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Título
Hierarchical Modeling for Diagnostic Test Accuracy Using Multivariate Probability Distribution Functions
Autor(es)
Palabras clave
Copula function
Binary covariance
Bayesian hierarchicalmodel
Markov chain Monte Carlo
Clasificación UNESCO
12 Matemáticas
Fecha de publicación
2021
Editor
MDPI
Citación
Pambabay-Calero, J., Bauz-Olvera, S., Nieto-Librero, A., Sánchez-García, A., & Galindo-Villardón, P. (2021). Hierarchical modeling for diagnostic test accuracy using multivariate probability distribution functions. Mathematics, 9(11). https://doi.org/10.3390/MATH9111310
Resumen
[EN] Models implemented in statistical software for the precision analysis of diagnostic tests
include random-effects modeling (bivariate model) and hierarchical regression (hierarchical summary
receiver operating characteristic). However, these models do not provide an overall mean,
but calculate the mean of a central study when the random effect is equal to zero; hence, it is difficult
to calculate the covariance between sensitivity and specificity when the number of studies in the
meta-analysis is small. Furthermore, the estimation of the correlation between specificity and sensitivity
is affected by the number of studies included in the meta-analysis, or the variability among
the analyzed studies. To model the relationship of diagnostic test results, a binary covariance matrix
is assumed. Here we used copulas as an alternative to capture the dependence between sensitivity
and specificity. The posterior values were estimated using methods that consider sampling algorithms
from a probability distribution (Markov chain Monte Carlo), and estimates were compared
with the results of the bivariate model, which assumes statistical independence in the test results.
To illustrate the applicability of the models and their respective comparisons, data from 14 published
studies reporting estimates of the accuracy of the Alcohol Use Disorder Identification Test were
used. Using simulations, we investigated the performance of four copula models that incorporate
scenarios designed to replicate realistic situations for meta-analyses of diagnostic accuracy of the
tests. The models’ performances were evaluated based on p-values using the Cramér–von Mises
goodness-of-fit test. Our results indicated that copula models are valid when the assumptions of the
bivariate model are not fulfilled.
URI
ISSN
2227-7390
DOI
10.3390/math9111310
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