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

Yao Yao1, Yunzhi Chen1, An Yang1

  • 1School of Information Engineering, Hangzhou Vocational and Technical College, Hangzhou, Zhejiang, China.

Plos One
|June 24, 2025
PubMed
Summary

This study introduces MVT-Net, a novel deep learning model for segmenting cervical tumours in MR images. MVT-Net improves segmentation accuracy and reliability, aiding in clinical diagnosis of cervical cancer.

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Area of Science:

  • Medical Imaging
  • Oncology
  • Computer Vision
  • Machine Learning

Background:

  • Cervical cancer is a highly aggressive malignancy threatening women's health globally.
  • Accurate segmentation of cervical tumours in MR images is crucial but challenging due to tumour complexity and traditional method limitations.

Purpose of the Study:

  • To develop a novel cervical tumour segmentation model, MVT-Net, addressing current segmentation challenges.
  • To leverage multi-view feature transfer learning for enhanced tumour characterization in MR images.

Main Methods:

  • Proposed MVT-Net integrates a 2D encoder-decoder network (source domain) and a 3D multi-scale segmentation network (target domain).
  • Employs a transfer learning strategy to extract diverse, multi-perspective tumour features.
  • Incorporates multi-scale residual and attention blocks within the 3D network to capture complex feature correlations.

Main Results:

  • MVT-Net achieved superior performance on a 160-image cervical MR dataset compared to state-of-the-art methods.
  • Demonstrated high accuracy with a DICE score of [Formula: see text] and an average surface distance (ASD) of [Formula: see text] mm.
  • Showcased improved tumour localisation, shape delineation, and edge segmentation accuracy.

Conclusions:

  • MVT-Net represents a significant advancement in cervical tumour segmentation technology.
  • The multi-view feature transfer learning strategy effectively enhances segmentation accuracy and reliability.
  • The model shows promise for improved clinical applications in cervical cancer diagnosis and treatment planning.