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首页> 外文期刊>Journal of the Royal Statistical Society. Series C, Applied statistics >Estimating numbers of infectious units from serial dilution assays
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Estimating numbers of infectious units from serial dilution assays

机译:通过系列稀释法估算感染单位数

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摘要

The paper concerns the design and analysis of serial dilution assays to estimate the infectivity of a sample of tissue when it is assumed that the sample contains a finite number of indivisible infectious units such that a subsample will be infectious if it contains one or more of these units. The aim of the study is to estimate the number of infectious units in the original sample. The standard approach to tine analysis of data from such a study is based on the assumption of independence of aliquots both at the same dilution level and at different dilution levels, so that the numbers of infectious units in the aliquots follow independent Poisson distributions. An alternative approach is based on calculation of the expected value of the total number of samples tested that are not infectious. We derive the likelihood for the data on the basis of the discrete number of infectious units, enabling calculation of the maximum likelihood estimate and likelihood-based confidence intervals. We use the exact probabilities that are obtained to compare the maximum likelihood estimate with those given by the other methods in terms of bias and standard error and to compare the coverage of the confidence intervals. We show that the methods have very similar properties and conclude that for practical use the method that is based on the Poisson assumption is to be recommended, since it can be implemented by using standard statistical software. Finally we consider the design of serial dilution assays, concluding that it is important that neither the dilution factor nor the number of samples that remain untested should be too large.
机译:当假设样品中包含有限数目的不可分感染单位时,如果样本中包含一个或多个这样的子样本,则该样本涉及传染性,因此本文涉及连续稀释测定的设计和分析,以估计组织样本的感染性。单位。该研究的目的是估计原始样品中的传染单位数量。这种研究的数据进行常规分析的标准方法是基于在相同稀释水平和不同稀释水平下等分试样均独立的假设,因此等分试样中感染单位的数量遵循独立的泊松分布。一种替代方法是基于对非传染性测试样品总数的期望值的计算。我们基于离散数量的传染单位得出数据的似然性,从而可以计算最大似然估计和基于似然的置信区间。我们使用获得的确切概率将最大似然估计值与其他方法在偏倚和标准误上给出的估计值进行比较,并比较置信区间的覆盖范围。我们表明这些方法具有非常相似的属性,并得出结论,对于实际使用,建议使用基于Poisson假设的方法,因为可以使用标准统计软件来实施该方法。最后,我们考虑了系列稀释测定的设计,得出结论,重要的是稀释倍数或未测试样品的数量都不应太大。

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