In Magnetic resonance imaging
BACKGROUND : 4D flow MRI allows the analysis of hemodynamic changes in the aorta caused by pathologies such as thoracic aortic aneurysms (TAA). For personalized management of TAA, new biomarkers are required to analyze the effect of fluid structure iteration which can be obtained from 4D flow MRI. However, the generation of these biomarkers requires prior 4D segmentation of the aorta.
OBJECTIVE : To develop an automatic deep learning model to segment the aorta in 4D from 4D flow MRI.
METHODS : Segmentation is addressed with a U-Net based segmentation model that treats each 4D flow MRI frame as an independent sample. Performance is measured with respect to Dice score (DS) and Hausdorff distance (HD). In addition, the maximum and minimum surface areas at the level of the ascending aorta are measured and compared with those obtained from cine-MRI.
RESULTS : The segmentation performance was 0.90 ± 0.02 for the DS and the mean HD was 9.58 ± 4.36 mm. A correlation coefficient of r = 0.85 was obtained for the maximum surface and r = 0.86 for the minimum surface between the 4D flow MRI and cine-MRI.
CONCLUSION : The proposed automatic approach of 4D aortic segmentation from 4D flow MRI seems to be accurate enough to contribute to the wider use of this imaging technique in the analysis of pathologies such as TAA.
Marin-Castrillon Diana M, Lalande Alain, Leclerc Sarah, Ambarki Khalid, Morgant Marie-Catherine, Cochet Alexandre, Lin Siyu, Bouchot Olivier, Boucher Arnaud, Presles Benoit
2023-Jan-05
4D flow MRI, Deep learning, Segmentation, Thoracic aortic aneurysm