TY - JOUR
T1 - Automatic segmentation of left and right ventricles in cardiac MRI using 3D-ASM and deep learning
AU - Hu, HF
AU - Pan, N
AU - Liu, HH
AU - Liu, LM
AU - Yin, TL
AU - Tu, ZG
AU - Frangi, AF
N1 - Funding Information:
The National Natural Science Foundation of China supported this study (No. 62076257 , 61773409 and 61976227 ), China Scholarship Council (No. 201508420005 ), Fundamental Research Funds for the Central Universities (No. CZY20039 ), and Applied Basic Research Programme of Wuhan (No. 2020020601012239 ).
Funding Information:
This research has been conducted using the UK Biobank Resource under Applications 11350. The authors are grateful to all UK Biobank participants and staff. AFF acknowledges support from the Royal Academy of Engineering Chair in Emerging Technologies Scheme (INSILEX, CiET1819/19) , Royal Society International Exchanges Programme (CROSSLINK, IEC/NSFC/201380) and EPSRC-funded Grow MedTech (CardioX, POC041) and Pengcheng Visiting Scholars Programme from the Shenzhen Government .
Publisher Copyright:
© 2021 Elsevier B.V.
PY - 2021/8
Y1 - 2021/8
N2 - Segmentation of the left and right ventricles in cardiac MRI (Magnetic Resonance Imaging) is a prerequisite step for evaluating global and regional cardiac function. This work presents a novel and robust schema for MRI segmentation by combining the advantages of deep learning localization and 3D-ASM (3D Active Shape Model) restriction without any user interaction. Three fundamental techniques are exploited: (1) manual 2D contours are used to build distance maps to get 3D ground truth shape, (2) derived right ventricle points are employed to rotate the coarse initial shape for a refined bi-ventricle initial estimation, (3) segmentation results from deep learning are utilised to build distance maps for the 3D-ASM matching process to help image intensity modelling. The datasets used for experimenting the cine MRI data are 1000 cases from UK Biobank, 500 subjects are selected to train CNN (Convolution Neural Network) parameters, and the remaining 500 cases are adopted for validation. Specifically, cases are used to rebuild point distribution and image intensity models, and also utilized to train CNN. In addition, the left 500 cases are used to perform the validation experiments. For the segmentation of the RV (Right Ventricle) endocardial contour, LV (Left Ventricle) endo- and epicardial contours, overlap, Jaccard similarity index, Point-to-surface errors and cardiac functional parameters are calculated. Experimental results show that the proposed method has advantages over the previous approaches.
AB - Segmentation of the left and right ventricles in cardiac MRI (Magnetic Resonance Imaging) is a prerequisite step for evaluating global and regional cardiac function. This work presents a novel and robust schema for MRI segmentation by combining the advantages of deep learning localization and 3D-ASM (3D Active Shape Model) restriction without any user interaction. Three fundamental techniques are exploited: (1) manual 2D contours are used to build distance maps to get 3D ground truth shape, (2) derived right ventricle points are employed to rotate the coarse initial shape for a refined bi-ventricle initial estimation, (3) segmentation results from deep learning are utilised to build distance maps for the 3D-ASM matching process to help image intensity modelling. The datasets used for experimenting the cine MRI data are 1000 cases from UK Biobank, 500 subjects are selected to train CNN (Convolution Neural Network) parameters, and the remaining 500 cases are adopted for validation. Specifically, cases are used to rebuild point distribution and image intensity models, and also utilized to train CNN. In addition, the left 500 cases are used to perform the validation experiments. For the segmentation of the RV (Right Ventricle) endocardial contour, LV (Left Ventricle) endo- and epicardial contours, overlap, Jaccard similarity index, Point-to-surface errors and cardiac functional parameters are calculated. Experimental results show that the proposed method has advantages over the previous approaches.
KW - automatic initialisation
KW - deep learning
KW - Left and right ventricle segmentation
KW - statistical shape models
UR - http://www.scopus.com/inward/record.url?scp=85106534356&partnerID=8YFLogxK
U2 - 10.1016/j.image.2021.116303
DO - 10.1016/j.image.2021.116303
M3 - Article
AN - SCOPUS:85106534356
SN - 0923-5965
VL - 96
JO - Signal Processing: Image Communication
JF - Signal Processing: Image Communication
M1 - 116303
ER -