Research Interests

YYYao Yao
Papers(1)
MVT-Net: A novel cerv…
Collaborators(1)
Hua Yang
Institutions(2)
Hangzhou Vocational A…Sun Yat-sen University

Papers

MVT-Net: A novel cervical tumour segmentation using multi-view feature transfer learning

Cervical cancer is one of the most aggressive malignant tumours of the reproductive system, posing a significant global threat to women’s health. Accurately segmenting cervical tumours in MR images remains a challenging task due to the complex characteristics of tumours and the limitations of traditional methods. To address these challenges, this study proposes a novel cervical tumour segmentation model based on multi-view feature transfer learning, named MVT-Net. The model integrates a 2D global axial plane encoder-decoder network and a 3D multi-scale segmentation network as source and target domains, respectively. A transfer learning strategy is employed to extract diverse tumour-related information from multiple perspectives. In addition, a multi-scale residual blocks and a multi-scale residual attention blocks are embedded in the 3D network to effectively capture feature correlations across channels and spatial positions. Experiments on a cervical MR dataset of 160 images show that our proposed MVT-Net outperforms state-of-the-art methods, achieving a DICE score of 75.9±7.43%, an ASD of 2.69±0.58 mm and superior performance in tumour localisation, shape delineation and edge segmentation. Ablation studies further validate the effectiveness of the proposed multi-view feature transfer strategy. These results demonstrate that our proposed MVT-Net represents a significant advance in cervical tumour segmentation, offering improved accuracy and reliability in clinical applications.

1Papers
1Collaborators
Uterine Cervical Neoplasms