, Nadezda A Khaustova, Nikita N Fedotov, Elona O Matveeva, Alexey E Lebedev, Maxim U Shkurnikov, Vladimir V Galatenko, Udo Schumacher, Alexander G Tonevitsky
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引用次数: 75

Abstract

Background: Quantification and normalization of RT-qPCR data critically depends on the expression of so called reference genes. Our goal was to develop a strategy for the selection of reference genes that utilizes microarray data analysis and combines known approaches for gene stability evaluation and to select a set of appropriate reference genes for research and clinical analysis of breast samples with different receptor and cancer status using this strategy.

Methods: A preliminary search of reference genes was based on high-throughput analysis of microarray datasets. The final selection and validation of the candidate genes were based on the RT-qPCR data analysis using several known methods for expression stability evaluation: comparative ∆Ct method, geNorm, NormFinder and Haller equivalence test.

Results: A set of five reference genes was identified: ACTB, RPS23, HUWE1, EEF1A1 and SF3A1. The initial selection was based on the analysis of publically available well-annotated microarray datasets containing different breast cancers and normal breast epithelium from breast cancer patients and epithelium from cancer-free patients. The final selection and validation were performed using RT-qPCR data from 39 breast cancer biopsy samples. Three genes from the final set were identified by the means of microarray analysis and were novel in the context of breast cancer assay. We showed that the selected set of reference genes is more stable in comparison not only with individual genes, but also with a system of reference genes used in commercial OncotypeDX test.

Conclusion: A selection of reference genes for RT-qPCR can be efficiently performed by combining a preliminary search based on the high-throughput analysis of microarray datasets and final selection and validation based on the analysis of RT-qPCR data with a simultaneous examination of different expression stability measures. The identified set of reference genes proved to be less variable and thus potentially more efficient for research and clinical analysis of breast samples comparing to individual genes and the set of reference genes used in OncotypeDX assay.

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高通量鉴定内参基因用于乳腺癌研究和临床RT-qPCR分析。
背景:RT-qPCR数据的定量和规范化在很大程度上取决于所谓内参基因的表达。我们的目标是开发一种利用微阵列数据分析和结合已知方法进行基因稳定性评估的内参基因选择策略,并使用该策略选择一组合适的内参基因用于不同受体和癌症状态的乳腺样本的研究和临床分析。方法:通过对微阵列数据集的高通量分析,初步寻找内参基因。候选基因的最终选择和验证基于RT-qPCR数据分析,使用几种已知的表达稳定性评估方法:比较∆Ct法、geNorm、NormFinder和Haller等效检验。结果:鉴定出5个内参基因:ACTB、RPS23、HUWE1、EEF1A1和SF3A1。最初的选择是基于对公开的、带有良好注释的微阵列数据集的分析,这些数据集包含不同的乳腺癌和来自乳腺癌患者的正常乳腺上皮以及来自无癌患者的上皮。使用来自39例乳腺癌活检样本的RT-qPCR数据进行最终选择和验证。通过微阵列分析,从最后一组中鉴定出三个基因,这在乳腺癌检测中是新颖的。我们发现,所选择的内参基因不仅与单个基因相比更稳定,而且与商业OncotypeDX检测中使用的内参基因系统相比也更稳定。结论:基于微阵列数据集的高通量分析进行初步搜索,基于RT-qPCR数据分析进行最终选择和验证,同时检测不同的表达稳定性措施,可以高效地进行RT-qPCR内参基因的选择。与OncotypeDX检测中使用的单个基因和一组内参基因相比,鉴定出的一组内参基因被证明具有较小的可变性,因此可能更有效地用于乳腺样本的研究和临床分析。
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