Generalized Confidence Intervals and Fiducial Intervals for Some Epidemiological Measures

Publication Description
For binary outcome data from epidemiological studies, this article investigates the interval estimation of several measures of interest in the absence or presence of categorical covariates. When covariates are present, the logistic regression model as well as the log-binomial model are investigated. The measures considered include the common odds ratio (OR) from several studies, the number needed to treat (NNT), and the prevalence ratio. For each parameter, confidence intervals are constructed using the concepts of generalized pivotal quantities and fiducial quantities. Numerical results show that the confidence intervals so obtained exhibit satisfactory performance in terms of maintaining the coverage probabilities even when the sample sizes are not large. An appealing feature of the proposed solutions is that they are not based on maximization of the likelihood, and hence are free from convergence issues associated with the numerical calculation of the maximum likelihood estimators, especially in the context of the log-binomial model. The results are illustrated with a number of examples. The overall conclusion is that the proposed methodologies based on generalized pivotal quantities and fiducial quantities provide an accurate and unified approach for the interval estimation of the various epidemiological measures in the context of binary outcome data with or without covariates.

Primary Author
Bebu,Ionut
Luta,George
Mathew,Thomas
Agan,Brian K.

Volume
13

Issue
6

Start Page
605

Publisher
MDPI AG

URL
https://www.ncbi.nlm.nih.gov/pubmed/27322305

PMID
27322305



Reference Type
Journal Article

Periodical Full
International journal of environmental research and public health

Publication Year
2016

Publication Date
Jun 18,

Place of Publication
Switzerland

ISSN/ISBN
1660-4601

Document Object Index
10.3390/ijerph13060605