textabstractThe performance of a diagnostic test is often expressed in terms of sensitivity and specificity compared with the reference standard. Calculations of sensitivity and specificity commonly involve multiple observations per patient, which implies that the data are clustered. Whether analysis of sensitivity and specificity per patient or using multiple observations per patient is preferable depends on the clinical context and consequences. The purpose of this article was to discuss and illustrate the most common statistical methods that calculate sensitivity and specificity of clustered data, adjusting for the possible correlation between observations within each patient. This tutorial presents and illustrates the following methods:...
We consider modeling the dependence of sensitivity and specificity on the disease prevalence in diag...
Sensitivity and specificity are two customary performance measures associated with medical diagnosti...
Abstract Background Sensitivity analyses play a cruci...
The performance of a diagnostic test is often expressed in terms of sensitivity and specificity comp...
The performance of a diagnostic test is often expressed in terms of sensitivity and specificity comp...
Through simulation studies, statistical methods were evaluated and methodological recommendations we...
Objective: To assist clinicians and other health-care providers to understand the terms used to desc...
In this paper, we demonstrate the importance of conducting well-thought-out sensitivity analyses for...
Abstract. Clustered treatment assignment occurs when individuals are grouped into clusters prior to ...
Sensitivity analysis to test for effect of relatedness on associations with prevalent disease states...
<p>Sensitivity and specificity for the identification of clustering of two or more risk factors of M...
Because not every scientific question on effectiveness can be answered with randomised controlled tr...
<p>The theoretical sensitivity is the likelihood of sensitivity of the clinical rule after combining...
Sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV) are te...
Sensitivity analysis to test for effect of relatedness on associations with incident disease states....
We consider modeling the dependence of sensitivity and specificity on the disease prevalence in diag...
Sensitivity and specificity are two customary performance measures associated with medical diagnosti...
Abstract Background Sensitivity analyses play a cruci...
The performance of a diagnostic test is often expressed in terms of sensitivity and specificity comp...
The performance of a diagnostic test is often expressed in terms of sensitivity and specificity comp...
Through simulation studies, statistical methods were evaluated and methodological recommendations we...
Objective: To assist clinicians and other health-care providers to understand the terms used to desc...
In this paper, we demonstrate the importance of conducting well-thought-out sensitivity analyses for...
Abstract. Clustered treatment assignment occurs when individuals are grouped into clusters prior to ...
Sensitivity analysis to test for effect of relatedness on associations with prevalent disease states...
<p>Sensitivity and specificity for the identification of clustering of two or more risk factors of M...
Because not every scientific question on effectiveness can be answered with randomised controlled tr...
<p>The theoretical sensitivity is the likelihood of sensitivity of the clinical rule after combining...
Sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV) are te...
Sensitivity analysis to test for effect of relatedness on associations with incident disease states....
We consider modeling the dependence of sensitivity and specificity on the disease prevalence in diag...
Sensitivity and specificity are two customary performance measures associated with medical diagnosti...
Abstract Background Sensitivity analyses play a cruci...