We propose a methodology for modeling correlated binary data measured with
diagnostic error. A shared random effect is used to induce correlations in
repeated true latent binary outcomes and in observed responses and to link
the probability of a true positive outcome with the probability of having a
diagnosis error. We evaluate the performance of our proposed approach thro
ugh simulations and compare it with an ad hoc approach. The methodology is
illustrated with data from a study that assessed the probability of corneal
arcus in patients with familial hypercholesterolemia.