MA-RECON: Mask-aware deep-neural-network for robust fast MRI k-space interpolation
High-quality reconstruction of MRI images from under-sampled `k-space' data, which is in the Fourier domain, is crucial for shortening MRI acquisition times and ensuring superior temporal resolution. Over recent years, a wealth of deep neural network (DNN) methods have emerged, aiming to tackle...
Gespeichert in:
Hauptverfasser: | , |
---|---|
Format: | Artikel |
Sprache: | eng |
Schlagworte: | |
Online-Zugang: | Volltext bestellen |
Tags: |
Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
|
Zusammenfassung: | High-quality reconstruction of MRI images from under-sampled `k-space' data,
which is in the Fourier domain, is crucial for shortening MRI acquisition times
and ensuring superior temporal resolution. Over recent years, a wealth of deep
neural network (DNN) methods have emerged, aiming to tackle the complex,
ill-posed inverse problem linked to this process. However, their instability
against variations in the acquisition process and anatomical distribution
exposes a deficiency in the generalization of relevant physical models within
these DNN architectures. The goal of our work is to enhance the generalization
capabilities of DNN methods for k-space interpolation by introducing
`MA-RECON', an innovative mask-aware DNN architecture and associated training
method. Unlike preceding approaches, our `MA-RECON' architecture encodes not
only the observed data but also the under-sampling mask within the model
structure. It implements a tailored training approach that leverages data
generated with a variety of under-sampling masks to stimulate the model's
generalization of the under-sampled MRI reconstruction problem. Therefore,
effectively represents the associated inverse problem, akin to the classical
compressed sensing approach. The benefits of our MA-RECON approach were
affirmed through rigorous testing with the widely accessible fastMRI dataset.
Compared to standard DNN methods and DNNs trained with under-sampling mask
augmentation, our approach demonstrated superior generalization capabilities.
This resulted in a considerable improvement in robustness against variations in
both the acquisition process and anatomical distribution, especially in regions
with pathology. In conclusion, our mask-aware strategy holds promise for
enhancing the generalization capacity and robustness of DNN-based methodologies
for MRI reconstruction from undersampled k-space data. |
---|---|
DOI: | 10.48550/arxiv.2209.00462 |