SegReg: Segmenting OARs by Registering MR Images and CT Annotations
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Zhang, Zeyu
Qi, Xuyin
Zhang, Bowen
Wu, Biao
Le, Hien
Jeong, Bora
Liao, Zhibin
Liu, Yunxiang
Verjans, Johan
To, Minh Son
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IEEE Computer Society
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Abstract
Organ at risk (OAR) segmentation is a critical process in radiotherapy treatment planning such as head and neck tumors. Nevertheless, in clinical practice, radiation oncologists predominantly perform OAR segmentations manually on CT scans. This manual process is highly time-consuming and expensive, limiting the number of patients who can receive timely radiotherapy. Additionally, CT scans offer lower softtissue contrast compared to MRI. Despite MRI providing superior soft-tissue visualization, its time-consuming nature makes it infeasible for real-time treatment planning. To address these challenges, we propose a method called SegReg, which utilizes Elastic Symmetric Normalization for registering MRI to perform OAR segmentation. SegReg outperforms the CT-only baseline by 16.78% in mDSC and 18.77% in mIoU, showing that it effectively combines the geometric accuracy of CT with the superior soft-tissue contrast of MRI, making accurate automated OAR segmentation for clinical practice become possible. See project website https://steve-zeyu-zhang.github.io/SegReg.
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IEEE International Symposium on Biomedical Imaging, ISBI 2024 - Conference Proceedings
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