Estimating the conditional false-positive rate for semi-latent data.
暂无分享,去创建一个
When comparing tests for a disease, it is necessary to know whether individuals are diseased or nondiseased. In practice, the confirmatory (gold standard) procedure is often limited to individuals with positive test results, because the confirmatory procedure is not applied to individuals with negative test results. We present a model for estimating the sensitivity and specificity when two tests are compared and the gold standard classification is unavailable (semi-latent) for those individuals with negative results on both tests. The model does not assume independent error rates, and estimates of specificity conditional on a false-positive result for another test are derived. We use a Bayes approach for estimating the distributions of the performance parameters.
[1] S. Walter,et al. Estimating the error rates of diagnostic tests. , 1980, Biometrics.
[2] S D Walter,et al. Effects of dependent errors in the assessment of diagnostic test performance. , 1997, Statistics in medicine.
[3] S D Walter,et al. Estimation of test sensitivity and specificity when disease confirmation is limited to positive results. , 1999, Epidemiology.