Background: Decision curve analysis is a method to evaluate prediction models and diagnostic tests that was introduced in a 2006 publication. Decision curves are now commonly reported in the literature, but there remains widespread misunderstanding of and confusion about what they mean. Summary of commentary: In this paper, we present a didactic, step-by-step introduction to interpreting a decision curve analysis and answer some common questions about the method. We argue that many of the difficulties with interpreting decision curves can be solved by relabeling the y-axis as "benefit" and the x-axis as "preference." A model or test can be recommended for clinical use if it has the highest level of benefit across a range of clinically reaso...
Test-indication curves (TiCs) are tools for determining whether a test is indicated for a given pati...
Objective: The lack of a standard methodology in diagnostic research impedes adequate evaluation bef...
Decision curve analysis can be used to determine whether a personalized model for treatment benefit ...
Multivariable regression models are widely used in medical literature for the purpose of diagnosis o...
Abstract Background Decision curve analysis is a novel method for evaluating diagnostic tests, predi...
Background. Diagnostic and prognostic models are typi-cally evaluated with measures of accuracy that...
BACKGROUND: A number of recent papers have proposed methods to calculate confidence intervals and p ...
ABSTRACT: BACKGROUND: Decision curve analysis has been introduced as a method to evaluate prediction...
CONTEXT: Urologists regularly develop clinical risk prediction models to support clinical decisions....
<p>Decision curve analysis of the Full Model (dashed line black line) and Reduced Model (blue solid ...
BACKGROUND: Prediction models are essential to the development of prediction rules that guide decisi...
This paper is the fourth of a five-part series that describes the principles of construction and eva...
(A) Calibration curve plot in the training set, and the solid lines indicate the performance of the ...
As clinical decision making gets ever more complex, new analytical approaches are being developed to...
Many real world decisions have to be made on a limited evidence base, and clinical decisions are at ...
Test-indication curves (TiCs) are tools for determining whether a test is indicated for a given pati...
Objective: The lack of a standard methodology in diagnostic research impedes adequate evaluation bef...
Decision curve analysis can be used to determine whether a personalized model for treatment benefit ...
Multivariable regression models are widely used in medical literature for the purpose of diagnosis o...
Abstract Background Decision curve analysis is a novel method for evaluating diagnostic tests, predi...
Background. Diagnostic and prognostic models are typi-cally evaluated with measures of accuracy that...
BACKGROUND: A number of recent papers have proposed methods to calculate confidence intervals and p ...
ABSTRACT: BACKGROUND: Decision curve analysis has been introduced as a method to evaluate prediction...
CONTEXT: Urologists regularly develop clinical risk prediction models to support clinical decisions....
<p>Decision curve analysis of the Full Model (dashed line black line) and Reduced Model (blue solid ...
BACKGROUND: Prediction models are essential to the development of prediction rules that guide decisi...
This paper is the fourth of a five-part series that describes the principles of construction and eva...
(A) Calibration curve plot in the training set, and the solid lines indicate the performance of the ...
As clinical decision making gets ever more complex, new analytical approaches are being developed to...
Many real world decisions have to be made on a limited evidence base, and clinical decisions are at ...
Test-indication curves (TiCs) are tools for determining whether a test is indicated for a given pati...
Objective: The lack of a standard methodology in diagnostic research impedes adequate evaluation bef...
Decision curve analysis can be used to determine whether a personalized model for treatment benefit ...