Background: We have previously shown that the machine learning methodology of optimal classification trees (OCTs) can accurately predict risk after congenital heart surgery (CHS). We have now applied this methodology to define benchmarking standards after CHS, permitting case-adjusted hospital-specific performance evaluation. Methods: The European Congenital Heart Surgeons Association Congenital Database data subset (31 792 patients) who had undergone any of the 10 “benchmark procedure group” primary procedures were analyzed. OCT models were built predicting hospital mortality (HM), and prolonged postoperative mechanical ventilatory support time (MVST) or length of hospital stay (LOS), thereby establishing case-adjusted benchmarking standa...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
<div><p>Background</p><p>The benefits of cardiac surgery are sometimes difficult to predict and the ...
Importance: A variety of perioperative risk factors are associated with postoperative mortality risk...
Objective: Risk assessment tools typically used in congenital heart surgery (CHS) assume that variou...
BackgroundCongenital heart disease accounts for almost a third of all major congenital anomalies. Co...
Background and objective: In this paper, we have tested the suitability of using different artificia...
Objective: We sought to several develop parsimonious machine learning (ML) models to predict resourc...
ObjectiveAnalysis of congenital heart surgery results requires a reliable method of estimating the r...
The Norwood surgical procedure restores functional systemic circulation in neonatal patients with si...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...
Objectives: Heterogeneous caseload and poorly quantified risk stratification make it difficult to mo...
Abstract Background and Objective: Machine learning and artificial intelligence are useful tools to...
Aims: To assess the utility of machine learning algorithms on estimating prognosis and guiding thera...
Data is accumulating at an exponential pace and machine learning transforms how humans interact with...
Patients affected by coronary artery obstruction, generally undergo aortocoronary bypass, an open-he...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
<div><p>Background</p><p>The benefits of cardiac surgery are sometimes difficult to predict and the ...
Importance: A variety of perioperative risk factors are associated with postoperative mortality risk...
Objective: Risk assessment tools typically used in congenital heart surgery (CHS) assume that variou...
BackgroundCongenital heart disease accounts for almost a third of all major congenital anomalies. Co...
Background and objective: In this paper, we have tested the suitability of using different artificia...
Objective: We sought to several develop parsimonious machine learning (ML) models to predict resourc...
ObjectiveAnalysis of congenital heart surgery results requires a reliable method of estimating the r...
The Norwood surgical procedure restores functional systemic circulation in neonatal patients with si...
Background: Machine learning (ML) is increasingly being applied in Cardiology to predict outcomes an...
Objectives: Heterogeneous caseload and poorly quantified risk stratification make it difficult to mo...
Abstract Background and Objective: Machine learning and artificial intelligence are useful tools to...
Aims: To assess the utility of machine learning algorithms on estimating prognosis and guiding thera...
Data is accumulating at an exponential pace and machine learning transforms how humans interact with...
Patients affected by coronary artery obstruction, generally undergo aortocoronary bypass, an open-he...
Machine learning approaches were introduced for better or comparable predictive ability than statist...
<div><p>Background</p><p>The benefits of cardiac surgery are sometimes difficult to predict and the ...
Importance: A variety of perioperative risk factors are associated with postoperative mortality risk...