Lot Quality Assurance Sampling (LQAS) applications in health have generally relied on frequentist interpretations for statistical validity. Yet health professionals often seek statements about the probability distribution of unknown parameters to answer questions of interest. The frequentist paradigm does not pretend to yield such information, although a Bayesian formulation might. This is the source of an error made in a recent paper published in this journal. Many applications lend themselves to a Bayesian treatment, and would benefit from such considerations in their design. We discuss Bayes-LQAS (B-LQAS), which allows for incorporation of prior information into the LQAS classification procedure, and thus shows how to correct the aforeme...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
Measurement error occurs frequently in observational studies investigating the relationship between...
The Bayesian approach to probability and statistics is described, a brief history of Bayesianism is ...
Lot Quality Assurance Sampling (LQAS) is strongly advocated for use in monitoring the health status ...
Traditional lot quality assurance sampling (LQAS) methods require simple random sampling to guarante...
Datasets are rarely a realistic approximation of the target population. Say, prevalence is misrepres...
Measurement error problems in binary regression are of considerable interest among researchers, espe...
There is growing interest in Bayesian clinical trial designs with informative prior distributions, e...
Odds ratios are frequently used for estimating the effect of an exposure on the probability of disea...
It is common in population screening surveys or in the investigation of new diagnostic tests to have...
Selection bias is a massive problem in infectious disease epidemiology that can result in needless m...
This paper considers the design and interpretation of clinical trials comparing treatments for condi...
Bayes factors (BFs) are becoming increasingly important tools in genetic association studies, partly...
In this paper, we present a Bayesian approach to estimate the mean of a binary variable and changes ...
The question of how to test if collected data for a case-control study are misclassified was investi...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
Measurement error occurs frequently in observational studies investigating the relationship between...
The Bayesian approach to probability and statistics is described, a brief history of Bayesianism is ...
Lot Quality Assurance Sampling (LQAS) is strongly advocated for use in monitoring the health status ...
Traditional lot quality assurance sampling (LQAS) methods require simple random sampling to guarante...
Datasets are rarely a realistic approximation of the target population. Say, prevalence is misrepres...
Measurement error problems in binary regression are of considerable interest among researchers, espe...
There is growing interest in Bayesian clinical trial designs with informative prior distributions, e...
Odds ratios are frequently used for estimating the effect of an exposure on the probability of disea...
It is common in population screening surveys or in the investigation of new diagnostic tests to have...
Selection bias is a massive problem in infectious disease epidemiology that can result in needless m...
This paper considers the design and interpretation of clinical trials comparing treatments for condi...
Bayes factors (BFs) are becoming increasingly important tools in genetic association studies, partly...
In this paper, we present a Bayesian approach to estimate the mean of a binary variable and changes ...
The question of how to test if collected data for a case-control study are misclassified was investi...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
Measurement error occurs frequently in observational studies investigating the relationship between...
The Bayesian approach to probability and statistics is described, a brief history of Bayesianism is ...