Science and Technology Production

International Conference on Medical Image Computing and Computer-Assisted Intervention - Maximum Entropy on Erroneous Predictions (MEEP): Improving model calibration for medical image segmentation

Congress

Authorship:

FERRANTE, ENZO

Date:

2023

Publishing House and Editing Place:

Springer Nature

Summary *

Modern deep neural networks achieved remarkable progress in medical image segmentation tasks. However, it has recently been observed that they tend to produce overconfident estimates, even in situations of high uncertainty, leading to poorly calibrated and unreliable models. In this work we introduce Maximum Entropy on Erroneous Predictions (MEEP), a training strategy for segmentation networks which selectively penalizes overconfident predictions, focusing only on misclassified pixels. Our method is agnostic to the neural architecture, does not increase model complexity and can be coupled with multiple segmentation loss functions. We benchmark the proposed strategy in two challenging segmentation tasks: white matter hyperintensity lesions in magnetic resonance images (MRI) of the brain, and atrial segmentation in cardiac MRI. The experimental results demonstrate that coupling MEEP with standard segmentation losses leads to improvements not only in terms of model calibration, but also in segmentation quality. Information provided by the agent in SIGEVA

Key Words

segmentationcalibrationentropydeep learning