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Estimating true human and animal host source contribution in quantitative microbial source tracking using the Monte Carlo method

机译:使用蒙特卡洛方法估算微生物定量追踪中真实的人类和动物宿主来源贡献

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摘要

Cultivation- and library-independent, quantitative PCR-based methods have become the method of choice in microbial source tracking. However, these qPCR assays are not 100% specific and sensitive for the target sequence in their respective hosts' genome. The factors that can lead to false positive and false negative information in qPCR results are well defined. It is highly desirable to have a way of removing such false information to estimate the true concentration of host-specific genetic markers and help guide the interpretation of environmental monitoring studies. Here we propose a statistical model based on the Law of Total Probability to predict the true concentration of these markers. The distributions of the probabilities of obtaining false information are estimated from representative fecal samples of known origin. Measurement error is derived from the sample precision error of replicated qPCR reactions. Then, the Monte Carlo method is applied to sample from these distributions of probabilities and measurement error. The set of equations given by the Law of Total Probability allows one to calculate the distribution of true concentrations, from which their expected value, confidence interval and other statistical characteristics can be easily evaluated. The output distributions of predicted true concentrations can then be used as input to watershed-wide total maximum daily load determinations, quantitative microbial risk assessment and other environmental models. This model was validated by both statistical simulations and real world samples. It was able to correct the intrinsic false information associated with qPCR assays and output the distribution of true concentrations of Bacteroidales for each animal host group. Model performance was strongly affected by the precision error. It could perform reliably and precisely when the standard deviation of the precision error was small (≤0.1). Further improvement on the precision of sample processing and qPCR reaction would greatly improve the performance of the model. This methodology, built upon Bacteroidales assays, is readily transferable to any other microbial source indicator where a universal assay for fecal sources of that indicator exists.
机译:基于培养和库的独立,基于定量PCR的方法已成为微生物来源跟踪的首选方法。但是,这些qPCR分析对各自宿主基因组中的靶序列不是100%特异性和灵敏的。明确定义了导致qPCR结果中假阳性和假阴性信息的因素。迫切需要一种消除此类错误信息的方法,以估算宿主特异性遗传标记的真实浓度,并帮助指导环境监测研究的解释。在这里,我们提出了基于总概率定律的统计模型来预测这些标记的真实浓度。从已知来源的代表性粪便样本中估算获得虚假信息的概率分布。测量误差源自重复qPCR反应的样品精度误差。然后,将蒙特卡洛方法应用于这些概率分布和测量误差分布中的样本。总概率定律给出的一组方程式可以计算真实浓度的分布,从中可以轻松地评估其期望值,置信区间和其他统计特征。然后,可以将预测的真实浓度的输出分布用作流域范围内总最大日负荷确定,微生物风险定量评估和其他环境模型的输入。该模型已通过统计模拟和现实世界样本验证。它能够纠正与qPCR分析相关的内在错误信息,并输出每个动物宿主组真细菌实际浓度的分布。模型性能受到精度误差的强烈影响。当精度误差的标准偏差较小(≤0.1)时,可以可靠,精确地执行操作。进一步提高样品处理和qPCR反应的精度将大大提高模型的性能。这种建立在细菌科细菌测定基础上的方法学,可以很容易地转移到任何其他微生物源指示剂中,只要该微生物源指示剂具有粪便来源的通用检测方法即可。

著录项

  • 来源
    《Water Research》 |2010年第16期|p.4760-4775|共16页
  • 作者单位

    Department of Civil & Environmental Engineering, University of California, Davis, One Shields Avenue, Davis, CA 95616,United States;

    Department of Civil & Environmental Engineering, University of California, Davis, One Shields Avenue, Davis, CA 95616,United States;

    Department of Civil & Environmental Engineering, University of California, Berkeley, CA 94720, United States;

    Department of Civil & Environmental Engineering, University of California, Davis, One Shields Avenue, Davis, CA 95616,United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    microbial source tracking (MST); quantitative pcr (qPCR); monte carlo method; bacteroidales;

    机译:微生物来源追踪(MST);定量pcr(qPCR);蒙特卡洛法类杆菌;

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