The two-test two-population model, originally formulated by Hui and Walter, for estimation of test accuracy and prevalence estimation assumes conditionally independent tests, constant accuracy across populations and binomial sampling. The binomial assumption is incorrect if all individuals in a population e.g. child-care centre, village in Africa, or a cattle herd are sampled or if the sample size is large relative to population size. In this paper, we develop statistical methods for evaluating diagnostic test accuracy and prevalence estimation based on finite sample data in the absence of a gold standard. Moreover, two tests are often applied simultaneously for the purpose of obtaining a 'joint' testing strategy that has either h...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
A model is presented to evaluate the accuracy of diagnostic tests from data from individuals that ar...
The prevalence of disease in many populations is often low. For example, the prevalence of tuberculo...
When a confirmatory test is completely accurate or has known low error rates, the sensitivity and th...
A common problem in medical research is the estimation of the prevalence of a disease in a given pop...
Background The sample size required to power a study to a nominal level in a paired comparative diag...
Abstract Background The sample size required to power a study to a nominal level in a paired compara...
It is common in population screening surveys or in the investigation of new diagnostic tests to have...
It is common in population screening surveys or in the investigation of new diagnostic tests to have...
Bayesian analyses of diagnostic test accuracy often require the assumption of constant test accuracy...
The problem of hypothesis testing about proportions in two -nite populationsis addressed.The usual t...
Background: The sample size required to power a study to a nominal level in a paired comparative dia...
Abstract: Since most secreening tests are not 100 % accurate, the proportion of subjects screened po...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
A model is presented to evaluate the accuracy of diagnostic tests from data from individuals that ar...
The prevalence of disease in many populations is often low. For example, the prevalence of tuberculo...
When a confirmatory test is completely accurate or has known low error rates, the sensitivity and th...
A common problem in medical research is the estimation of the prevalence of a disease in a given pop...
Background The sample size required to power a study to a nominal level in a paired comparative diag...
Abstract Background The sample size required to power a study to a nominal level in a paired compara...
It is common in population screening surveys or in the investigation of new diagnostic tests to have...
It is common in population screening surveys or in the investigation of new diagnostic tests to have...
Bayesian analyses of diagnostic test accuracy often require the assumption of constant test accuracy...
The problem of hypothesis testing about proportions in two -nite populationsis addressed.The usual t...
Background: The sample size required to power a study to a nominal level in a paired comparative dia...
Abstract: Since most secreening tests are not 100 % accurate, the proportion of subjects screened po...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
Double sampling is usually applied to collecting disease information of individuals for situations, ...
A model is presented to evaluate the accuracy of diagnostic tests from data from individuals that ar...
The prevalence of disease in many populations is often low. For example, the prevalence of tuberculo...