Erase to Retain: Low Rank Adaptation Guided Selective Unlearning in Medical Segmentation Networks
Nirjhor Datta, Md. Golam Rabiul Alam

TL;DR
This paper presents Erase to Retain, a novel low-rank adaptation guided framework for controllable unlearning in medical segmentation networks, enabling targeted forgetting while maintaining overall performance.
Contribution
It introduces a LoRA-based subspace unlearning method that selectively erases specific knowledge in medical image segmentation models without full retraining.
Findings
Significantly reduces forget-set IoU in segmentation tasks
Maintains or improves performance on retained data and validation sets
Effectively decreases classification accuracy on sensitive subsets
Abstract
The ability to selectively remove knowledge from medical segmentation networks is increasingly important for privacy compliance, ethical deployment, and continual dataset revision. We introduce Erase to Retain, a controllable unlearning framework for medical image segmentation that achieves targeted forgetting without full retraining. Our method uses a teacher-student distillation paradigm with Low-Rank Adaptation (LoRA) constrained subspace updates, enabling the student network to erase lesion-specific or class-specific representations in low-rank decoder spaces while preserving global anatomical understanding. During the strong unlearning phase, LoRA modules are adversarially optimized to contradict the teacher's confident predictions on a designated forget subset, enforcing semantic removal. This is followed by a gentle restoration phase that recovers generalization on retained data…
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Taxonomy
TopicsAdvanced Neural Network Applications · AI in cancer detection · COVID-19 diagnosis using AI
