Uncertainty estimation for out-of-distribution detection in computational histopathology
–arXiv.org Artificial Intelligence
In computational histopathology algorithms now outperform humans on a range of tasks, but to date none are employed for automated diagnoses in the clinic. Before algorithms can be involved in such high-stakes decisions they need to "know when they don't know", i.e., they need to estimate their predictive uncertainty. This allows them to defer potentially erroneous predictions to a human pathologist, thus increasing their safety. Here, we evaluate the predictive performance and calibration of several uncertainty estimation methods on clinical histopathology data. We show that a distance-aware uncertainty estimation method outperforms commonly used approaches, such as Monte Carlo dropout and deep ensembles. However, we observe a drop in predictive performance and calibration on novel samples across all uncertainty estimation methods tested. We also investigate the use of uncertainty thresholding to reject out-of-distribution samples for selective prediction. We demonstrate the limitations of this approach and suggest areas for future research.
arXiv.org Artificial Intelligence
Oct-18-2022
- Country:
- North America > United States (0.28)
- Genre:
- Research Report > New Finding (0.46)
- Industry:
- Health & Medicine
- Therapeutic Area > Oncology (1.00)
- Pharmaceuticals & Biotechnology (0.93)
- Diagnostic Medicine > Imaging (0.68)
- Health & Medicine
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