LGJul 17, 2025

Insights into a radiology-specialised multimodal large language model with sparse autoencoders

CambridgeMicrosoft
arXiv:2507.12950v22 citationsh-index: 19Has Code
Originality Synthesis-oriented
AI Analysis

This work addresses interpretability for healthcare AI, specifically in radiology, but is incremental as it applies existing methods to a new model.

The study applied sparse autoencoders to the radiology-specialized multimodal large language model MAIRA-2 to interpret its internal representations, identifying clinically relevant concepts like medical devices and pathologies, and demonstrated steering with mixed success, revealing practical challenges.

Interpretability can improve the safety, transparency and trust of AI models, which is especially important in healthcare applications where decisions often carry significant consequences. Mechanistic interpretability, particularly through the use of sparse autoencoders (SAEs), offers a promising approach for uncovering human-interpretable features within large transformer-based models. In this study, we apply Matryoshka-SAE to the radiology-specialised multimodal large language model, MAIRA-2, to interpret its internal representations. Using large-scale automated interpretability of the SAE features, we identify a range of clinically relevant concepts - including medical devices (e.g., line and tube placements, pacemaker presence), pathologies such as pleural effusion and cardiomegaly, longitudinal changes and textual features. We further examine the influence of these features on model behaviour through steering, demonstrating directional control over generations with mixed success. Our results reveal practical and methodological challenges, yet they offer initial insights into the internal concepts learned by MAIRA-2 - marking a step toward deeper mechanistic understanding and interpretability of a radiology-adapted multimodal large language model, and paving the way for improved model transparency. We release the trained SAEs and interpretations: https://huggingface.co/microsoft/maira-2-sae.

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