F3-Net: Foundation Model for Full Abnormality Segmentation of Medical Images with Flexible Input Modality Requirement
Journal:
arXiv
Published Date:
Jul 11, 2025
Abstract
F3-Net is a foundation model designed to overcome persistent challenges in
clinical medical image segmentation, including reliance on complete multimodal
inputs, limited generalizability, and narrow task specificity. Through flexible
synthetic modality training, F3-Net maintains robust performance even in the
presence of missing MRI sequences, leveraging a zero-image strategy to
substitute absent modalities without relying on explicit synthesis networks,
thereby enhancing real-world applicability. Its unified architecture supports
multi-pathology segmentation across glioma, metastasis, stroke, and white
matter lesions without retraining, outperforming CNN-based and
transformer-based models that typically require disease-specific fine-tuning.
Evaluated on diverse datasets such as BraTS 2021, BraTS 2024, and ISLES 2022,
F3-Net demonstrates strong resilience to domain shifts and clinical
heterogeneity. On the whole pathology dataset, F3-Net achieves average Dice
Similarity Coefficients (DSCs) of 0.94 for BraTS-GLI 2024, 0.82 for BraTS-MET
2024, 0.94 for BraTS 2021, and 0.79 for ISLES 2022. This positions it as a
versatile, scalable solution bridging the gap between deep learning research
and practical clinical deployment.