benchmark arXiv Oct 14, 2025 · Oct 2025
Sana Tonekaboni, Lena Stempfle, Adibvafa Fallahpour et al. · MIT · Broad Institute +6 more
Black-box evaluation framework measuring extractable patient data memorization in healthcare EHR foundation models at embedding and generative levels
Model Inversion Attack tabular
Foundation models trained on large-scale de-identified electronic health records (EHRs) hold promise for clinical applications. However, their capacity to memorize patient information raises important privacy concerns. In this work, we introduce a suite of black-box evaluation tests to assess privacy-related memorization risks in foundation models trained on structured EHR data. Our framework includes methods for probing memorization at both the embedding and generative levels, and aims to distinguish between model generalization and harmful memorization in clinically relevant settings. We contextualize memorization in terms of its potential to compromise patient privacy, particularly for vulnerable subgroups. We validate our approach on a publicly available EHR foundation model and release an open-source toolkit to facilitate reproducible and collaborative privacy assessments in healthcare AI.
transformer MIT · Broad Institute · Vector Institute +5 more