Abstract Background Many measures of prediction accuracy have been developed. However, the most popular ones in typical medical outcome prediction settings require additional investigation of calibration. Methods We show how rescaling the Brier score produces a measure that combines discrimination and calibration in one value and improves interpretability by adjusting for a benchmark model. We have called this measure the index of prediction accuracy (IPA). The IPA permits a common interpretation across binary, time to event, and competing risk outcomes. We illustrate this measure using example datasets. Results The IPA is simple to compute, and example code is provided. The values of the IPA appear very interpretable. Conclusions IPA shoul...
This chapter describes and critiques methods for evaluating the performance of markers to predict ri...
<div><p>As a performance measure for a prediction model, the area under the receiver operating chara...
BackgroundGuidelines recommend that clinicians use clinical prediction models to estimate future ris...
Public health practice and quality of medical care rely heavily on the accuracy, precision, and robu...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Prediction performance of a risk scoring system needs to be carefully assessed before its adoption i...
Background. Risk prediction models can be used as an aid when determining patient management. Becaus...
Objective: Calibrated risk models are vital for valid decision support. We define four levels of cal...
Prediction models are becoming more and more important in medicine and cardiology. Nowadays, specifi...
There has been a significantly increased interest in the adoption of prediction modelingby many dise...
OBJECTIVES: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Decision-analytic measures to assess clinical utility of prediction models and diagnostic tests inco...
Objective Measurement error in predictor variables may threaten the validity of clinical prediction ...
Background: The assessment of calibration performance of risk prediction models based on regression ...
This chapter describes and critiques methods for evaluating the performance of markers to predict ri...
<div><p>As a performance measure for a prediction model, the area under the receiver operating chara...
BackgroundGuidelines recommend that clinicians use clinical prediction models to estimate future ris...
Public health practice and quality of medical care rely heavily on the accuracy, precision, and robu...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Prediction performance of a risk scoring system needs to be carefully assessed before its adoption i...
Background. Risk prediction models can be used as an aid when determining patient management. Becaus...
Objective: Calibrated risk models are vital for valid decision support. We define four levels of cal...
Prediction models are becoming more and more important in medicine and cardiology. Nowadays, specifi...
There has been a significantly increased interest in the adoption of prediction modelingby many dise...
OBJECTIVES: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Decision-analytic measures to assess clinical utility of prediction models and diagnostic tests inco...
Objective Measurement error in predictor variables may threaten the validity of clinical prediction ...
Background: The assessment of calibration performance of risk prediction models based on regression ...
This chapter describes and critiques methods for evaluating the performance of markers to predict ri...
<div><p>As a performance measure for a prediction model, the area under the receiver operating chara...
BackgroundGuidelines recommend that clinicians use clinical prediction models to estimate future ris...