Abstract

Comparison of the accuracy of a new screening test to that of the standard one can be implemented by administering both screening tests to a group of asymptomatic subjects for which the disease status can be determined using a gold standard (GS) test. Nevertheless, the GS test may be too costly or too invasive hence unethical to administer to all the study subjects, including those who screen negative on all the screening tests. When this is the case, relative accuracy of the two screening tests can be estimated when a randomized paired screen positive (RPSP) design is used to collect the data. However, this design contains cells with missing data, thus the likelihood function is not available. The objective of this study is to demonstrate a parsimonious way of estimating relative accuracy of the screening tests when the determination of the disease status of the subjects who screened negative on the new and the standard screening tests was not conducted due to ethical concerns. Markov Chain Monte Carlo simulation technique is used to parsimoniously address the aforementioned shortcoming of the RPSP design when subjective approach to estimation is used. Multiple data imputation using Gibbs sampler is performed. Monte Carlo point and interval estimates of the missing data, measures of accuracy and the relative rates are computed when the tests are treated to be:

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