Schmidt Philip J, Acosta Nicole, Chik Alex H S, D'Aoust Patrick M, Delatolla Robert, Dhiyebi Hadi A, Glier Melissa B, Hubert Casey R J, Kopetzky Jennifer, Mangat Chand S, Pang Xiao-Li, Peterson Shelley W, Prystajecky Natalie, Qiu Yuanyuan, Servos Mark R, Emelko Monica B
Department of Civil and Environmental Engineering, University of Waterloo, Waterloo, ON, Canada.
Department of Microbiology, Immunology and Infectious Diseases, University of Calgary, Calgary, AB, Canada.
Front Microbiol. 2023 Mar 3;14:1048661. doi: 10.3389/fmicb.2023.1048661. eCollection 2023.
The real-time polymerase chain reaction (PCR), commonly known as quantitative PCR (qPCR), is increasingly common in environmental microbiology applications. During the COVID-19 pandemic, qPCR combined with reverse transcription (RT-qPCR) has been used to detect and quantify SARS-CoV-2 in clinical diagnoses and wastewater monitoring of local trends. Estimation of concentrations using qPCR often features a log-linear standard curve model calibrating quantification cycle () values obtained from underlying fluorescence measurements to standard concentrations. This process works well at high concentrations within a linear dynamic range but has diminishing reliability at low concentrations because it cannot explain "non-standard" data such as values reflecting increasing variability at low concentrations or non-detects that do not yield values at all. Here, fundamental probabilistic modeling concepts from classical quantitative microbiology were integrated into standard curve modeling approaches by reflecting well-understood mechanisms for random error in microbial data. This work showed that data diverging from the log-linear regression model at low concentrations as well as non-detects can be seamlessly integrated into enhanced standard curve analysis. The newly developed model provides improved representation of standard curve data at low concentrations while converging asymptotically upon conventional log-linear regression at high concentrations and adding no fitting parameters. Such modeling facilitates exploration of the effects of various random error mechanisms in experiments generating standard curve data, enables quantification of uncertainty in standard curve parameters, and is an important step toward quantifying uncertainty in qPCR-based concentration estimates. Improving understanding of the random error in qPCR data and standard curve modeling is especially important when low concentrations are of particular interest and inappropriate analysis can unduly affect interpretation, conclusions regarding lab performance, reported concentration estimates, and associated decision-making.
实时聚合酶链反应(PCR),通常称为定量PCR(qPCR),在环境微生物学应用中越来越普遍。在新冠疫情期间,qPCR与逆转录相结合(RT-qPCR)已被用于临床诊断和当地趋势的废水监测中检测和定量新冠病毒。使用qPCR估计浓度通常采用对数线性标准曲线模型,将从基础荧光测量获得的定量循环()值校准到标准浓度。这个过程在线性动态范围内的高浓度时效果良好,但在低浓度时可靠性会降低,因为它无法解释“非标准”数据,如反映低浓度时变异性增加的 值或根本不产生 值的未检出情况。在这里,通过反映微生物数据中随机误差的充分理解机制,将经典定量微生物学的基本概率建模概念整合到标准曲线建模方法中。这项工作表明,在低浓度下偏离对数线性回归模型的数据以及未检出情况可以无缝整合到增强的标准曲线分析中。新开发的模型在低浓度下提供了标准曲线数据的改进表示,同时在高浓度下渐近收敛于传统对数线性回归,且不增加拟合参数。这种建模有助于探索在生成标准曲线数据的实验中各种随机误差机制的影响,能够量化标准曲线参数中的不确定性,并且是朝着量化基于qPCR的浓度估计中的不确定性迈出的重要一步。当低浓度特别受关注且不恰当的分析可能会过度影响解释、关于实验室性能的结论、报告的浓度估计以及相关决策时,提高对qPCR数据和标准曲线建模中随机误差的理解尤为重要。