TY - JOUR
T1 - Deformable Medical Image Registration with Effective Anatomical Structure Representation and Divide-and-Conquer Network
AU - Ma, Xinke
AU - Pan, Yongsheng
AU - Zeng, Qingjie
AU - Lu, Mengkang
AU - Yerzhanuly, Bolysbek Murat
AU - Matkerim, Bazargul
AU - Xia, Yong
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2025
Y1 - 2025
N2 - Effective representation of Regions of Interest (ROI) and independent alignment of these ROIs can significantly enhance the performance of deformable medical image registration (DMIR). However, current learning-based DMIR methods have limitations. Unsupervised techniques disregard ROI representation and proceed directly with aligning pairs of images, while weakly-supervised methods heavily depend on label constraints to facilitate registration. To address these issues, we introduce a weakly-supervised ROI-based registration approach named EASR-DCN. Our method represents medical images through effective ROIs and achieves independent alignment of these ROIs without requiring labels. Specifically, we first used a Gaussian mixture model for intensity analysis to represent images using multiple effective ROIs with distinct intensities. Furthermore, we propose a novel Divide-and-Conquer Network (DCN) that processes ROIs through separate channels to independently align their features. The resulting sub-deformation fields are seamlessly integrated to generate a comprehensive displacement vector field. Extensive experiments were performed on three MRI and one CT datasets to showcase the superior accuracy and deformation reduction efficacy of our EASR-DCN. Compared to VoxelMorph, our EASR-DCN achieved improvements of 10.31% in the Dice score for brain MRI, 13.01% for cardiac MRI, and 5.75% for hippocampus MRI, highlighting its promising potential for clinical applications.
AB - Effective representation of Regions of Interest (ROI) and independent alignment of these ROIs can significantly enhance the performance of deformable medical image registration (DMIR). However, current learning-based DMIR methods have limitations. Unsupervised techniques disregard ROI representation and proceed directly with aligning pairs of images, while weakly-supervised methods heavily depend on label constraints to facilitate registration. To address these issues, we introduce a weakly-supervised ROI-based registration approach named EASR-DCN. Our method represents medical images through effective ROIs and achieves independent alignment of these ROIs without requiring labels. Specifically, we first used a Gaussian mixture model for intensity analysis to represent images using multiple effective ROIs with distinct intensities. Furthermore, we propose a novel Divide-and-Conquer Network (DCN) that processes ROIs through separate channels to independently align their features. The resulting sub-deformation fields are seamlessly integrated to generate a comprehensive displacement vector field. Extensive experiments were performed on three MRI and one CT datasets to showcase the superior accuracy and deformation reduction efficacy of our EASR-DCN. Compared to VoxelMorph, our EASR-DCN achieved improvements of 10.31% in the Dice score for brain MRI, 13.01% for cardiac MRI, and 5.75% for hippocampus MRI, highlighting its promising potential for clinical applications.
KW - Feature Alignment
KW - Image Registration
KW - Representation Learning
KW - Weakly supervised Learning
UR - https://www.scopus.com/pages/publications/105023908196
U2 - 10.1109/JBHI.2025.3639819
DO - 10.1109/JBHI.2025.3639819
M3 - 文章
C2 - 41336168
AN - SCOPUS:105023908196
SN - 2168-2194
JO - IEEE Journal of Biomedical and Health Informatics
JF - IEEE Journal of Biomedical and Health Informatics
ER -