Background: Chronic total occlusion (CTO) remains the most challenging procedure in coronary artery disease (CAD) for interventional cardiology. Although some clinical risk factors for CAD have been identified, there is no personalized prognosis test available to confidently identify patients at high or low risk for CTO CAD. This investigation aimed to use a machine learning algorithm for clinical features from clinical routine to develop a precision medicine tool to predict CTO before CAG. Methods: Data from 1473 CAD patients were obtained, including 1105 in the training cohort and 368 in the testing cohort. The baseline clinical characteristics were collected. Univariate and multivariate logistic regression analyses were conducted to iden...
The problem of predicting the success of antegrade coronary arteries chronic total occlusion recanal...
BackgroundMachine learning (ML) is able to extract patterns and develop algorithms to construct data...
Nowadays, cardiovascular diseases are very common and are considered as the main cause of morbidity ...
Objectives Chronic total occlusion (CTO) is a form of coronary artery disease (CAD) requiring percut...
AimsSymptom-based pretest probability scores that estimate the likelihood of obstructive coronary ar...
AIMS: Symptom-based pretest probability scores that estimate the likelihood of obstructive coronar...
__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based...
Aims Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based upo...
markdownabstract__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive ...
AimsTraditional prognostic risk assessment in patients undergoing non-invasive imaging is based upon...
Developing risk assessment tools for CAD prediction remains challenging nowadays. We developed an ML...
AIMS Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based up...
Abstract Objective We investigated the predictive value of clinical factors combined with coronary a...
ObjectivesThe aim of this study was to evaluate whether machine learning (ML) of noncontrast compute...
Background Machine learning (ML) is able to extract patterns and develop algorithms to construct dat...
The problem of predicting the success of antegrade coronary arteries chronic total occlusion recanal...
BackgroundMachine learning (ML) is able to extract patterns and develop algorithms to construct data...
Nowadays, cardiovascular diseases are very common and are considered as the main cause of morbidity ...
Objectives Chronic total occlusion (CTO) is a form of coronary artery disease (CAD) requiring percut...
AimsSymptom-based pretest probability scores that estimate the likelihood of obstructive coronary ar...
AIMS: Symptom-based pretest probability scores that estimate the likelihood of obstructive coronar...
__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based...
Aims Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based upo...
markdownabstract__Aims__ Traditional prognostic risk assessment in patients undergoing non-invasive ...
AimsTraditional prognostic risk assessment in patients undergoing non-invasive imaging is based upon...
Developing risk assessment tools for CAD prediction remains challenging nowadays. We developed an ML...
AIMS Traditional prognostic risk assessment in patients undergoing non-invasive imaging is based up...
Abstract Objective We investigated the predictive value of clinical factors combined with coronary a...
ObjectivesThe aim of this study was to evaluate whether machine learning (ML) of noncontrast compute...
Background Machine learning (ML) is able to extract patterns and develop algorithms to construct dat...
The problem of predicting the success of antegrade coronary arteries chronic total occlusion recanal...
BackgroundMachine learning (ML) is able to extract patterns and develop algorithms to construct data...
Nowadays, cardiovascular diseases are very common and are considered as the main cause of morbidity ...