NPB-REC: Non-parametric Assessment of Uncertainty in Deep-learning-based MRI Reconstruction from Undersampled Data
Samah Khawaled, Moti Freiman

TL;DR
NPB-REC is a Bayesian framework that quantifies uncertainty in deep-learning MRI reconstruction, improving accuracy and providing reliable uncertainty estimates, especially at high undersampling rates.
Contribution
It introduces a non-parametric Bayesian approach using SGLD for uncertainty quantification in MRI reconstruction, outperforming existing methods in accuracy and uncertainty estimation.
Findings
Outperforms baseline in PSNR and SSIM at R=8
Provides more accurate uncertainty estimates correlated with reconstruction error
Demonstrates potential for safer clinical application of DL MRI reconstruction
Abstract
Uncertainty quantification in deep-learning (DL) based image reconstruction models is critical for reliable clinical decision making based on the reconstructed images. We introduce "NPB-REC", a non-parametric fully Bayesian framework for uncertainty assessment in MRI reconstruction from undersampled "k-space" data. We use Stochastic gradient Langevin dynamics (SGLD) during the training phase to characterize the posterior distribution of the network weights. We demonstrated the added-value of our approach on the multi-coil brain MRI dataset, from the fastmri challenge, in comparison to the baseline E2E-VarNet with and without inference-time dropout. Our experiments show that NPB-REC outperforms the baseline by means of reconstruction accuracy (PSNR and SSIM of , vs. , , ) in high acceleration rates (). This is also measured in regions of clinical…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging · Advanced MRI Techniques and Applications
MethodsDropout
