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Autori principali: Zhang, Jjahao, Gu, Yin, Sun, Deyu, Gao, Yuhua, Gao, Ming, Cui, Ming, Zhang, Teng, Ma, He
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.12850
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author Zhang, Jjahao
Gu, Yin
Sun, Deyu
Gao, Yuhua
Gao, Ming
Cui, Ming
Zhang, Teng
Ma, He
author_facet Zhang, Jjahao
Gu, Yin
Sun, Deyu
Gao, Yuhua
Gao, Ming
Cui, Ming
Zhang, Teng
Ma, He
contents Cervical cancer is one of the leading causes of death in women, and brachytherapy is currently the primary treatment method. However, it is important to precisely define the extent of paracervical tissue invasion to improve cancer diagnosis and treatment options. The fusion of the information characteristics of both computed tomography (CT) and magnetic resonance imaging(MRI) modalities may be useful in achieving a precise outline of the extent of paracervical tissue invasion. Registration is the initial step in information fusion. However, when aligning multimodal images with varying depths, manual alignment is prone to large errors and is time-consuming. Furthermore, the variations in the size of the Region of Interest (ROI) and the shape of multimodal images pose a significant challenge for achieving accurate registration.In this paper, we propose a preliminary spatial alignment algorithm and a weakly supervised multimodal registration network. The spatial position alignment algorithm efficiently utilizes the limited annotation information in the two modal images provided by the doctor to automatically align multimodal images with varying depths. By utilizing aligned multimodal images for weakly supervised registration and incorporating pyramidal features and cost volume to estimate the optical flow, the results indicate that the proposed method outperforms traditional volume rendering alignment methods and registration networks in various evaluation metrics. This demonstrates the effectiveness of our model in multimodal image registration.
format Preprint
id arxiv_https___arxiv_org_abs_2405_12850
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Weakly supervised alignment and registration of MR-CT for cervical cancer radiotherapy
Zhang, Jjahao
Gu, Yin
Sun, Deyu
Gao, Yuhua
Gao, Ming
Cui, Ming
Zhang, Teng
Ma, He
Computer Vision and Pattern Recognition
Cervical cancer is one of the leading causes of death in women, and brachytherapy is currently the primary treatment method. However, it is important to precisely define the extent of paracervical tissue invasion to improve cancer diagnosis and treatment options. The fusion of the information characteristics of both computed tomography (CT) and magnetic resonance imaging(MRI) modalities may be useful in achieving a precise outline of the extent of paracervical tissue invasion. Registration is the initial step in information fusion. However, when aligning multimodal images with varying depths, manual alignment is prone to large errors and is time-consuming. Furthermore, the variations in the size of the Region of Interest (ROI) and the shape of multimodal images pose a significant challenge for achieving accurate registration.In this paper, we propose a preliminary spatial alignment algorithm and a weakly supervised multimodal registration network. The spatial position alignment algorithm efficiently utilizes the limited annotation information in the two modal images provided by the doctor to automatically align multimodal images with varying depths. By utilizing aligned multimodal images for weakly supervised registration and incorporating pyramidal features and cost volume to estimate the optical flow, the results indicate that the proposed method outperforms traditional volume rendering alignment methods and registration networks in various evaluation metrics. This demonstrates the effectiveness of our model in multimodal image registration.
title Weakly supervised alignment and registration of MR-CT for cervical cancer radiotherapy
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.12850