Diagnostic testing is essential to distinguish non-diseased individuals from diseased individuals. More accurate tests lead to improved treatment and thus reduce medical mistakes. The sensitivity and specificity are two important measurements for the diagnostic accuracy of a diagnostic test. When the test results are continuous, it is of interest to construct a confidence interval for the sensitivity at a fixed level of specificity for the test. In this thesis, we propose three empirical likelihood intervals for the sensitivity. Simulation studies are conducted to compare the empirical likelihood based confidence intervals with the existing normal approximation based confidence interval. Our studies show that the new intervals had better co...
The evaluation of the ability of a diagnostic test to separate diseaded from non-diseaded subjects i...
Diagnostic tests are used to identify subjects with and without disease. In a previous article in th...
When outcome data in a clinical trial are clustered and binary, such as in a trial estimating the sp...
Diagnostic testing is essential to distinguish non-diseased individuals from diseased individuals. T...
For a continuous-scale test, it is an interest to construct a confidence interval for the sensitivit...
Diagnostic testing is essential to distinguish non-diseased individuals from diseased individuals. T...
For two continuous-scale diagnostic tests, it is of interest to compare their sensitivities at a pre...
The accuracy of a binary-scale diagnostic test can be represented by sensitivity (Se), specificity ...
The evaluation of the ability of a diagnostic test to separate diseased subjects from nondiseased s...
The evaluation of the ability of a diagnostic test to separate diseased subjects from nondiseased s...
The evaluation of the ability of a diagnostic test to separate diseased subjects from nondiseased su...
none2noThe evaluation of the ability of a diagnostic test to separate diseased subjects from nondise...
Objective: To assist clinicians and other health-care providers to understand the terms used to desc...
New methods are proposed that provide approximate joint confidence regions for the optimal sensitivi...
For a continuous-scale diagnostic test, the most commonly used summary index of the receiver operati...
The evaluation of the ability of a diagnostic test to separate diseaded from non-diseaded subjects i...
Diagnostic tests are used to identify subjects with and without disease. In a previous article in th...
When outcome data in a clinical trial are clustered and binary, such as in a trial estimating the sp...
Diagnostic testing is essential to distinguish non-diseased individuals from diseased individuals. T...
For a continuous-scale test, it is an interest to construct a confidence interval for the sensitivit...
Diagnostic testing is essential to distinguish non-diseased individuals from diseased individuals. T...
For two continuous-scale diagnostic tests, it is of interest to compare their sensitivities at a pre...
The accuracy of a binary-scale diagnostic test can be represented by sensitivity (Se), specificity ...
The evaluation of the ability of a diagnostic test to separate diseased subjects from nondiseased s...
The evaluation of the ability of a diagnostic test to separate diseased subjects from nondiseased s...
The evaluation of the ability of a diagnostic test to separate diseased subjects from nondiseased su...
none2noThe evaluation of the ability of a diagnostic test to separate diseased subjects from nondise...
Objective: To assist clinicians and other health-care providers to understand the terms used to desc...
New methods are proposed that provide approximate joint confidence regions for the optimal sensitivi...
For a continuous-scale diagnostic test, the most commonly used summary index of the receiver operati...
The evaluation of the ability of a diagnostic test to separate diseaded from non-diseaded subjects i...
Diagnostic tests are used to identify subjects with and without disease. In a previous article in th...
When outcome data in a clinical trial are clustered and binary, such as in a trial estimating the sp...