We look at the correction for misclassification of possibly corrupted finite count data in epidemiological studies. In general, the misclassification probabilities are estimated from a validation study and used to correct for the distortion. However, most often the validation study is quite small implying that the misclassification probabilities are impossible to calculate or estimate with high variability if based on the multinomial distribution. To increase efficiency, we propose an approach based on the fact that to determine a count the examiner needs to evaluate all items that make up that count, called the double binomial (DB) approach. We suggest various extensions of the DB approach which might mimic better the scoring behaviour of ...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Summary: Poor measurement of explanatory variables occurs frequently in observational studies. Error...
In epidemiological studies, observed data are often collected subject to misclassification errors. I...
Zero-inflated models for count data are becoming quite popular nowadays and are found in many applic...
The main aim of this thesis was to understand more the misclassification process in detecting the pr...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
textabstractCaries experience detection is prone to misclassification. For this reason, calibration ...
<p>The overall misclassification error rate divides the total number of errors by the total number o...
AbstractWe discuss prevalence estimation under misclassification. That is we are concerned with the ...
Dental caries is a highly prevalent disease affecting the tooth's hard tissues by acid-forming bacte...
There are many epidemiologic studies to find the relationship between disease occurrence and categor...
Several standard methods are available to analyze and estimate parameters of count data. None of the...
Covariate misclassification is well known to yield biased estimates in single level regression model...
Purpose: Misclassification of a binary outcome can introduce bias in estimation of the odds-ratio as...
In epidemiologic studies, measurement error in the exposure variable can have large effects on the p...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Summary: Poor measurement of explanatory variables occurs frequently in observational studies. Error...
In epidemiological studies, observed data are often collected subject to misclassification errors. I...
Zero-inflated models for count data are becoming quite popular nowadays and are found in many applic...
The main aim of this thesis was to understand more the misclassification process in detecting the pr...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
textabstractCaries experience detection is prone to misclassification. For this reason, calibration ...
<p>The overall misclassification error rate divides the total number of errors by the total number o...
AbstractWe discuss prevalence estimation under misclassification. That is we are concerned with the ...
Dental caries is a highly prevalent disease affecting the tooth's hard tissues by acid-forming bacte...
There are many epidemiologic studies to find the relationship between disease occurrence and categor...
Several standard methods are available to analyze and estimate parameters of count data. None of the...
Covariate misclassification is well known to yield biased estimates in single level regression model...
Purpose: Misclassification of a binary outcome can introduce bias in estimation of the odds-ratio as...
In epidemiologic studies, measurement error in the exposure variable can have large effects on the p...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Summary: Poor measurement of explanatory variables occurs frequently in observational studies. Error...
In epidemiological studies, observed data are often collected subject to misclassification errors. I...