English

Med-SegLens: Latent-Level Model Diffing for Interpretable Medical Image Segmentation

Computer Vision and Pattern Recognition 2026-02-12 v1

Abstract

Modern segmentation models achieve strong predictive performance but remain largely opaque, limiting our ability to diagnose failures, understand dataset shift, or intervene in a principled manner. We introduce Med-SegLens, a model-diffing framework that decomposes segmentation model activations into interpretable latent features using sparse autoencoders trained on SegFormer and U-Net. Through cross-architecture and cross-dataset latent alignment across healthy, adult, pediatric, and sub-Saharan African glioma cohorts, we identify a stable backbone of shared representations, while dataset shift is driven by differential reliance on population-specific latents. We show that these latents act as causal bottlenecks for segmentation failures, and that targeted latent-level interventions can correct errors and improve cross-dataset adaption without retraining, recovering performance in 70% of failure cases and improving Dice score from 39.4% to 74.2%. Our results demonstrate that latent-level model diffing provides a practical and mechanistic tool for diagnosing failures and mitigating dataset shift in segmentation models.

Keywords

Cite

@article{arxiv.2602.10508,
  title  = {Med-SegLens: Latent-Level Model Diffing for Interpretable Medical Image Segmentation},
  author = {Salma J. Ahmed and Emad A. Mohammed and Azam Asilian Bidgoli},
  journal= {arXiv preprint arXiv:2602.10508},
  year   = {2026}
}
R2 v1 2026-07-01T10:31:11.844Z