Enhancing Cross-Modal Medical Image Segmentation Through Compositionality

Publication date

2025

Authors

Eijpe, Aniek
Corbetta, Valentina
Chupetlovska, Kalina
Beets-Tan, Regina
dos Santos Silva, Wilson

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

No license information available

Abstract

Cross-modal medical image segmentation presents a significant challenge, as different imaging modalities produce images with varying resolutions, contrasts, and appearances of anatomical structures. We introduce compositionality as an inductive bias in a cross-modal segmentation network to improve segmentation performance and interpretability while reducing complexity. The proposed network is an end-to-end cross-modal segmentation framework that enforces compositionality on the learned representations using learnable von Mises-Fisher kernels. These kernels facilitate content-style disentanglement in the learned representations, resulting in compositional content representations that are inherently interpretable and effectively disentangle different anatomical structures. The experimental results demonstrate enhanced segmentation performance and reduced computational costs on multiple medical datasets. Additionally, we demonstrate the interpretability of the learned compositional features. Code and checkpoints will be publicly available at: https://github.com/Trustworthy-AI-UU-NKI/Cross-Modal-Segmentation.

Keywords

Taverne

Citation

Eijpe, A, Corbetta, V, Chupetlovska, K, Beets-Tan, R & dos Santos Silva, W 2025, Enhancing Cross-Modal Medical Image Segmentation Through Compositionality. in Deep Generative Models : DGM4MICCAI. Lecture Notes in Computer Science, vol. 15224, Springer, pp. 43-53. https://doi.org/10.1007/978-3-031-72744-3_5