Trustworthy clinical AI solutions: A unified review of uncertainty quantification in Deep Learning models for medical image analysis
Inserm · Ylec Consultants · +6 more institutions
Abstract
The full acceptance of Deep Learning (DL) models in the clinical field is rather low with respect to the quantity of high-performing solutions reported in the literature. End users are particularly reluctant to rely on the opaque predictions of DL models. Uncertainty quantification methods have been proposed in the literature as a potential solution, to reduce the black-box effect of DL models and increase the interpretability and the acceptability of the result by the final user. In this review, we propose an overview of the existing methods to quantify uncertainty associated with DL predictions. We focus on applications to medical image analysis, which present specific challenges due to the high…
Citation impact
- FWCI
- 19.03
- Percentile
- 100%
- References
- 310
Authors
5- BLBenjamin Lambert
Inserm, Ylec Consultants, Grenoble Institute of Neurosciences, Université Grenoble Alpes
- FFFlorence Forbes
Institut polytechnique de Grenoble, Centre National de la Recherche Scientifique, Centre Inria de l'Université Grenoble Alpes, Laboratoire Jean Kuntzmann, Université Grenoble Alpes
- SDSenan Doyle
Ylec Consultants
- HDHarmonie Dehaene
Ylec Consultants
- MDMichel DojatCorresponding
Inserm, Grenoble Institute of Neurosciences, Université Grenoble Alpes
Topics & keywords
- Interpretability
- Computer science
- Field (mathematics)
- Artificial intelligence
- Deep learning
- Machine learning
- Relevance (law)
- Uncertainty analysis