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B5O3 | Latent class bivariate model for the meta-analysis of diagnostic test accuracy studies

Abstract text
Background: Several statistical methods for meta-analysis of data from diagnostic test accuracy studies have been proposed. The Bivariate Model is a rigorous method for this purpose by directly analyzing estimates of sensitivity and specificity.

Objectives: Our research is motivated by a re-analysis of data of a published systematic review (Scheidler et al, 1997). In this meta-analysis three imaging techniques were compared for the diagnosis of lymph node metastasis in women with cervical cancer. Observing the heterogeneity amount on the data we aim at implementing new methods for helping the understanding on the relationship between sensitivity and specificity.

Methods: We propose the Latent Class Bivariate Model, an extension of the Bivariate Model by means of a discrete latent variable for finding clusters of studies.

Results: Several type of models were fitted with Latent Gold software (Vermunt and Magidson, 2008). The best model is the Latent Class Bivariate Model with the type of test as a nominal covariate. This model detected two latent classes of studies. Studies belonging to the first latent class show lower sensitivity but higher specificity and almost all the studies are CT and MRI; in that class sensitivity and specificity appear to be negatively correlated. Studies belonging to the second latent class show lower specificity but higher sensitivity and almost all the studies are LAG; in that class sensitivity and specificity appear not to be correlated.

Conclusions: What is added by the latent approach is that it provides an explanatory and confirmatory tool for investigating and testing different patterns of heterogeneity across studies. We tested the performance equivalence of CT and MRI and the different correlation between sensitivity and specificity in LAG and CT/MRI studies. Additional insight and data-driven hypothesis can be generated for future subgroup meta-analysis.
Eusebi P1, Reitsma JB2, Vermunt JK3
1 Department of Epidemiology, Regional Health Authority of Umbria, Italy
2 Department of Clinical Epidemiology, Biostatistics and Bioinformatics, Academic Medical Center Amsterdam, Netherland
3 Faculty of Social and Behavioural Sciences, Department Methodology and Statistics, University of Tilburg, Netherland
Presenting author and contact person
Presenting author: 
Paolo Eusebi
Contact person: 
Paolo Eusebi (Contact this person)
Date and Location
Oral session B5O3
Sábado 22 Octubre 2011 - 12:05 - 12:25