Anatomically constrained and attention-guided deep feature fusion for joint segmentation and deformable medical image registration

The main objective of anatomically plausible results for deformable image registration is to improve model’s registration accuracy by minimizing the difference between a pair of fixed and moving images. Since many anatomical features are closely related to each other, leveraging supervision from aux...

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Veröffentlicht in:Medical image analysis 2023-08, Vol.88, p.102811-102811, Article 102811
Hauptverfasser: Khor, Hee Guan, Ning, Guochen, Sun, Yihua, Lu, Xu, Zhang, Xinran, Liao, Hongen
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container_end_page 102811
container_issue
container_start_page 102811
container_title Medical image analysis
container_volume 88
creator Khor, Hee Guan
Ning, Guochen
Sun, Yihua
Lu, Xu
Zhang, Xinran
Liao, Hongen
description The main objective of anatomically plausible results for deformable image registration is to improve model’s registration accuracy by minimizing the difference between a pair of fixed and moving images. Since many anatomical features are closely related to each other, leveraging supervision from auxiliary tasks (such as supervised anatomical segmentation) has the potential to enhance the realism of the warped images after registration. In this work, we employ a Multi-Task Learning framework to formulate registration and segmentation as a joint issue, in which we utilize anatomical constraint from auxiliary supervised segmentation to enhance the realism of the predicted images. First, we propose a Cross-Task Attention Block to fuse the high-level feature from both the registration and segmentation network. With the help of initial anatomical segmentation, the registration network can benefit from learning the task-shared feature correlation and rapidly focusing on the parts that need deformation. On the other hand, the anatomical segmentation discrepancy from ground-truth fixed annotations and predicted segmentation maps of initial warped images are integrated into the loss function to guide the convergence of the registration network. Ideally, a good deformation field should be able to minimize the loss function of registration and segmentation. The voxel-wise anatomical constraint inferred from segmentation helps the registration network to reach a global optimum for both deformable and segmentation learning. Both networks can be employed independently during the testing phase, enabling only the registration output to be predicted when the segmentation labels are unavailable. Qualitative and quantitative results indicate that our proposed methodology significantly outperforms the previous state-of-the-art approaches on inter-patient brain MRI registration and pre- and intra-operative uterus MRI registration tasks within our specific experimental setup, which leads to state-of-the-art registration quality scores of 0.755 and 0.731 (i.e., by 0.8% and 0.5% increases) DSC for both tasks, respectively. [Display omitted] •Utilizing segmentation does foster prior knowledge in the registration process.•Registration performance improves with the proposed multi-task learning strategy.•Predictions are refined with the proposed anatomical constraint strategy.•Feature transferring by Cross-Task Attention maximizes the flow of information.•Attention mechanism can rewei
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[Display omitted] •Utilizing segmentation does foster prior knowledge in the registration process.•Registration performance improves with the proposed multi-task learning strategy.•Predictions are refined with the proposed anatomical constraint strategy.•Feature transferring by Cross-Task Attention maximizes the flow of information.•Attention mechanism can reweight attention to deformed regions.</description><identifier>ISSN: 1361-8415</identifier><identifier>EISSN: 1361-8423</identifier><identifier>DOI: 10.1016/j.media.2023.102811</identifier><identifier>PMID: 37245436</identifier><language>eng</language><publisher>Netherlands: Elsevier B.V</publisher><subject>Anatomical constraint ; Deep learning ; Deformable image registration ; Multi task learning</subject><ispartof>Medical image analysis, 2023-08, Vol.88, p.102811-102811, Article 102811</ispartof><rights>2023</rights><rights>Copyright © 2023. 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Qualitative and quantitative results indicate that our proposed methodology significantly outperforms the previous state-of-the-art approaches on inter-patient brain MRI registration and pre- and intra-operative uterus MRI registration tasks within our specific experimental setup, which leads to state-of-the-art registration quality scores of 0.755 and 0.731 (i.e., by 0.8% and 0.5% increases) DSC for both tasks, respectively. 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Since many anatomical features are closely related to each other, leveraging supervision from auxiliary tasks (such as supervised anatomical segmentation) has the potential to enhance the realism of the warped images after registration. In this work, we employ a Multi-Task Learning framework to formulate registration and segmentation as a joint issue, in which we utilize anatomical constraint from auxiliary supervised segmentation to enhance the realism of the predicted images. First, we propose a Cross-Task Attention Block to fuse the high-level feature from both the registration and segmentation network. With the help of initial anatomical segmentation, the registration network can benefit from learning the task-shared feature correlation and rapidly focusing on the parts that need deformation. 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subjects Anatomical constraint
Deep learning
Deformable image registration
Multi task learning
title Anatomically constrained and attention-guided deep feature fusion for joint segmentation and deformable medical image registration
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