While interpretable prototype networks offer compelling case-based reasoning for clinical diagnostics, their raw continuous outputs lack the semantic structure required for medical documentation. Bridging this gap via standard Retrieval-Augmented Generation (RAG) routinely triggers ``retrieval sycophancy,'' where Large Language Models (LLMs) hallucinate post-hoc rationalizations to align with visual predictions. We introduce ProtoMedAgent, a framework that formalizes multimodal clinical reporting as an iterative, zero-gradient test-time optimization problem over a strict neuro-symbolic bottleneck. Operating on a frozen prototype backbone, we distill latent visual and tabular features into a discrete semantic memory. Online generation is strictly constrained by exact set-theoretic differentials and a reflective Scribe-Critic loop, mathematically precluding unsupported narrative claims. To safely bound data disclosure, we introduce a semantic privacy gate governed by k-anonymity and ℓ-diversity. Evaluated on a 4,160-patient clinical cohort, ProtoMedAgent achieves 91.2% Comparison Set Faithfulness where it fundamentally outperforms standard RAG (46.2%). ProtoMedAgent additionally leverages a binding ℓ-diversity phase transition to systematically reduce artifact-level membership inference risks by an absolute 9.8%.
@article{arxiv.2605.14113,
title = {ProtoMedAgent: Multimodal Clinical Interpretability via Privacy-Aware Agentic Workflows},
author = {Alvaro Lopez Pellicer and Plamen Angelov and Marwan Bukhari and Yi Li and Eduardo Soares and Jemma Kerns},
journal= {arXiv preprint arXiv:2605.14113},
year = {2026}
}