Comparison of Bayesian and frequentist methods for prevalence estimation under misclassification

被引:37
作者
Flor, Matthias [1 ]
Weiss, Michael [1 ]
Selhorst, Thomas [1 ]
Mueller-Graf, Christine [1 ]
Greiner, Matthias [1 ,2 ]
机构
[1] German Fed Inst Risk Assessment, Max Dohrn Str 8-10, D-10589 Berlin, Germany
[2] Univ Vet Med Hannover, Bunteweg 2, D-30559 Hannover, Germany
关键词
Prevalence estimation; Imperfect diagnostic test; Misclassification; Bayesian prevalence estimate; Rogan-Gladen estimate; Diagnostic sensitivity; Diagnostic specificity; CONFIDENCE; STANDARD; MODELS; LIMITS;
D O I
10.1186/s12889-020-09177-4
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
BackgroundVarious methods exist for statistical inference about a prevalence that consider misclassifications due to an imperfect diagnostic test. However, traditional methods are known to suffer from truncation of the prevalence estimate and the confidence intervals constructed around the point estimate, as well as from under-performance of the confidence intervals' coverage.MethodsIn this study, we used simulated data sets to validate a Bayesian prevalence estimation method and compare its performance to frequentist methods, i.e. the Rogan-Gladen estimate for prevalence, RGE, in combination with several methods of confidence interval construction. Our performance measures are (i) error distribution of the point estimate against the simulated true prevalence and (ii) coverage and length of the confidence interval, or credible interval in the case of the Bayesian method.ResultsAcross all data sets, the Bayesian point estimate and the RGE produced similar error distributions with slight advantages of the former over the latter. In addition, the Bayesian estimate did not suffer from the RGE's truncation problem at zero or unity. With respect to coverage performance of the confidence and credible intervals, all of the traditional frequentist methods exhibited strong under-coverage, whereas the Bayesian credible interval as well as a newly developed frequentist method by Lang and Reiczigel performed as desired, with the Bayesian method having a very slight advantage in terms of interval length.ConclusionThe Bayesian prevalence estimation method should be prefered over traditional frequentist methods. An acceptable alternative is to combine the Rogan-Gladen point estimate with the Lang-Reiczigel confidence interval.
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页数:10
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