AIMS Symptom-based pretest probability scores that estimate the likelihood of obstructive coronary artery disease (CAD) in stable chest pain have moderate accuracy. We sought to develop a machine learning (ML) model, utilizing clinical factors and the coronary artery calcium score (CACS), to predict the presence of obstructive CAD on coronary computed tomography angiography (CCTA). METHODS AND RESULTS The study screened 35 281 participants enrolled in the CONFIRM registry, who underwent ≥64 detector row CCTA evaluation because of either suspected or previously established CAD. A boosted ensemble algorithm (XGBoost) was used, with data split into a training set (80%) on which 10-fold cross-validation was done and a test set (20%). P...
__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based...
Coronary artery disease (CAD), the most common manifestation of cardiovascular disease, remains the ...
markdownabstract__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive ...
AIMS Symptom-based pretest probability scores that estimate the likelihood of obstructive coronar...
AimsSymptom-based pretest probability scores that estimate the likelihood of obstructive coronary ar...
Abstract Objective We investigated the predictive value of clinical factors combined with coronary a...
Background Machine learning (ML) is able to extract patterns and develop algorithms to construct dat...
Background The Diamond‐Forrester model was used extensively to predict obstructive coronary artery d...
textabstractObjectives:: To validate published prediction models for the presence of obstructive cor...
BackgroundMachine learning (ML) is able to extract patterns and develop algorithms to construct data...
AimsCoronary artery calcium (CAC) scoring is an established tool for cardiovascular risk stratificat...
Developing risk assessment tools for CAD prediction remains challenging nowadays. We developed an ML...
The review presents an analysis of publications on use of machine learning (ML) to assess the pretes...
INTRODUCTION: Machine learning (ML) is a field in computer science that demonstrated to effectively ...
Background: Chronic total occlusion (CTO) remains the most challenging procedure in coronary artery ...
__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based...
Coronary artery disease (CAD), the most common manifestation of cardiovascular disease, remains the ...
markdownabstract__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive ...
AIMS Symptom-based pretest probability scores that estimate the likelihood of obstructive coronar...
AimsSymptom-based pretest probability scores that estimate the likelihood of obstructive coronary ar...
Abstract Objective We investigated the predictive value of clinical factors combined with coronary a...
Background Machine learning (ML) is able to extract patterns and develop algorithms to construct dat...
Background The Diamond‐Forrester model was used extensively to predict obstructive coronary artery d...
textabstractObjectives:: To validate published prediction models for the presence of obstructive cor...
BackgroundMachine learning (ML) is able to extract patterns and develop algorithms to construct data...
AimsCoronary artery calcium (CAC) scoring is an established tool for cardiovascular risk stratificat...
Developing risk assessment tools for CAD prediction remains challenging nowadays. We developed an ML...
The review presents an analysis of publications on use of machine learning (ML) to assess the pretes...
INTRODUCTION: Machine learning (ML) is a field in computer science that demonstrated to effectively ...
Background: Chronic total occlusion (CTO) remains the most challenging procedure in coronary artery ...
__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based...
Coronary artery disease (CAD), the most common manifestation of cardiovascular disease, remains the ...
markdownabstract__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive ...