Meta-analyses comparing the accuracy of clinical versus actuarial prediction have shown actuarial methods to outperform clinical methods, on average. However, actuarial methods are still not widely used in clinical practice, and there has been a call for the development of actuarial prediction methods for clinical practice. We argue that rule-based methods may be more useful than the linear main effect models usually employed in prediction studies, from a data and decision analytic as well as a practical perspective. In addition, decision rules derived with rule-based methods can be represented as fast and frugal trees, which, unlike main effects models, can be used in a sequential fashion, reducing the number of cues that have to be evalua...
OBJECTIVE: To demonstrate how decision analytic models (DAMs) can be used to quantify impact of usin...
Prediction rule ensembles (PREs) are a relatively new statistical learning method, which aim to stri...
Clinical predictions made by mental health practitioners are compared with those using statistical a...
Meta-analyses comparing the accuracy of clinical versus actuarial prediction have shown actuarial me...
In their meta-analysis of clinical versus statistical prediction models, Ægisdóttir et al. (this iss...
In their meta-analysis of clinical versus statistical prediction models, Ægisdóttir et al. (this iss...
Clinical prediction rules, sometimes called clinical decision rules, have proliferated in recent yea...
Clinical prediction rules (CPRs) that predict the absolute risk of a clinical condition or future ou...
Abstract Depression is a common mental illness with complex and heterogeneous progression dynamics. ...
The purpose of clinical prediction rules is to help physicians use a patient's clinical findings to ...
- A prediction rule is a statistical model that can be used to predict the presence or absence of a ...
This study compared the accuracy of an actuarial procedure for the prediction of community violence ...
Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Th...
Objectives: Identifying an appropriate set of predictors for the outcome of interest is a major chal...
Background: Predicting the onset and course of mood and anxiety disorders is of clinical importance ...
OBJECTIVE: To demonstrate how decision analytic models (DAMs) can be used to quantify impact of usin...
Prediction rule ensembles (PREs) are a relatively new statistical learning method, which aim to stri...
Clinical predictions made by mental health practitioners are compared with those using statistical a...
Meta-analyses comparing the accuracy of clinical versus actuarial prediction have shown actuarial me...
In their meta-analysis of clinical versus statistical prediction models, Ægisdóttir et al. (this iss...
In their meta-analysis of clinical versus statistical prediction models, Ægisdóttir et al. (this iss...
Clinical prediction rules, sometimes called clinical decision rules, have proliferated in recent yea...
Clinical prediction rules (CPRs) that predict the absolute risk of a clinical condition or future ou...
Abstract Depression is a common mental illness with complex and heterogeneous progression dynamics. ...
The purpose of clinical prediction rules is to help physicians use a patient's clinical findings to ...
- A prediction rule is a statistical model that can be used to predict the presence or absence of a ...
This study compared the accuracy of an actuarial procedure for the prediction of community violence ...
Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Th...
Objectives: Identifying an appropriate set of predictors for the outcome of interest is a major chal...
Background: Predicting the onset and course of mood and anxiety disorders is of clinical importance ...
OBJECTIVE: To demonstrate how decision analytic models (DAMs) can be used to quantify impact of usin...
Prediction rule ensembles (PREs) are a relatively new statistical learning method, which aim to stri...
Clinical predictions made by mental health practitioners are compared with those using statistical a...