Surrogate Supervision for Robust and Generalizable Deformable Image Registration
By: Yihao Liu , Junyu Chen , Lianrui Zuo and more
Potential Business Impact:
Makes medical scans match perfectly, even if messy.
Objective: Deep learning-based deformable image registration has achieved strong accuracy, but remains sensitive to variations in input image characteristics such as artifacts, field-of-view mismatch, or modality difference. We aim to develop a general training paradigm that improves the robustness and generalizability of registration networks. Methods: We introduce surrogate supervision, which decouples the input domain from the supervision domain by applying estimated spatial transformations to surrogate images. This allows training on heterogeneous inputs while ensuring supervision is computed in domains where similarity is well defined. We evaluate the framework through three representative applications: artifact-robust brain MR registration, mask-agnostic lung CT registration, and multi-modal MR registration. Results: Across tasks, surrogate supervision demonstrated strong resilience to input variations including inhomogeneity field, inconsistent field-of-view, and modality differences, while maintaining high performance on well-curated data. Conclusions: Surrogate supervision provides a principled framework for training robust and generalizable deep learning-based registration models without increasing complexity. Significance: Surrogate supervision offers a practical pathway to more robust and generalizable medical image registration, enabling broader applicability in diverse biomedical imaging scenarios.
Similar Papers
Strategies for Robust Deep Learning Based Deformable Registration
CV and Pattern Recognition
Makes brain scans match better, even with different pictures.
RobustSurg: Tackling domain generalisation for out-of-distribution surgical scene segmentation
CV and Pattern Recognition
Helps robots see better during surgery.
Disentangling Progress in Medical Image Registration: Beyond Trend-Driven Architectures towards Domain-Specific Strategies
Image and Video Processing
Improves medical scans by focusing on what matters.