IVCVNov 15, 2024

On the Foundation Model for Cardiac MRI Reconstruction

arXiv:2411.10403v13 citationsh-index: 53CMRxRecon/MBAS/STACOM@MICCAI
Originality Incremental advance
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This addresses the need for flexible and efficient reconstruction in cardiac MRI to suit diverse clinical demands, though it appears incremental as it builds on existing ML-based approaches.

The study tackled the problem of machine learning-based cardiac MRI reconstruction requiring extensive training for fixed parameters by proposing a foundation model with adaptive unrolling, channel-shifting, and PCP-UNet, which significantly improved image quality across various CMR protocols and outperformed conventional methods.

In recent years, machine learning (ML) based reconstruction has been widely investigated and employed in cardiac magnetic resonance (CMR) imaging. ML-based reconstructions can deliver clinically acceptable image quality under substantially accelerated scans. ML-based reconstruction, however, also requires substantial data and computational time to train the neural network, which is often optimized for a fixed acceleration rate or image contrast. In practice, imaging parameters are often tuned to best suit the diagnosis, which may differ from the training data. This can result in degraded image quality, and multiple trained networks are needed to fulfill the clinical demands. In this study, we propose a foundation model that uses adaptive unrolling, channel-shifting, and Pattern and Contrast-Prompt-UNet (PCP-UNet) to tackle the problem. In particular, the undersampled data goes through a different number of unrolled iterations according to its acceleration rate. Channel-shifting improves reconstructed data quality. The PCP-UNet is equipped with an image contrast and sampling pattern prompt. In vivo CMR experiments were performed using mixed combinations of image contrasts, acceleration rates, and (under)sampling patterns. The proposed foundation model has significantly improved image quality for a wide range of CMR protocols and outperforms the conventional ML-based method.

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