We present a meta-learning framework for interactive medical image registration. Our proposed framework comprises three components: a learning-based medical image registration algorithm, a form of user interaction that refines registration at inference, and a meta-learning protocol that learns a rapidly adaptable network initialization. This paper describes a specific algorithm that implements the registration, interaction and meta-learning protocol for our exemplar clinical application: registration of magnetic resonance (MR) imaging to interactively acquired, sparsely-sampled transrectal ultrasound (TRUS) images. Our approach obtains comparable registration error (4.26 mm) to the best-performing non-interactive learning-based 3D-to-3D method (3.97 mm) while requiring only a fraction of the data, and occurring in real-time during acquisition. Applying sparsely sampled data to non-interactive methods yields higher registration errors (6.26 mm), demonstrating the effectiveness of interactive MR-TRUS registration, which may be applied intraoperatively given the real-time nature of the adaptation process.
Meta-Learning Initializations for Interactive Medical Image Registration.
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作者:Baum Zachary M C, Hu Yipeng, Barratt Dean C
| 期刊: | IEEE Transactions on Medical Imaging | 影响因子: | 9.800 |
| 时间: | 2023 | 起止号: | 2023 Mar;42(3):823-833 |
| doi: | 10.1109/TMI.2022.3218147 | ||
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