Modified Poisson regression, which combines a log Poisson regression model with robust variance estimation, is a useful alternative to log binomial regression for estimating relative risks. Previous studies have shown both analytically and by simulation that modified Poisson regression is appropriate for independent prospective data. This method is often applied to clustered prospective data, despite a lack of evidence to support its use in this setting. The purpose of this article is to evaluate the performance of the modified Poisson regression approach for estimating relative risks from clustered prospective data, by using generalized estimating equations to account for clustering. A simulation study is conducted to compare log binomial ...
Abstract Purpose The purpose of this study is to account for a recent non-mainstream econometric a...
Objective: To demonstrate the use of robust Cox regression in estimating adjusted relative risks (an...
Abstract Background Analyses of multicenter studies often need to account for center clustering to e...
Relative risks have become a popular measure of treatment effect for binary outcomes in randomized c...
Relative risk is usually the parameter of interest in epidemiologic and medical studies. In this pap...
Poisson regression model to prospective studies with correlated binary data GY Zou and Allan Donner ...
Fitting a log binomial model to binary outcome data makes it possible to estimate risk and relative ...
Background: Binary outcomes are common in prospective studies such as randomized controlled trials a...
Abstract Background Log-binomial and robust (modified) Poisson regression models are popular approac...
Background: Binary outcomes have traditionally been analysed using logistic regression which estimat...
This paper studies prediction of future failure (rates) by hierarchical empirical Bayes (EB) Poisson...
A semiparametric Poisson regression is proposed in modeling spatially clustered count data. The hete...
This paper studies prediction of future failure (rates) by hierarchical empirical Bayes (EB) Poisson...
Background: Disadvantages have already been pointed out on the use of odds ratio (OR) as a measure o...
The article of record as published may be found at https://doi.org/10.1080/00949659408811556In this ...
Abstract Purpose The purpose of this study is to account for a recent non-mainstream econometric a...
Objective: To demonstrate the use of robust Cox regression in estimating adjusted relative risks (an...
Abstract Background Analyses of multicenter studies often need to account for center clustering to e...
Relative risks have become a popular measure of treatment effect for binary outcomes in randomized c...
Relative risk is usually the parameter of interest in epidemiologic and medical studies. In this pap...
Poisson regression model to prospective studies with correlated binary data GY Zou and Allan Donner ...
Fitting a log binomial model to binary outcome data makes it possible to estimate risk and relative ...
Background: Binary outcomes are common in prospective studies such as randomized controlled trials a...
Abstract Background Log-binomial and robust (modified) Poisson regression models are popular approac...
Background: Binary outcomes have traditionally been analysed using logistic regression which estimat...
This paper studies prediction of future failure (rates) by hierarchical empirical Bayes (EB) Poisson...
A semiparametric Poisson regression is proposed in modeling spatially clustered count data. The hete...
This paper studies prediction of future failure (rates) by hierarchical empirical Bayes (EB) Poisson...
Background: Disadvantages have already been pointed out on the use of odds ratio (OR) as a measure o...
The article of record as published may be found at https://doi.org/10.1080/00949659408811556In this ...
Abstract Purpose The purpose of this study is to account for a recent non-mainstream econometric a...
Objective: To demonstrate the use of robust Cox regression in estimating adjusted relative risks (an...
Abstract Background Analyses of multicenter studies often need to account for center clustering to e...