A Novel Channel Boosted Residual CNN-Transformer with Regional-Boundary Learning for Breast Cancer Detection
Journal:
arXiv
Published Date:
Mar 19, 2025
Abstract
Recent advancements in detecting tumors using deep learning on breast
ultrasound images (BUSI) have demonstrated significant success. Deep CNNs and
vision-transformers (ViTs) have demonstrated individually promising initial
performance. However, challenges related to model complexity and contrast,
texture, and tumor morphology variations introduce uncertainties that hinder
the effectiveness of current methods. This study introduces a novel hybrid
framework, CB-Res-RBCMT, combining customized residual CNNs and new ViT
components for detailed BUSI cancer analysis. The proposed RBCMT uses stem
convolution blocks with CNN Meet Transformer (CMT) blocks, followed by new
Regional and boundary (RB) feature extraction operations for capturing contrast
and morphological variations. Moreover, the CMT block incorporates global
contextual interactions through multi-head attention, enhancing computational
efficiency with a lightweight design. Additionally, the customized inverse
residual and stem CNNs within the CMT effectively extract local texture
information and handle vanishing gradients. Finally, the new channel-boosted
(CB) strategy enriches the feature diversity of the limited dataset by
combining the original RBCMT channels with transfer learning-based residual
CNN-generated maps. These diverse channels are processed through a spatial
attention block for optimal pixel selection, reducing redundancy and improving
the discrimination of minor contrast and texture variations. The proposed
CB-Res-RBCMT achieves an F1-score of 95.57%, accuracy of 95.63%, sensitivity of
96.42%, and precision of 94.79% on the standard harmonized stringent BUSI
dataset, outperforming existing ViT and CNN methods. These results demonstrate
the versatility of our integrated CNN-Transformer framework in capturing
diverse features and delivering superior performance in BUSI cancer diagnosis.