Automatic thoracic aorta calcium quantification using deep learning in non-contrast ECG-gated CT images.
Federico Nicolás GuileneaMariano E CasciaroGilles SoulatElie MousseauxDamian CraiemPublished in: Biomedical physics & engineering express (2024)
Thoracic aorta calcium (TAC) can be assessed from cardiac computed tomography (CT) studies to improve cardiovascular risk prediction. The aim of this study was to develop a fully automatic system to detect TAC and to evaluate its performance for classifying the patients into four TAC risk categories. The method started by segmenting the thoracic aorta, combining three UNets trained with axial, sagittal and coronal CT images. Afterwards, the surrounding lesion candidates were classified using three combined convolutional neural networks (CNNs) trained with orthogonal patches. Image datasets included 1190 non-enhanced ECG-gated cardiac CT studies from a cohort of cardiovascular patients (age 57 ± 9 years, 80% men, 65% TAC > 0). In the test set (N = 119), the combination of UNets was able to successfully segment the thoracic aorta with a mean volume difference of 0.3 ± 11.7 ml (<6%) and a median Dice coefficient of 0.947. The combined CNNs accurately classified the lesion candidates and 87% of the patients (N = 104) were accurately placed in their corresponding risk categories (Kappa = 0.826, ICC = 0.9915). TAC measurement can be estimated automatically from cardiac CT images using UNets to isolate the thoracic aorta and CNNs to classify calcified lesions.
Keyphrases
- deep learning
- computed tomography
- convolutional neural network
- end stage renal disease
- newly diagnosed
- contrast enhanced
- ejection fraction
- image quality
- spinal cord
- dual energy
- positron emission tomography
- aortic valve
- pulmonary artery
- prognostic factors
- left ventricular
- machine learning
- heart failure
- magnetic resonance
- immune response
- coronary artery
- heart rate variability
- spinal cord injury
- heart rate
- patient reported
- middle aged