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首页> 外文期刊>Methods: A Companion to Methods in Enzymology >Evaluation of qPCR curve analysis methods for reliable biomarker discovery: Bias, resolution, precision, and implications
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Evaluation of qPCR curve analysis methods for reliable biomarker discovery: Bias, resolution, precision, and implications

机译:评估qPCR曲线分析方法以可靠地发现生物标志物:偏差,分辨率,精密度和含义

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摘要

RNA transcripts such as mRNA or microRNA are frequently used as biomarkers to determine disease state or response to therapy. Reverse transcription (RT) in combination with quantitative PCR (qPCR) has become the method of choice to quantify small amounts of such RNA molecules. In parallel with the democratization of RT-qPCR and its increasing use in biomedical research or biomarker discovery, we witnessed a growth in the number of gene expression data analysis methods. Most of these methods are based on the principle that the position of the amplification curve with respect to the cycle-axis is a measure for the initial target quantity: the later the curve, the lower the target quantity. However, most methods differ in the mathematical algorithms used to determine this position, as well as in the way the efficiency of the PCR reaction (the fold increase of product per cycle) is determined and applied in the calculations. Moreover, there is dispute about whether the PCR efficiency is constant or continuously decreasing. Together this has lead to the development of different methods to analyze amplification curves. In published comparisons of these methods, available algorithms were typically applied in a restricted or outdated way, which does not do them justice. Therefore, we aimed at development of a framework for robust and unbiased assessment of curve analysis performance whereby various publicly available curve analysis methods were thoroughly compared using a previously published large clinical data set (Vermeulen et al., 2009) [11]. The original developers of these methods applied their algorithms and are co-author on this study. We assessed the curve analysis methods' impact on transcriptional biomarker identification in terms of expression level, statistical significance, and patient-classification accuracy. The concentration series per gene, together with data sets from unpublished technical performance experiments, were analyzed in order to assess the algorithms' precision, bias, and resolution. While large differences exist between methods when considering the technical performance experiments, most methods perform relatively well on the biomarker data. The data and the analysis results per method are made available to serve as benchmark for further development and evaluation of qPCR curve analysis methods (http://qPCRDataMethods.hfrc.nl).
机译:RNA转录本(例如mRNA或microRNA)经常用作确定疾病状态或对治疗反应的生物标记。逆转录(RT)与定量PCR(qPCR)结合已成为量化少量此类RNA分子的选择方法。伴随着RT-qPCR的民主化及其在生物医学研究或生物标记物发现中的越来越多的应用,我们目睹了基因表达数据分析方法数量的增长。这些方法大多数基于以下原理:扩增曲线相对于循环轴的位置是初始目标量的量度:曲线越靠后,目标量越低。但是,大多数方法在确定该位置所用的数学算法以及确定PCR反应效率(每个循环中产物的倍数增加)并将其应用于计算的方式方面有所不同。此外,关于PCR效率是恒定的还是连续下降的存在争议。这些共同导致了分析放大曲线的不同方法的发展。在这些方法的公开比较中,可用算法通常以受限或过时的方式应用,这不能使它们公正。因此,我们旨在开发一种强大而公正的曲线分析性能评估框架,从而使用先前发布的大型临床数据集对各种公开可用的曲线分析方法进行全面比较(Vermeulen等,2009)[11]。这些方法的最初开发者应用了他们的算法,并且是本研究的合著者。我们从表达水平,统计学意义和患者分类准确性方面评估了曲线分析方法对转录生物标志物鉴定的影响。为了评估算法的精度,偏差和分辨率,对每个基因的浓度系列以及未发表的技术性能实验的数据集进行了分析。尽管考虑技术性能实验时方法之间存在很大差异,但大多数方法在生物标志物数据上的性能相对较好。每种方法的数据和分析结果均可用作进一步开发和评估qPCR曲线分析方法(http://qPCRDataMethods.hfrc.nl)的基准。

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