Deep Learning-Based Analysis of Aortic Morphology From Three-Dimensional MRI

被引:1
|
作者
Guo, Jia [2 ,3 ]
Bouaou, Kevin [2 ,3 ]
Houriez--Gombaud-Saintonge, Sophia [2 ,3 ,4 ]
Gueda, Moussa [2 ,3 ]
Gencer, Umit [5 ,6 ]
Nguyen, Vincent [2 ,3 ]
Charpentier, Etienne [2 ,4 ,7 ]
Soulat, Gilles [5 ,6 ]
Redheuil, Alban [2 ,3 ,7 ]
Mousseaux, Elie [5 ,6 ]
Kachenoura, Nadjia [2 ,3 ]
Dietenbeck, Thomas [1 ,2 ,3 ]
机构
[1] Lab Imagerie Biomed, France, Campus Cordeliers,Escalier A 4eme Etage,15 Rue Eco, F-75006 Paris, France
[2] Sorbonne Univ, Lab Imagerie Biomed LIB, CNRS, INSERM, Paris, France
[3] Inst Cardiometab & Nutr ICAN, Paris, France
[4] ESME Sudria Res Lab, Paris, France
[5] Univ Paris Cite, INSERM, PARCC, Paris, France
[6] Hop Europeen Georges Pompidou, AP HP, Paris, France
[7] Sorbonne Univ, Imagerie Cardiothorac ICT, Grp Hosp Pitie Salpetriere, AP HP, Paris, France
关键词
aorta; 3D cardiac MRI; segmentation; deep learning; ANEURYSM DIAMETER; SEGMENTATION; PREDICTION; REGIONS;
D O I
10.1002/jmri.29236
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background: Quantification of aortic morphology plays an important role in the evaluation and follow-up assessment of patients with aortic diseases, but often requires labor-intensive and operator-dependent measurements. Automatic solutions would help enhance their quality and reproducibility.Purpose: To design a deep learning (DL)-based automated approach for aortic landmarks and lumen detection derived from three-dimensional (3D) MRI.Study Type: Retrospective.Population: Three hundred ninety-one individuals (female: 47%, age = 51.9 +/- 18.4) from three sites, including healthy subjects and patients (hypertension, aortic dilation, Turner syndrome), randomly divided into training/validation/test datasets (N = 236/77/78). Twenty-five subjects were randomly selected and analyzed by three operators with different levels of expertise.Field Strength/Sequence: 1.5-T and 3-T, 3D spoiled gradient-recalled or steady-state free precession sequences.Assessment: Reinforcement learning and a two-stage network trained using reference landmarks and segmentation from an existing semi-automatic software were used for aortic landmark detection and segmentation from sinotubular junction to coeliac trunk. Aortic segments were defined using the detected landmarks while the aortic centerline was extracted from the segmentation and morphological indices (length, aortic diameter, and volume) were computed for both the reference and the proposed segmentations.Statistical Tests: Segmentation: Dice similarity coefficient (DSC), Hausdorff distance (HD), average symmetrical surface distance (ASSD); landmark detection: Euclidian distance (ED); model robustness: Spearman correlation, Bland-Altman analysis, Kruskal-Wallis test for comparisons between reference and DL-derived aortic indices; inter-observer study: Williams index (WI). A WI 95% confidence interval (CI) lower bound >1 indicates that the method is within the inter-observer variability. A P-value <0.05 was considered statistically significant.Results: DSC was 0.90 +/- 0.05, HD was 12.11 +/- 7.79 mm, and ASSD was 1.07 +/- 0.63 mm. ED was 5.0 +/- 6.1 mm. A good agreement was found between all DL-derived and reference aortic indices (r >0.95, mean bias <7%). Our segmentation and landmark detection performances were within the inter-observer variability except the sinotubular junction landmark (CI = 0.96;1.04).Data Conclusion: A DL-based aortic segmentation and anatomical landmark detection approach was developed and applied to 3D MRI data for achieve aortic morphology evaluation.Evidence Level: 3Technical Efficacy: Stage 2
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页数:12
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