Elsevier

Journal of Cardiovascular Magnetic Resonance

Available online 11 June 2025, 101923
Journal of Cardiovascular Magnetic Resonance

Original research
Automated Segmentation of Thoracic Aortic Lumen and Vessel Wall on 3D Bright- and Black-Blood MRI using nnU-Net

https://doi.org/10.1016/j.jocmr.2025.101923Get rights and content
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Abstract

Background

Magnetic resonance angiography (MRA) is an important tool for aortic assessment in several cardiovascular diseases. Assessment of MRA images relies on manual segmentation; a time-intensive process that is subject to operator variability. We aimed to optimize and validate two deep-learning models for automatic segmentation of the aortic lumen and vessel wall in high-resolution ECG-triggered free-breathing respiratory motion-corrected 3D bright- and black-blood MRA images.

Methods

Manual segmentation, serving as the ground truth, was performed on 25 bright-blood and 15 black-blood 3D MRA image sets acquired with the iT2PrepIR-BOOST sequence (1.5T) in thoracic aortopathy patients. The training was performed with nnU-Net for bright-blood (lumen) and black-blood image sets (lumen and vessel wall). Training consisted of a 70:20:10% training: validation: testing split. Inference was run on datasets (single vendor) from different centres (UK, Spain, and Australia), sequences (iT2PrepIR-BOOST, T2 prepared CMRA, and TWIST MRA), acquired resolutions (from 0.9 mm3 to 3 mm3), and field strengths (0.55T, 1.5T, and 3T). Predictive measurements comprised Dice Similarity Coefficient (DSC), and Intersection over Union (IoU). Postprocessing (3D slicer) included centreline extraction, diameter measurement, and curved planar reformatting (CPR).

Results

The optimal configuration was the 3D U-Net. Bright blood segmentation at 1.5T on iT2PrepIR-BOOST datasets (1.3 and 1.8 mm3) and 3D CMRA datasets (0.9 mm3) resulted in DSC ≥ 0.96 and IoU ≥ 0.92. For bright-blood segmentation on 3D CMRA at 0.55T, the nnUNet achieved DSC and IoU scores of 0.93 and 0.88 at 1.5 mm³, and 0.68 and 0.52 at 3.0 mm³, respectively. DSC and IoU scores of 0.89 and 0.82 were obtained for CMRA image sets (1 mm3) at 1.5T (Barcelona dataset). DSC and IoU score of the BRnnUNet model were 0.90 and 0.82 respectively for the contrast-enhanced dataset (TWIST MRA). Lumen segmentation on black blood 1.5T iT2PrepIR-BOOST image sets achieved DSC ≥ 0.95 and IoU ≥ 0.90, and vessel wall segmentation resulted in DSC ≥ 0.80 and IoU ≥ 0.67. Automated centreline tracking, diameter measurement and CPR were successfully implemented in all subjects.

Conclusion

Automated aortic lumen and wall segmentation on 3D bright- and black-blood image sets demonstrated excellent agreement with ground truth. This technique demonstrates a fast and comprehensive assessment of aortic morphology with great potential for future clinical application in various cardiovascular diseases.

Abbreviation

2D/3D/4D
2/3/4 dimensional
AA
Aortic Aneurysm(s)
AAA
Abdominal Aortic Aneurysm(s)
BAV
Bicuspid Aortic Valve
BLnnUNet
Black blood nnUNet model trained to segment aortic lumen and wall
BRnnUNet
Bright blood nnUNet model trained to segment aortic lumen
bSSFP
balanced Steady State Free Precession
c-AAL
classical-Ascending Aortic Length
CE
Contrast Enhanced
CMRA
Coronary Magnetic Resonance Angiography
CNN
Convolutional Neural Network
CPR
Curved Planar Reformat
CSA
Cross-Sectional Area
CTA
Computed Tomography Angiography
DL
Deep Learning
e-AAL
extended-Ascending Aortic Length
GT
Ground Truth
GUI
Guided User Interface
HASTE
Half-Fourier Acquisition Single-shot Turbo spin Echo imaging
IMH
Intramural Hematoma
IN
Instance Normalization
iNAVs
Image Navigators
IR
Inversion Recovery
LCE
Cross-Entropy Loss
LDICE
Dice Loss
Leaky ReLU
Leaky Rectified Linear Units
LGE
Late Gadolinium Enhancement
MITK
Medical Imaging Interaction Toolkit
MRA
Magnetic Resonance Angiography
MRI
Magnetic Resonance Imaging
nnUNet
No New U-Net
PAU
Penetrating Aortic Ulcer(s)
T1-w
T1 weighted
T2-Prep
T2 Preparation
TAA
Thoracic Aortic Aneurysm(s)
TAI
Traumatic Aortic Injury
TI
Inversion Time
TTE
Transthoracic Echocardiography
TWIST
Time-resolved angiography With Interleaved Stochastic Trajectories

Keywords

Aorta
Aortic Disease
Magnetic Resonance Angiography
Segmentation
Deep-Learning
nnU-Net

Data Availability

The current ethics do not allow for data sharing.

Cited by (0)

1
Matteo Cesario present address: b, c.