IVCVLGMLJul 31, 2019

Uncertainty Quantification in Deep Learning for Safer Neuroimage Enhancement

arXiv:1907.13418v137 citations
Originality Incremental advance
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This work addresses the safety of DL-based image enhancement systems in neuroimaging, particularly for applications like super-resolution, by providing uncertainty measures that can detect failures and assess risks, though it is incremental in extending existing uncertainty methods to this domain.

The paper tackles the problem of uncertainty quantification in deep learning for medical image enhancement, specifically in diffusion MRI super-resolution, by introducing methods to characterize intrinsic and parameter uncertainty and integrating them to quantify predictive uncertainty, resulting in improved predictive performance, error detection, and risk assessment.

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 $intrinsic$ uncertainty through a heteroscedastic noise model and for $parameter$ uncertainty through approximate Bayesian inference, and integrate the two to quantify $predictive$ 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 super-resolution of two different signal representations of diffusion MR images---DTIs and Mean Apparent Propagator MRI---and their derived quantities such as MD and FA, on multiple datasets of both healthy and pathological human brains. Results highlight three key benefits of uncertainty modelling for improving the safety of DL-based image enhancement systems. Firstly, incorporating uncertainty improves the predictive performance even when test data departs from training data. Secondly, the predictive uncertainty highly correlates with errors, and is therefore capable of detecting predictive "failures". Results demonstrate that such an uncertainty measure enables subject-specific and voxel-wise risk assessment of the output images. Thirdly, we show that the method for decomposing predictive uncertainty into its independent sources provides high-level "explanations" for the performance by quantifying how much uncertainty arises from the inherent difficulty of the task or the limited training examples.

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