Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?

BACKGROUND: Over time, adaptive Gaussian Hermite quadrature (QUAD) has become the preferred method for estimating generalized linear mixed models with binary outcomes. However, penalized quasi-likelihood (PQL) is still used frequently. In this work, we systematically evaluated whether matching resul...

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Main Authors: Andrea Benedetti, Robert Platt, Juli Atherton
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3886992?pdf=render
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spelling doaj-f0bce514303f4cdba77f8cf73876b88b2020-11-25T01:18:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0191e8460110.1371/journal.pone.0084601Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?Andrea BenedettiRobert PlattJuli AthertonBACKGROUND: Over time, adaptive Gaussian Hermite quadrature (QUAD) has become the preferred method for estimating generalized linear mixed models with binary outcomes. However, penalized quasi-likelihood (PQL) is still used frequently. In this work, we systematically evaluated whether matching results from PQL and QUAD indicate less bias in estimated regression coefficients and variance parameters via simulation. METHODS: We performed a simulation study in which we varied the size of the data set, probability of the outcome, variance of the random effect, number of clusters and number of subjects per cluster, etc. We estimated bias in the regression coefficients, odds ratios and variance parameters as estimated via PQL and QUAD. We ascertained if similarity of estimated regression coefficients, odds ratios and variance parameters predicted less bias. RESULTS: Overall, we found that the absolute percent bias of the odds ratio estimated via PQL or QUAD increased as the PQL- and QUAD-estimated odds ratios became more discrepant, though results varied markedly depending on the characteristics of the dataset. CONCLUSIONS: Given how markedly results varied depending on data set characteristics, specifying a rule above which indicated biased results proved impossible. This work suggests that comparing results from generalized linear mixed models estimated via PQL and QUAD is a worthwhile exercise for regression coefficients and variance components obtained via QUAD, in situations where PQL is known to give reasonable results.http://europepmc.org/articles/PMC3886992?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Andrea Benedetti
Robert Platt
Juli Atherton
spellingShingle Andrea Benedetti
Robert Platt
Juli Atherton
Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
PLoS ONE
author_facet Andrea Benedetti
Robert Platt
Juli Atherton
author_sort Andrea Benedetti
title Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
title_short Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
title_full Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
title_fullStr Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
title_full_unstemmed Generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
title_sort generalized linear mixed models for binary data: are matching results from penalized quasi-likelihood and numerical integration less biased?
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description BACKGROUND: Over time, adaptive Gaussian Hermite quadrature (QUAD) has become the preferred method for estimating generalized linear mixed models with binary outcomes. However, penalized quasi-likelihood (PQL) is still used frequently. In this work, we systematically evaluated whether matching results from PQL and QUAD indicate less bias in estimated regression coefficients and variance parameters via simulation. METHODS: We performed a simulation study in which we varied the size of the data set, probability of the outcome, variance of the random effect, number of clusters and number of subjects per cluster, etc. We estimated bias in the regression coefficients, odds ratios and variance parameters as estimated via PQL and QUAD. We ascertained if similarity of estimated regression coefficients, odds ratios and variance parameters predicted less bias. RESULTS: Overall, we found that the absolute percent bias of the odds ratio estimated via PQL or QUAD increased as the PQL- and QUAD-estimated odds ratios became more discrepant, though results varied markedly depending on the characteristics of the dataset. CONCLUSIONS: Given how markedly results varied depending on data set characteristics, specifying a rule above which indicated biased results proved impossible. This work suggests that comparing results from generalized linear mixed models estimated via PQL and QUAD is a worthwhile exercise for regression coefficients and variance components obtained via QUAD, in situations where PQL is known to give reasonable results.
url http://europepmc.org/articles/PMC3886992?pdf=render
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AT juliatherton generalizedlinearmixedmodelsforbinarydataarematchingresultsfrompenalizedquasilikelihoodandnumericalintegrationlessbiased
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