OBJECTIVES The aim of this study was to test whether texture analysis and machine learning enable the detection of myocardial infarction (MI) on non-contrast-enhanced low radiation dose cardiac computed tomography (CCT) images. MATERIALS AND METHODS In this institutional review board-approved retrospective study, we included non-contrast-enhanced electrocardiography-gated low radiation dose CCT image data (effective dose, 0.5 mSv) acquired for the purpose of calcium scoring of 27 patients with acute MI (9 female patients; mean age, 60 ± 12 years), 30 patients with chronic MI (8 female patients; mean age, 68 ± 13 years), and in 30 subjects (9 female patients; mean age, 44 ± 6 years) without cardiac abnormality, hereafter termed controls. ...
AimsDiagnosis of myocardial fibrosis is commonly performed with late gadolinium contrast-enhanced (C...
Background and aims: Artificial intelligence (AI) is increasing its role in diagnosis of patients wi...
During the latest years, artificial intelligence, and especially machine learning (ML), have experie...
OBJECTIVES The aim of this study was to test whether texture analysis and machine learning enable t...
Background: Novel imaging and analysis techniques may offer the ability to detect noncalcified or hi...
Purpose To test whether texture analysis (TA) allows for the diagnosis of subacute and chronic myoca...
Objective: Robust differentiation between infarcted and normal tissue is important for clinical diag...
Objective To investigate the feasibility and accuracy of texture analysis to distinguish through ob...
OBJECTIVE: To investigate the feasibility and accuracy of texture analysis to distinguish through ob...
Abstract Background To explore the characteristics of myocardial textures on coronary computed tomog...
Cardiovascular diseases (CVDs), including coronary artery disease (CAD) and congenital heart disease...
To investigate the feasibility and accuracy of texture analysis to distinguish through objective and...
OBJECTIVES To compare texture analysis (TA) with subjective visual diagnosis of myocardial infarcti...
PURPOSE To test in a first proof-of-concept study whether texture analysis (TA) allows for the dete...
[EN] The purpose of this study was to differentiate acute from chronic myocardial infarction using m...
AimsDiagnosis of myocardial fibrosis is commonly performed with late gadolinium contrast-enhanced (C...
Background and aims: Artificial intelligence (AI) is increasing its role in diagnosis of patients wi...
During the latest years, artificial intelligence, and especially machine learning (ML), have experie...
OBJECTIVES The aim of this study was to test whether texture analysis and machine learning enable t...
Background: Novel imaging and analysis techniques may offer the ability to detect noncalcified or hi...
Purpose To test whether texture analysis (TA) allows for the diagnosis of subacute and chronic myoca...
Objective: Robust differentiation between infarcted and normal tissue is important for clinical diag...
Objective To investigate the feasibility and accuracy of texture analysis to distinguish through ob...
OBJECTIVE: To investigate the feasibility and accuracy of texture analysis to distinguish through ob...
Abstract Background To explore the characteristics of myocardial textures on coronary computed tomog...
Cardiovascular diseases (CVDs), including coronary artery disease (CAD) and congenital heart disease...
To investigate the feasibility and accuracy of texture analysis to distinguish through objective and...
OBJECTIVES To compare texture analysis (TA) with subjective visual diagnosis of myocardial infarcti...
PURPOSE To test in a first proof-of-concept study whether texture analysis (TA) allows for the dete...
[EN] The purpose of this study was to differentiate acute from chronic myocardial infarction using m...
AimsDiagnosis of myocardial fibrosis is commonly performed with late gadolinium contrast-enhanced (C...
Background and aims: Artificial intelligence (AI) is increasing its role in diagnosis of patients wi...
During the latest years, artificial intelligence, and especially machine learning (ML), have experie...