Explaining the predictions of neural models in clinical NLP remains a significant challenge, especially for complex tasks involving long, unstructured medical texts. While post-hoc methods like LIME and SHAP are widely used, they often fall short when applied to clinical narratives. In this paper, we identify core limitations of token-level and perturbation-based explanation techniques through targeted demonstra- tions on a hospital length-of-stay prediction task. Our findings reveal issues such as overemphasis on non-informative tokens, instability in at- tributions, and high-confidence predictions for incoherent input variants. These results underscore the need for explanation strategies that are clin- ically meaningful, semantically grounded, and robust to linguistic noise.
@article{arxiv.2605.28060,
title = {Challenges in Explaining Pretrained Clinical Text Classifiers},
author = {Kristian Miok and Matej Klemen and Blaz Škrlj and Marko Robnik Šikonja},
journal= {arXiv preprint arXiv:2605.28060},
year = {2026}
}
Comments
9 pages, 7 figures. Accepted at the First Workshop on Responsible Healthcare using Machine Learning (RHCML 2025), co-located with ECML PKDD 2025