Multi-modal co-learning with attention mechanism for head and neck tumor segmentation on 18FDG PET-CT

Purpose Effective radiation therapy requires accurate segmentation of head and neck cancer, one of the most common types of cancer. With the advancement of deep learning, people have come up with various methods that use positron emission tomography-computed tomography to get complementary informati...

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Veröffentlicht in:EJNMMI physics 2024-07, Vol.11 (1), p.67-14, Article 67
Hauptverfasser: Cho, Min Jeong, Hwang, Donghwi, Yie, Si Young, Lee, Jae Sung
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Sprache:eng
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Zusammenfassung:Purpose Effective radiation therapy requires accurate segmentation of head and neck cancer, one of the most common types of cancer. With the advancement of deep learning, people have come up with various methods that use positron emission tomography-computed tomography to get complementary information. However, these approaches are computationally expensive because of the separation of feature extraction and fusion functions and do not make use of the high sensitivity of PET. We propose a new deep learning-based approach to alleviate these challenges. Methods We proposed a tumor region attention module that fully exploits the high sensitivity of PET and designed a network that learns the correlation between the PET and CT features using squeeze-and-excitation normalization (SE Norm) without separating the feature extraction and fusion functions. In addition, we introduce multi-scale context fusion, which exploits contextual information from different scales. Results The HECKTOR challenge 2021 dataset was used for training and testing. The proposed model outperformed the state-of-the-art models for medical image segmentation; in particular, the dice similarity coefficient increased by 8.78% compared to U-net. Conclusion The proposed network segmented the complex shape of the tumor better than the state-of-the-art medical image segmentation methods, accurately distinguishing between tumor and non-tumor regions.
ISSN:2197-7364
2197-7364
DOI:10.1186/s40658-024-00670-y