TL;DR
UniMo is a deep learning framework that effectively corrects various motion types in medical imaging, demonstrating high accuracy and adaptability across multiple modalities without retraining.
Contribution
The paper introduces UniMo, a unified, hybrid deep learning model that handles global and local motion correction in medical images without requiring retraining for different modalities.
Findings
UniMo outperforms existing methods in accuracy.
It generalizes well across multiple imaging modalities.
One-time training achieves high stability and adaptability.
Abstract
Deep learning has shown significant value in medical image registration for motion correction, however, current techniques are either limited by the type and range of motion they can handle, or require iterative inference and/or retraining for new imaging data. To address these limitations, we introduce UniMo, a Unified Motion Correction framework that leverages deep neural networks to correct for various types of motion in medical imaging. UniMo exploits an alternating optimization scheme for a unified loss function to train an integrated model of 1) an equivariant neural network for global rigid motion correction and 2) an encoder-decoder network to correct local deformations. It features a geometric deformation augmenter that 1) enhances the robustness of global motion correction by addressing any local deformations, and 2) generates augmented data to improve the training process.…
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