Background Cardiac MRI measurements have diagnostic and prognostic value in the evaluation of cardiopulmonary disease. Artificial intelligence approaches to automate cardiac MRI segmentation are emerging but require clinical testing. Purpose To develop and evaluate a deep learning tool for quantitative evaluation of cardiac MRI functional studies and assess its use for prognosis in patients suspected of having pulmonary hypertension. Materials and Methods A retrospective multicenter and multivendor data set was used to develop a deep learning-based cardiac MRI contouring model using a cohort of patients suspected of having cardiopulmonary disease from multiple pathologic causes. Correlation with same-day right heart catheterization (RHC) an...
Background Global longitudinal shortening (GL‐Shortening) and the mitral annular plane systolic excu...
Purpose: To determine if patient survival and mechanisms of right ventricular (RV) failure in pulmon...
In this review, we describe the technical aspects of artificial intelligence (AI) in cardiac imaging...
Background: Cardiac MRI measurements have diagnostic and prognostic value in the evaluation of cardi...
Background Cardiac MRI measurements have diagnostic and prognostic value in the evaluation of car...
Background and Objectives: Interest in artificial intelligence (AI) for outcome prediction has grown...
Background: Usage of tele - monitoring system of electronic patient record (EHR) and magnetic reason...
Background and Objectives: Interest in artificial intelligence (AI) for outcome prediction has grown...
Recent advances in machine learning have made it possible to create automated systems for medical im...
PurposeTo evaluate the performance of a deep learning (DL) algorithm for clinical measurement of rig...
Chest radiography (CXR) is the most frequently performed radiological test worldwide because of its ...
Machine learning (ML), a subset of artificial intelligence, is showing promising results in cardiolo...
In the era of modern medicine, artificial intelligence (AI) is a growing field of interest which is ...
Cardiovascular disease remains an integral field on which new research in both the biomedical and te...
Background: Right atrial (RA) area predicts mortality in patients with pulmonary hypertension, and i...
Background Global longitudinal shortening (GL‐Shortening) and the mitral annular plane systolic excu...
Purpose: To determine if patient survival and mechanisms of right ventricular (RV) failure in pulmon...
In this review, we describe the technical aspects of artificial intelligence (AI) in cardiac imaging...
Background: Cardiac MRI measurements have diagnostic and prognostic value in the evaluation of cardi...
Background Cardiac MRI measurements have diagnostic and prognostic value in the evaluation of car...
Background and Objectives: Interest in artificial intelligence (AI) for outcome prediction has grown...
Background: Usage of tele - monitoring system of electronic patient record (EHR) and magnetic reason...
Background and Objectives: Interest in artificial intelligence (AI) for outcome prediction has grown...
Recent advances in machine learning have made it possible to create automated systems for medical im...
PurposeTo evaluate the performance of a deep learning (DL) algorithm for clinical measurement of rig...
Chest radiography (CXR) is the most frequently performed radiological test worldwide because of its ...
Machine learning (ML), a subset of artificial intelligence, is showing promising results in cardiolo...
In the era of modern medicine, artificial intelligence (AI) is a growing field of interest which is ...
Cardiovascular disease remains an integral field on which new research in both the biomedical and te...
Background: Right atrial (RA) area predicts mortality in patients with pulmonary hypertension, and i...
Background Global longitudinal shortening (GL‐Shortening) and the mitral annular plane systolic excu...
Purpose: To determine if patient survival and mechanisms of right ventricular (RV) failure in pulmon...
In this review, we describe the technical aspects of artificial intelligence (AI) in cardiac imaging...