TY - JOUR
T1 - Diff-CFFBNet
T2 - Diffusion-Embedded Cross-Layer Feature Fusion Bridge Network for Brain Tumor Segmentation
AU - Wu, Xiaosheng
AU - Hou, Qingyi
AU - Tang, Chaosheng
AU - Wang, Shuihua
AU - Sun, Junding
AU - Zhang, Yudong
N1 - Publisher Copyright:
© 2025 Wiley Periodicals LLC.
PY - 2025/5
Y1 - 2025/5
N2 - This study introduces the Diff-CFFBNet, a novel network for brain tumor segmentation designed to address the challenges of misdetection in broken tumor regions within MRI scans, which is crucial for early diagnosis, treatment planning, and disease monitoring. The proposed method incorporates a cross-layer feature fusion bridge (CFFB) to enhance feature interaction and a cross-layer feature fusion U-Net (CFFU-Net) to reduce the semantic gap in diffusion models. Additionally, a sampling-quantity-based fusion (SQ-Fusion) is utilized to leverage the uncertainty of diffusion models for improved segmentation outcomes. Experimental validation on BraTS 2019, BraTS 2020, TCGA-GBM, TCGA-LGG, and MSD datasets demonstrates that Diff-CFFBNet outperforms existing methods, achieving superior performance in terms of Dice score, HD95, and mIoU metrics. These results indicate the model's robustness and precision, even under challenging conditions with complex tumor structures. Diff-CFFBNet provides a reliable solution for accurate and efficient brain tumor segmentation in medical imaging, with the potential for clinical application in treatment planning and disease monitoring. Future work aims to extend this approach to multiple tumor types and refine diffusion model applications in medical image segmentation.
AB - This study introduces the Diff-CFFBNet, a novel network for brain tumor segmentation designed to address the challenges of misdetection in broken tumor regions within MRI scans, which is crucial for early diagnosis, treatment planning, and disease monitoring. The proposed method incorporates a cross-layer feature fusion bridge (CFFB) to enhance feature interaction and a cross-layer feature fusion U-Net (CFFU-Net) to reduce the semantic gap in diffusion models. Additionally, a sampling-quantity-based fusion (SQ-Fusion) is utilized to leverage the uncertainty of diffusion models for improved segmentation outcomes. Experimental validation on BraTS 2019, BraTS 2020, TCGA-GBM, TCGA-LGG, and MSD datasets demonstrates that Diff-CFFBNet outperforms existing methods, achieving superior performance in terms of Dice score, HD95, and mIoU metrics. These results indicate the model's robustness and precision, even under challenging conditions with complex tumor structures. Diff-CFFBNet provides a reliable solution for accurate and efficient brain tumor segmentation in medical imaging, with the potential for clinical application in treatment planning and disease monitoring. Future work aims to extend this approach to multiple tumor types and refine diffusion model applications in medical image segmentation.
KW - brain tumor
KW - cross-layer feature fusion
KW - deep learning
KW - diffusion models
KW - medical image segmentation
UR - http://www.scopus.com/inward/record.url?scp=105002857226&partnerID=8YFLogxK
U2 - 10.1002/ima.70088
DO - 10.1002/ima.70088
M3 - Article
AN - SCOPUS:105002857226
SN - 0899-9457
VL - 35
JO - International Journal of Imaging Systems and Technology
JF - International Journal of Imaging Systems and Technology
IS - 3
M1 - e70088
ER -