Bayesian estimation of intervention effect with pre- and post-misclassified binomial data

被引:2
作者
Stamey, James D. [1 ]
Seaman, John W. [1 ]
Young, Dean M. [1 ]
机构
[1] Baylor Univ, Dept Stat Sci, Waco, TX 76798 USA
关键词
misclassification; Monte Carlo approximation; regression to the mean;
D O I
10.1080/10543400601001493
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
We consider studies in which an enrolled subject tests positive on a fallible test. After an intervention, disease status is re-diagnosed with the same fallible instrument. Potential misclassification in the diagnostic test causes regression to the mean that biases inferences about the true intervention effect. The existing likelihood approach suffers in situations where either sensitivity or specificity is near 1. In such cases, common in many diagnostic tests, confidence interval coverage can often be below nominal for the likelihood approach. Another potential drawback of the maximum likelihood estimator (MLE) method is that it requires validation data to eliminate identification problems. We propose a Bayesian approach that offers improved performance in general, but substantially better performance than the MLE method in the realistic case of a highly accurate diagnostic test. We obtain this superior performance using no more information than that employed in the likelihood method. Our approach is also more flexible, doing without validation data if necessary, but accommodating multiple sources of information, if available, thereby systematically eliminating identification problems. We show via a simulation study that our Bayesian approach outperforms the MLE method, especially when the diagnostic test has high sensitivity, specificity, or both. We also consider a real data example for which the diagnostic test specificity is close to 1 (false positive probability close to 0).
引用
收藏
页码:93 / 108
页数:16
相关论文
共 12 条
[1]   Five-day twice daily cefdinir therapy for acute otitis media: microbiologic and clinical efficacy [J].
Block, SL ;
Hedrick, JA ;
Kratzer, J ;
Nemeth, MA ;
Tack, KJ .
PEDIATRIC INFECTIOUS DISEASE JOURNAL, 2000, 19 (12) :S153-S158
[2]   Case-control analysis with partial knowledge of exposure misclassification probabilities [J].
Gustafson, P ;
Le, ND ;
Saskin, R .
BIOMETRICS, 2001, 57 (02) :598-609
[3]   BAYESIAN-ESTIMATION OF DISEASE PREVALENCE AND THE PARAMETERS OF DIAGNOSTIC-TESTS IN THE ABSENCE OF A GOLD STANDARD [J].
JOSEPH, L ;
GYORKOS, TW ;
COUPAL, L .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 1995, 141 (03) :263-272
[4]   Bias in a placebo-controlled study due to mismeasurement of disease status and the regression effect [J].
Lin, HM ;
Lyles, RH ;
Williamson, JM .
CONTROLLED CLINICAL TRIALS, 2002, 23 (05) :497-501
[5]   Estimation of the intervention effect in a non-randoinized study with pre- and post-mismeasured binary responses [J].
Lin, HM ;
Lyles, RH ;
Williamson, JM ;
Kunselman, AR .
STATISTICS IN MEDICINE, 2005, 24 (03) :419-435
[6]   Is acupuncture effective in treating chronic pain after spinal cord injury? [J].
Nayak, S ;
Shiflett, SC ;
Schoenberger, NE ;
Agostinelli, S ;
Kirshblum, S ;
Averill, A ;
Cotter, AC .
ARCHIVES OF PHYSICAL MEDICINE AND REHABILITATION, 2001, 82 (11) :1578-1586
[7]  
Palmu A, 1999, INT J PEDIATR OTORHI, V49, P207, DOI 10.1016/S0165-5876(99)00207-4
[8]   A simple Bayesian analysis of misclassified binary data with a validation substudy [J].
Prescott, GJ ;
Garthwaite, PH .
BIOMETRICS, 2002, 58 (02) :454-458
[9]   Bayesian analysis of misclassified binary data from a matched case-control study with a validation sub-study [J].
Prescott, GJ ;
Garthwaite, PH .
STATISTICS IN MEDICINE, 2005, 24 (03) :379-401
[10]   Bayesian sample size determination for estimating binomial parameters from data subject to misclassification [J].
Rahme, E ;
Joseph, L ;
Gyorkos, TW .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS, 2000, 49 :119-128