2024
DOI: 10.1002/mrm.30030
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Predictive uncertainty in deep learning–based MR image reconstruction using deep ensembles: Evaluation on the fastMRI data set

Thomas Küstner,
Kerstin Hammernik,
Daniel Rueckert
et al.

Abstract: PurposeTo estimate pixel‐wise predictive uncertainty for deep learning–based MR image reconstruction and to examine the impact of domain shifts and architecture robustness.MethodsUncertainty prediction could provide a measure for robustness of deep learning (DL)–based MR image reconstruction from undersampled data. DL methods bear the risk of inducing reconstruction errors like in‐painting of unrealistic structures or missing pathologies. These errors may be obscured by visual realism of DL reconstruction and … Show more

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References 36 publications
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