Aims: Multivariable prediction models can be used to estimate risk of incident heart failure (HF) in the general population. A systematic review and meta-analysis was performed to determine the performance of models. Methods and Results: From inception to 3rd November 2022 MEDLINE and EMBASE databases were searched for studies of multivariable models derived, validated and/or augmented for HF prediction in community-based cohorts. Discrimination measures for models with c-statistic data from ≥3 cohorts were pooled by Bayesian meta-analysis, with Powered by Editorial Manager® and ProduXion Manager® from Aries Systems Corporation heterogeneity assessed through a 95% prediction interval (PI). Risk of bias was assessed using PROBAST. We ...
International audienceBackground Clinical prediction models have been developed for hospitalization ...
OBJECTIVES: This study sought to review the literature for risk prediction models in patients with h...
International audienceBackground Clinical prediction models have been developed for hospitalization ...
Background: Numerous models predicting the risk of incident heart failure (HF) have been developed; ...
© 2017 Elsevier Inc. Background Numerous models predicting the risk of incident heart failure (HF) ...
BACKGROUND:The ability to predict risk allows healthcare providers to propose which patients might b...
Objectives: This study sought to review the literature for risk prediction models in patients wit...
Objectives: This study sought to review the literature for risk prediction models in patients wit...
Objectives: This study sought to review the literature for risk prediction models in patients with h...
IntroductionA considerable number of risk models, which predict outcomes in mortality and readmissio...
Objective: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in t...
OBJECTIVE: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in t...
OBJECTIVE: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in t...
Objectives This study sought to review the literature for risk prediction models in patients with he...
OBJECTIVES: This study sought to review the literature for risk prediction models in patients with h...
International audienceBackground Clinical prediction models have been developed for hospitalization ...
OBJECTIVES: This study sought to review the literature for risk prediction models in patients with h...
International audienceBackground Clinical prediction models have been developed for hospitalization ...
Background: Numerous models predicting the risk of incident heart failure (HF) have been developed; ...
© 2017 Elsevier Inc. Background Numerous models predicting the risk of incident heart failure (HF) ...
BACKGROUND:The ability to predict risk allows healthcare providers to propose which patients might b...
Objectives: This study sought to review the literature for risk prediction models in patients wit...
Objectives: This study sought to review the literature for risk prediction models in patients wit...
Objectives: This study sought to review the literature for risk prediction models in patients with h...
IntroductionA considerable number of risk models, which predict outcomes in mortality and readmissio...
Objective: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in t...
OBJECTIVE: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in t...
OBJECTIVE: To provide an overview of prediction models for risk of cardiovascular disease (CVD) in t...
Objectives This study sought to review the literature for risk prediction models in patients with he...
OBJECTIVES: This study sought to review the literature for risk prediction models in patients with h...
International audienceBackground Clinical prediction models have been developed for hospitalization ...
OBJECTIVES: This study sought to review the literature for risk prediction models in patients with h...
International audienceBackground Clinical prediction models have been developed for hospitalization ...