Exploring Entropy-based Active Learning for Fair Brain Segmentation
Ghazal Danaee, M\'elanie Gaillochet, Christian Desrosiers, Herve Lombaert, Sylvain Bouix

TL;DR
This paper presents a fairness-aware active learning framework for medical image segmentation that reduces performance disparities across groups, demonstrated on brain MRI data with controlled biases.
Contribution
Introduces a novel fairness-aware active learning method with a weighted entropy strategy to improve equity in medical image segmentation tasks.
Findings
Significantly reduces group performance disparities compared to standard methods.
Achieves highest equity-scaled performance and reduces disparity by up to 86%.
Effective in resource-constrained settings with biased initial data.
Abstract
Active learning (AL) has emerged as a crucial strategy for reducing the prohibitive costs associated with medical image segmentation. However, standard uncertainty-based AL methods typically focus on maximizing performance metrics, ignoring performance disparities or fairness across groups with sensitive attributes. While fair active learning has been explored in classification tasks, its intersection with medical image segmentation remains unaddressed. In this work, we introduced a fairness-aware active learning framework with a Weighted Entropy selection strategy that modulates uncertainty based on current group-specific performance estimates on the labeled set. To decouple true epistemic uncertainty from anatomical volume variances, we further utilized a masked, scaled entropy restricted to the region of interest. The framework was evaluated on synthetic T1-weighted brain MRIs with…
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