A comparison of bivariate, multivariate random ‐effects, and Poisson correlated gamma‐frailty models to meta‐analyze individual patient data of ordinal scale diagnostic tests

Individual patient data (IPD) meta‐analyses are increasingly common in the literature. In the context of estimating the diagnostic accuracy of ordinal or semi‐continuous scale tests, sensitivity and specificity are often reported for a given threshold or a small set of thresholds, and a meta‐analysis is conducted via a bivariate approach to account for their correlation. When IPD are available, sensitivity and specificity can be pooled for every possible threshold. Our objective was to compare the bivariate approach, which can be applied separately at every threshold, to two multivariate methods: the ordinal multivariate random‐effects model and the Poisson correlated gamma‐frailty model. Our comparison was empirical, using IPD from 13 studies that evaluated the diagnostic accuracy of the 9‐item Patient Health Questionnaire depression screening tool, and included simulations. The empirical comparison showed that the implementation of the two multivariate methods is more laborious in terms of computational time and sensitivity to user‐supplied values compared to the bivariate approach. Simulations showed that ignoring the within‐study correlation of sensitivity and specificity across thresholds did not worsen inferences with the bivariate approach compared to the Poisson model. The ordinal approach was not suitable for simulations because the model was highly sensitive to user‐supplied starting values. We tentatively recommend the bivariate approach rather th...
Source: Biometrical Journal - Category: Biotechnology Authors: Tags: Research Paper Source Type: research