Kafatos G, Andrews N J, McConway K J, Maple P A C, Brown K, Farrington C P
Department of Statistics, Modelling and Economics,Public Health England,London,UK.
Department of Mathematics and Statistics,The Open University,Milton Keynes,UK.
Epidemiol Infect. 2016 Mar;144(4):887-95. doi: 10.1017/S0950268815001958. Epub 2015 Aug 27.
Population seroprevalence can be estimated from serosurveys by classifying quantitative measurements into positives (past infection/vaccinated) or negatives (susceptible) according to a fixed assay cut-off. The choice of assay cut-offs has a direct impact on seroprevalence estimates. A time-resolved fluorescence immunoassay (TRFIA) was used to test exposure to human parvovirus 4 (HP4). Seroprevalence estimates were obtained after applying the diagnostic assay cut-off under different scenarios using simulations. Alternative methods for estimating assay cut-offs were proposed based on mixture modelling with component distributions for the past infection/vaccinated and susceptible populations. Seroprevalence estimates were compared to those obtained directly from the data using mixture models. Simulation results showed that when there was good distinction between the underlying populations all methods gave seroprevalence estimates close to the true one. For high overlap between the underlying components, the diagnostic assay cut-off generally gave the most biased estimates. However, the mixture model methods also gave biased estimates which were a result of poor model fit. In conclusion, fixed cut-offs often produce biased estimates but they also have advantages compared to other methods such as mixture models. The bias can be reduced by using assay cut-offs estimated specifically for seroprevalence studies.
通过血清学调查,根据固定的检测临界值将定量测量结果分为阳性(既往感染/接种过疫苗)或阴性(易感),从而估计人群血清阳性率。检测临界值的选择对血清阳性率估计有直接影响。采用时间分辨荧光免疫分析法(TRFIA)检测人细小病毒4(HP4)的暴露情况。使用模拟方法在不同情况下应用诊断检测临界值后获得血清阳性率估计值。基于既往感染/接种过疫苗人群和易感人群的成分分布混合模型,提出了估计检测临界值的替代方法。将血清阳性率估计值与使用混合模型直接从数据中获得的估计值进行比较。模拟结果表明,当基础人群之间有良好区分时,所有方法给出的血清阳性率估计值都接近真实值。对于基础成分之间的高重叠情况,诊断检测临界值通常给出偏差最大的估计值。然而,混合模型方法也给出了有偏差的估计值,这是模型拟合不佳的结果。总之,固定临界值往往会产生有偏差的估计值,但与混合模型等其他方法相比,它们也有优势。通过使用专门为血清阳性率研究估计的检测临界值,可以减少偏差。