TY - JOUR
T1 - Robust Brain Tumor Segmentation with Incomplete MRI Modalities Using Hölder Divergence and Mutual Information-Enhanced Knowledge Transfer
AU - Cheng, Runze
AU - Qiu, Xihang
AU - Li, Ming
AU - Zhang, Ye
AU - Yu, Fei Richard
AU - Li, Chun
N1 - Publisher Copyright:
© 2014 Chinese Association of Automation.
PY - 2026/4/1
Y1 - 2026/4/1
N2 - Multimodal MRI (magnetic resonance imaging) provides critical complementary information for accurate brain tumor segmentation. However, conventional methods struggle when certain modalities are missing due to issues like image quality, protocol inconsistencies, patient allergies, or financial constraints. To address this, we propose a robust single-modality parallel processing framework that achieves high segmentation accuracy even with incomplete modalities. Leveraging Hölder divergence and mutual information, our model maintains modality-specific features while dynamically adjusting network parameters based on available inputs. By using these divergence and information-based loss functions, the framework effectively quantifies discrepancies between predictions and ground-truth labels, resulting in consistently accurate segmentation. Extensive evaluations on the BraTS 2018 and BraTS 2020 datasets demonstrate superior performance over existing methods in handling missing modalities, with ablation studies validating each component's contribution to the framework.
AB - Multimodal MRI (magnetic resonance imaging) provides critical complementary information for accurate brain tumor segmentation. However, conventional methods struggle when certain modalities are missing due to issues like image quality, protocol inconsistencies, patient allergies, or financial constraints. To address this, we propose a robust single-modality parallel processing framework that achieves high segmentation accuracy even with incomplete modalities. Leveraging Hölder divergence and mutual information, our model maintains modality-specific features while dynamically adjusting network parameters based on available inputs. By using these divergence and information-based loss functions, the framework effectively quantifies discrepancies between predictions and ground-truth labels, resulting in consistently accurate segmentation. Extensive evaluations on the BraTS 2018 and BraTS 2020 datasets demonstrate superior performance over existing methods in handling missing modalities, with ablation studies validating each component's contribution to the framework.
KW - Brain-tumor segmentation
KW - divergence learning
KW - knowledge distillation
KW - missing modality learning
UR - https://www.scopus.com/pages/publications/105038207829
U2 - 10.1109/JAS.2025.125609
DO - 10.1109/JAS.2025.125609
M3 - Article
AN - SCOPUS:105038207829
SN - 2329-9266
VL - 13
SP - 939
EP - 954
JO - IEEE/CAA Journal of Automatica Sinica
JF - IEEE/CAA Journal of Automatica Sinica
IS - 4
ER -