PixCUE: Joint Uncertainty Estimation and Image Reconstruction in MRI using Deep Pixel Classification
Mevan Ekanayake, Kamlesh Pawar, Gary Egan, Zhaolin Chen

TL;DR
PixCUE is a novel deep learning method for MRI reconstruction that efficiently estimates uncertainty during a single inference, correlating well with reconstruction errors and traditional metrics, thus enhancing reliability without high computational costs.
Contribution
PixCUE introduces a pixel classification framework for real-time uncertainty estimation in MRI reconstruction, reducing computational costs compared to Monte Carlo methods.
Findings
Uncertainty maps from PixCUE correlate with reconstruction errors.
PixCUE's uncertainty estimates align with Monte Carlo methods.
The method maintains accuracy with minimal additional computation.
Abstract
Deep learning (DL) models are capable of successfully exploiting latent representations in MR data and have become state-of-the-art for accelerated MRI reconstruction. However, undersampling the measurements in k-space as well as the over- or under-parameterized and non-transparent nature of DL make these models exposed to uncertainty. Consequently, uncertainty estimation has become a major issue in DL MRI reconstruction. To estimate uncertainty, Monte Carlo (MC) inference techniques have become a common practice where multiple reconstructions are utilized to compute the variance in reconstruction as a measurement of uncertainty. However, these methods demand high computational costs as they require multiple inferences through the DL model. To this end, we introduce a method to estimate uncertainty during MRI reconstruction using a pixel classification framework. The proposed method,…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Adversarial Robustness in Machine Learning
