In epidemiologic research, logistic regression is often used to estimate the odds of some outcome of interest as a function of predictors. However, in some datasets, the outcome of interest is measured with imperfect sensitivity and specificity. It is well known that the misclassification induced by such an imperfect diagnostic test will lead to biased estimates of the odds ratios and their variances. In this paper, the authors show that when the sensitivity and specificity of a diagnostic test are known, it is straightforward to incorporate this information into the fitting of logistic regression models. An EM algorithm that produces unbiased estimates of the odds ratios and their variances is described. The resulting odds ratio estimates ...
[[abstract]]Errors in measurement frequently occur in observing responses. If case–control data are ...
In logistic regression, before concluding that the model fits well, it is crucial that other measure...
textabstractIn his recent textbook "Primer of Biostatistics", S, A, Glantz refers to the nowadays gr...
Abstract: The potential for bias due to misclassification error in regression analysis is well under...
Copyright © 2017 John Wiley & Sons, Ltd. Nonresponses and missing data are common in observational s...
Evaluating the effect of variables on diagnostic measures (sensitivity, specificity, positive, and n...
A commonly used method for confounder selection is to determine the percent difference between the c...
In epidemiological studies, it is one common issue that the collected data may not be perfect due to...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...
In presence of completely or quasi-completely separated data, the maximum likelihood estimates for t...
Missing data are a commonly occurring threat to the validity and efficiency of epidemiologic studies...
Analysts are often required to present results from logistic regressions to non-statisticians. The s...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Logistic regression is perhaps the most widely used method for adjustment of confounding in epidemio...
[[abstract]]Errors in measurement frequently occur in observing responses. If case–control data are ...
In logistic regression, before concluding that the model fits well, it is crucial that other measure...
textabstractIn his recent textbook "Primer of Biostatistics", S, A, Glantz refers to the nowadays gr...
Abstract: The potential for bias due to misclassification error in regression analysis is well under...
Copyright © 2017 John Wiley & Sons, Ltd. Nonresponses and missing data are common in observational s...
Evaluating the effect of variables on diagnostic measures (sensitivity, specificity, positive, and n...
A commonly used method for confounder selection is to determine the percent difference between the c...
In epidemiological studies, it is one common issue that the collected data may not be perfect due to...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...
In presence of completely or quasi-completely separated data, the maximum likelihood estimates for t...
Missing data are a commonly occurring threat to the validity and efficiency of epidemiologic studies...
Analysts are often required to present results from logistic regressions to non-statisticians. The s...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Logistic regression is perhaps the most widely used method for adjustment of confounding in epidemio...
[[abstract]]Errors in measurement frequently occur in observing responses. If case–control data are ...
In logistic regression, before concluding that the model fits well, it is crucial that other measure...
textabstractIn his recent textbook "Primer of Biostatistics", S, A, Glantz refers to the nowadays gr...