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qPCR data analysis: Better results through iconoclasm

机译:qPCR数据分析:通过打破传统获得更好的结果

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摘要

The standard approach for quantitative estimation of genetic materials with qPCR is calibration with known concentrations for the target substance, in which estimates of the quantification cycle (Cq) are fitted to a straight-line function of log(N0), where N0 is the initial number of target molecules. The location of Cq for the unknown on this line then yields its N0. The most widely used definition for Cq is an absolute threshold that falls in the early growth cycles. This usage is flawed as commonly implemented: threshold set very close to the baseline level, which is estimated separately, from designated "baseline cycles." The absolute threshold is especially poor for dealing with the scale variability often observed for growth profiles. Scale-independent markers, like the first derivative maximum (FDM) and a relative threshold (Cr) avoid this problem. We describe improved methods for estimating these and other Cq markers and their standard errors, from a nonlinear algorithm that fits growth profiles to a 4-parameter log-logistic function plus a baseline function. By examining six multidilution, multireplicate qPCR data sets, we find that nonlinear expressions are often preferred statistically for the dependence of Cq on log(N0). This means that the amplification efficiency E depends on N0, in violation of another tenet of qPCR analysis. Neglect of calibration nonlinearity leads to biased estimates of the unknown. By logic, E estimates from calibration fitting pertain to the earliest baseline cycles, not the early growth cycles used to estimate E from growth profiles for single reactions. This raises concern about the use of the latter in lengthy extrapolations to estimate N0. Finally, we observe that replicate ensemble standard deviations greatly exceed predictions, implying that much better results can be achieved from qPCR through better experimental procedures, which likely include reducing pipette volume uncertainty.
机译:使用qPCR定量评估遗传物质的标准方法是使用目标物质的已知浓度进行校准,其中将定量循环(Cq)的估算值拟合为log(N0)的直线函数,其中N0是初始值目标分子的数量。然后,此行上未知数的Cq位置将得出其N0。 Cq使用最广泛的定义是绝对阈值,该阈值落在早期增长周期中。这种用法存在普遍实施的缺陷:将阈值设置为非常接近于基线水平,该基线水平是与指定的“基线周期”分开估算的。绝对阈值对于处理通常在生长曲线中观察到的尺度变异性特别差。尺度无关的标记(例如一阶导数最大值(FDM)和相对阈值(Cr))避免了此问题。我们描述了一种用于估计这些和其他Cq标记及其标准误差的改进方法,该方法从适合增长曲线的非线性算法到4参数对数逻辑函数加基线函数来进行。通过检查六个多重稀释,多重重复的qPCR数据集,我们发现非线性表达通常在统计上更适合Cq对log(N0)的依赖性。这意味着扩增效率E取决于N0,这与qPCR分析的另一个原则背道而驰。忽略校准非线性会导致未知量的估计偏差。从逻辑上讲,来自校准拟合的E估计值属于最早的基线周期,而不是用于根据单个反应的生长曲线估计E的早期生长周期。这就引起了人们的担忧,即在冗长的推断中使用后者来估计N0。最后,我们观察到重复的整体标准偏差大大超出了预期,这意味着通过更好的实验程序可以从qPCR获得更好的结果,这可能包括减少移液器体积的不确定性。

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