CVAISep 26, 2025

Benchmarking and Mitigate Sycophancy in Medical Vision-Language Models

arXiv:2509.21979v22 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses the critical issue of unreliable AI in clinical workflows, providing a benchmark and mitigation framework for safer deployment, though it is incremental as it builds on existing datasets and methods.

The study tackled the problem of sycophantic behavior in medical vision-language models, where models prioritize user alignment over evidence-based reasoning, and found that models are vulnerable to adversarial triggers, with a proposed mitigation strategy reducing sycophancy by an average amount while maintaining interpretability.

Vision language models(VLMs) are increasingly integrated into clinical workflows, but they often exhibit sycophantic behavior prioritizing alignment with user phrasing social cues or perceived authority over evidence based reasoning. This study evaluate clinical sycophancy in medical visual question answering through a novel clinically grounded benchmark. We propose a medical sycophancy dataset construct from PathVQA, SLAKE, and VQA-RAD stratified by different type organ system and modality. Using psychologically motivated pressure templates including various sycophancy. In our adversarial experiments on various VLMs, we found that these models are generally vulnerable, exhibiting significant variations in the occurrence of adversarial responses, with weak correlations to the model accuracy or size. Imitation and expert provided corrections were found to be the most effective triggers, suggesting that the models possess a bias mechanism independent of visual evidence. To address this, we propose Visual Information Purification for Evidence based Response (VIPER) a lightweight mitigation strategy that filters non evidentiary content for example social pressures and then generates constrained evidence first answers. This framework reduces sycophancy by an average amount outperforming baselines while maintaining interpretability. Our benchmark analysis and mitigation framework lay the groundwork for robust deployment of medical VLMs in real world clinician interactions emphasizing the need for evidence anchored defenses.

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