AIMS: Adequate risk prediction can optimize the clinical management in adult congenital heart disease (ACHD). We aimed to update and subsequently validate a previously developed ACHD risk prediction model. METHODS AND RESULTS: A prediction model was developed in a prospective cohort study including 602 moderately or severely complex ACHD patients, enrolled as outpatients at a tertiary centre in the Netherlands (2011-2013). Multivariable Cox regression was used to develop a model for predicting the 1-year risks of death, heart failure (HF), or arrhythmia (primary endpoint). The Boston ACHD Biobank study, a prospectively enrolled cohort (n = 749) of outpatients who visited a referral centre in Boston (2012-2017), was used for external validat...
Background In-hospital mortality is a rare, yet feared complication following cardiac surgery in adu...
Aims The risk of infective endocarditis (IE) in adults with congenital heart disease is known to be ...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...
[Objectives] To develop, calibrate, test and validate a logistic regression model for accurate risk ...
Background: Sudden cardiac death (SCD) is the main preventable cause of death in patients with adult...
BACKGROUND Sudden cardiac death (SCD) is the main preventable cause of death in patients with adult ...
Background: Risk assessment in the expanding population of adult patients with congenital heart dise...
Background Risk stratification for adults with congenital heart disease is usually based on the anat...
Background: Risk standardization for adverse events after congenital cardiac catheterization is need...
This thesis aimed to establish novel prognostic tools that can be used for the risk stratification o...
University of Minnesota Ph.D. dissertation. May 2013. Major: Health Informatics. Advisor:Professor S...
BACKGROUND:The ability to predict risk allows healthcare providers to propose which patients might b...
BackgroundPatients with congenital heart disease are frequently surviving into adulthood, and many o...
Background: Congenital heart disease (CHD) is a relatively common disorder in childhood, affecting a...
BACKGROUND Sudden cardiac death (SCD) is the main preventable cause of death in patients with adult ...
Background In-hospital mortality is a rare, yet feared complication following cardiac surgery in adu...
Aims The risk of infective endocarditis (IE) in adults with congenital heart disease is known to be ...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...
[Objectives] To develop, calibrate, test and validate a logistic regression model for accurate risk ...
Background: Sudden cardiac death (SCD) is the main preventable cause of death in patients with adult...
BACKGROUND Sudden cardiac death (SCD) is the main preventable cause of death in patients with adult ...
Background: Risk assessment in the expanding population of adult patients with congenital heart dise...
Background Risk stratification for adults with congenital heart disease is usually based on the anat...
Background: Risk standardization for adverse events after congenital cardiac catheterization is need...
This thesis aimed to establish novel prognostic tools that can be used for the risk stratification o...
University of Minnesota Ph.D. dissertation. May 2013. Major: Health Informatics. Advisor:Professor S...
BACKGROUND:The ability to predict risk allows healthcare providers to propose which patients might b...
BackgroundPatients with congenital heart disease are frequently surviving into adulthood, and many o...
Background: Congenital heart disease (CHD) is a relatively common disorder in childhood, affecting a...
BACKGROUND Sudden cardiac death (SCD) is the main preventable cause of death in patients with adult ...
Background In-hospital mortality is a rare, yet feared complication following cardiac surgery in adu...
Aims The risk of infective endocarditis (IE) in adults with congenital heart disease is known to be ...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...