Uncertainty Quantification in Deep Learning for Safer Neuroimage Enhancement
Ryutaro Tanno, Daniel Worrall, Enrico Kaden, Aurobrata Ghosh,, Francesco Grussu, Alberto Bizzi, Stamatios N. Sotiropoulos, Antonio, Criminisi, Daniel C. Alexander

TL;DR
This paper introduces methods for quantifying uncertainty in deep learning-based neuroimage enhancement, improving safety, reliability, and interpretability of super-resolution MRI techniques.
Contribution
It proposes a combined heteroscedastic noise model and Bayesian inference approach to quantify intrinsic, parameter, and predictive uncertainty in MRI super-resolution.
Findings
Uncertainty modeling improves predictive accuracy on out-of-distribution data.
Predictive uncertainty correlates with errors, enabling failure detection.
Decomposition of uncertainty sources offers explanations for model performance.
Abstract
Deep learning (DL) has shown great potential in medical image enhancement problems, such as super-resolution or image synthesis. However, to date, little consideration has been given to uncertainty quantification over the output image. Here we introduce methods to characterise different components of uncertainty in such problems and demonstrate the ideas using diffusion MRI super-resolution. Specifically, we propose to account for uncertainty through a heteroscedastic noise model and for uncertainty through approximate Bayesian inference, and integrate the two to quantify uncertainty over the output image. Moreover, we introduce a method to propagate the predictive uncertainty on a multi-channelled image to derived scalar parameters, and separately quantify the effects of intrinsic and parameter uncertainty therein. The methods are evaluated for…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsSparse and Compressive Sensing Techniques · Model Reduction and Neural Networks · Image and Signal Denoising Methods
