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 siz...
We discuss in this article methods for analyzing lognormal data that may include zeros. Specifically...
The relative risk and odds ratio are widely used in many fields, including biomedical research, to c...
The goal in stratified medicine is to administer the “best” treatment to a patient. Not all patients...
For binary outcome data from epidemiological studies, this article investigates the interval estimat...
For binary outcome data from epidemiological studies, this article investigates the interval estimat...
i), i = 1,..., k. We consider construction of a confi-dence interval for the common mean µ of these ...
From a public health perspective, measures of the strength of association between exposure to a susp...
Medical studies often involve a comparison between two outcomes, each collected from a sample. The p...
Calculating odds ratios and corresponding confidence intervals for exposures that have been measured...
Some recent articles have discussed biased methods for estimating risk ratios from adjusted odds rat...
The interval estimation of the survival function of the two-parameter exponential distribution on th...
In this article we derive likelihood-based confidence intervals for the risk ratio using over-report...
This paper discusses the classic but still current problem of interval estimation of a binomial prop...
Generalized Confidence Intervals (GCI) can be constructed for cases where an exact confidence interv...
Kaufman et al. compute the 'excess risk' of a disease in the presence of an exposure as the product ...
We discuss in this article methods for analyzing lognormal data that may include zeros. Specifically...
The relative risk and odds ratio are widely used in many fields, including biomedical research, to c...
The goal in stratified medicine is to administer the “best” treatment to a patient. Not all patients...
For binary outcome data from epidemiological studies, this article investigates the interval estimat...
For binary outcome data from epidemiological studies, this article investigates the interval estimat...
i), i = 1,..., k. We consider construction of a confi-dence interval for the common mean µ of these ...
From a public health perspective, measures of the strength of association between exposure to a susp...
Medical studies often involve a comparison between two outcomes, each collected from a sample. The p...
Calculating odds ratios and corresponding confidence intervals for exposures that have been measured...
Some recent articles have discussed biased methods for estimating risk ratios from adjusted odds rat...
The interval estimation of the survival function of the two-parameter exponential distribution on th...
In this article we derive likelihood-based confidence intervals for the risk ratio using over-report...
This paper discusses the classic but still current problem of interval estimation of a binomial prop...
Generalized Confidence Intervals (GCI) can be constructed for cases where an exact confidence interv...
Kaufman et al. compute the 'excess risk' of a disease in the presence of an exposure as the product ...
We discuss in this article methods for analyzing lognormal data that may include zeros. Specifically...
The relative risk and odds ratio are widely used in many fields, including biomedical research, to c...
The goal in stratified medicine is to administer the “best” treatment to a patient. Not all patients...