FBENet: Feature-Level Boosting Ensemble Network for Hashimoto’s Thyroiditis Ultrasound Image Classification

Open Access
Authors
  • W. Jiang
  • T. Luo
  • Z. Liang
  • K. Chen
  • J. He
  • Z. Zhao ORCID logo
  • J. Wen
  • L. Zhao
  • W. Song
Publication date 09-2024
Journal IEEE Journal of Biomedical and Health Informatics
Volume | Issue number 28 | 9
Pages (from-to) 5360–5369
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Distinguishing Hashimoto's thyroiditis (HT) lesions from ordinary thyroid tissues is difficult with ultrasound images. Challenges in achieving high performance of HT ultrasound image classification include the low resolution, blurred features and large area of irrelevant noise. To address these problems, we propose a Feature-level Boosting Ensemble Network (FBENet) for HT ultrasound image classification. Specifically, to capture the features of suspicious HT lesions efficiently, an Ensemble Feature Boosting Module (EFBM) is introduced into the feature-level ensemble to boost the blurred features. Then, the spatial attention mechanism is adopted in backbone models to improve the feature focusing performance and representation ability. Furthermore, feature-level ensemble technique is employed in the training process to achieve more comprehensive feature representation ability. Experimentally, FBENet was trained on 6,503 HT ultrasound images, and tested on 1,626 HT ultrasound images with 82.92% accuracy and 89.24% AUC on average.
Document type Article
Language English
Published at https://doi.org/10.1109/jbhi.2024.3414389
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FBENet (Final published version)
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