Uncertainty estimation using boundary prediction for medical image super-resolution

Medical image super-resolution can be performed by several deep learning frameworks. However, as the safety of each patient is of primary concern, having models with a high degree of population level accuracy is not enough. Instead of a one size fits all approach, there is a need to measure the reli...

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Bibliographic Details
Published inComputer vision and image understanding Vol. 256; p. 104349
Main Authors Dey, Samiran, Basuchowdhuri, Partha, Mitra, Debasis, Augustine, Robin, Saha, Sanjoy Kumar, Chakraborti, Tapabrata
Format Journal Article
LanguageEnglish
Published Elsevier Inc 01.05.2025
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Summary:Medical image super-resolution can be performed by several deep learning frameworks. However, as the safety of each patient is of primary concern, having models with a high degree of population level accuracy is not enough. Instead of a one size fits all approach, there is a need to measure the reliability and trustworthiness of such models from the point of view of personalized healthcare and precision medicine. Hence, in this paper, we propose a novel approach to predict a range of super-resolved (SR) images that any generative super-resolution model may yield for a given low-resolution (LR) image using residual image prediction. Providing multiple images within the suggested lower and upper bound increases the probability of finding an exact match to the high-resolution (HR) image. To further compare models and provide reliability scores, we estimate the coverage and uncertainty of the models and check if coverage can be improved at the cost of increasing uncertainty. Experimental results on lung CT scans from LIDC-IDRI and Radiopedia COVID-19 CT Images Segmentation datasets show that our models, BliMSR and MoMSGAN, provide the best HR and SR coverage at different levels of residual attention with a comparatively lower uncertainty. We believe our model agnostic approach to uncertainty estimation for generative medical imaging is the first of its kind and would help clinicians decide on the trustworthiness of any super-resolution model in a generalized manner while providing alternate SR images with enhanced details for better diagnosis for each individual patient. •We estimate uncertainty and coverage of generative medical image SR models.•Residual learning is used to predict SR image sets close to ground truth.•Predicted bounds give detail-enhanced range of SR images to clinicians.•The uncertainty estimates act as a novel metric in personalized healthcare.
ISSN:1077-3142
1090-235X
DOI:10.1016/j.cviu.2025.104349