Modality Translation and Registration of MR and Ultrasound Images Using Diffusion Models
Journal:
arXiv
Published Date:
Jun 1, 2025
Abstract
Multimodal MR-US registration is critical for prostate cancer diagnosis.
However, this task remains challenging due to significant modality
discrepancies. Existing methods often fail to align critical boundaries while
being overly sensitive to irrelevant details. To address this, we propose an
anatomically coherent modality translation (ACMT) network based on a
hierarchical feature disentanglement design. We leverage shallow-layer features
for texture consistency and deep-layer features for boundary preservation.
Unlike conventional modality translation methods that convert one modality into
another, our ACMT introduces the customized design of an intermediate pseudo
modality. Both MR and US images are translated toward this intermediate domain,
effectively addressing the bottlenecks faced by traditional translation methods
in the downstream registration task. Experiments demonstrate that our method
mitigates modality-specific discrepancies while preserving crucial anatomical
boundaries for accurate registration. Quantitative evaluations show superior
modality similarity compared to state-of-the-art modality translation methods.
Furthermore, downstream registration experiments confirm that our translated
images achieve the best alignment performance, highlighting the robustness of
our framework for multi-modal prostate image registration.