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On the interpretation of test sensitivity in the two-test two-population problem: Assumptions matter

机译:关于二检验两人口问题中检验敏感性的解释:假设很重要

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Bayesian analyses of diagnostic test accuracy often require the assumption of constant test accuracy among populations to ensure model identifiability. In a prior study (Toft, N., Jcirgensen, E., Hcijsgaard, S., 2005. Diagnosing diagnostic tests: evaluating the assumptions underlying the estimation of sensitivity and specificity in the absence of a gold standard. Prev. Vet. Med. 68, 19-33), the sensitivity estimate from a two-test two-population model was shown to be weighted toward the population with the higher prevalence of infection. In the present study, we provided analytical formulae that give insight into the effect of assuming constant sensitivity when this assumption was false. To further investigate the effect of failure of the assumption of constant sensitivity, we also simulated several data sets under the assumption that the first test's sensitivity varied in the two populations. Bayesian conditional independence models that presumed constant sensitivities were implemented in WinBUGS and posterior estimates (mean and 95% probability intervals) were evaluated based on the known true values of the parameters. Findings from the Bayesian analyses of several scenarios indicated that the posterior mean was a good estimate of the weighted mean of the sensitivities in the two populations, when one test was perfectly specific. When neither test was perfectly specific, the Bayesian posterior mean for test 1 sensitivity was either greater than the larger of the two true sensitivities, or smaller than both, and estimates of prevalence and the second test's specificity were incorrect. The implication is that estimates of some parameters will be biased if test sensitivities are not constant across populations. Without a perfectly specific test, and if the assumption of constant sensitivity fails, the only solution we are aware of would involve incorporating prior information on at least two parameters.
机译:诊断测试准确性的贝叶斯分析通常要求假设总体中的测试准确性不变,以确保模型可识别性。在先前的研究中(Toft,N.,Jcirgensen,E.,Hcijsgaard,S.,2005年。诊断测试:评估在没有金标准的情况下敏感性和特异性估计的假设。 68,19-33),两次测试的两人口模型的敏感性估计显示为对感染率较高的人群加权。在本研究中,我们提供了分析公式,可以深入了解当此假设为假时假设恒定灵敏度的效果。为了进一步研究假设恒定灵敏度的失败的影响,我们还假设在两个人群中首次测试的灵敏度不同的情况下,模拟了几个数据集。在WinBUGS中实现了假定恒定灵敏度的贝叶斯条件独立模型,并根据参数的已知真实值评估了后验估计(均值和95%概率区间)。贝叶斯分析对几种情况的分析结果表明,当一项检验完全特异性时,后验均值可以很好地估计两个人群的敏感性加权均值。当两个测试都不是完全特异性时,测试1敏感性的贝叶斯后验均值要么大于两个真实敏感性中的较大者,要么小于两个真实敏感性,并且患病率和第二个检验的特异性估计不正确。这就意味着,如果不同人群之间的测试敏感性不是恒定的,则某些参数的估计将有偏差。如果没有完美的特定测试,并且如果恒定灵敏度的假设失败,那么我们知道的唯一解决方案将包括在至少两个参数上合并先验信息。

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