CVJun 14, 2024

Detecting and Evaluating Medical Hallucinations in Large Vision Language Models

arXiv:2406.10185v156 citations
Originality Incremental advance
AI Analysis

This addresses the critical issue of hallucinations in high-stakes medical contexts, providing tools for improved reliability, though it is incremental as it builds on existing LVLM frameworks.

The authors tackled the problem of hallucinations in Large Vision Language Models (LVLMs) for medical applications by introducing Med-HallMark, the first benchmark for hallucination detection and evaluation, and proposed the MediHall Score metric and MediHallDetector model, showing enhanced performance in nuanced assessment.

Large Vision Language Models (LVLMs) are increasingly integral to healthcare applications, including medical visual question answering and imaging report generation. While these models inherit the robust capabilities of foundational Large Language Models (LLMs), they also inherit susceptibility to hallucinations-a significant concern in high-stakes medical contexts where the margin for error is minimal. However, currently, there are no dedicated methods or benchmarks for hallucination detection and evaluation in the medical field. To bridge this gap, we introduce Med-HallMark, the first benchmark specifically designed for hallucination detection and evaluation within the medical multimodal domain. This benchmark provides multi-tasking hallucination support, multifaceted hallucination data, and hierarchical hallucination categorization. Furthermore, we propose the MediHall Score, a new medical evaluative metric designed to assess LVLMs' hallucinations through a hierarchical scoring system that considers the severity and type of hallucination, thereby enabling a granular assessment of potential clinical impacts. We also present MediHallDetector, a novel Medical LVLM engineered for precise hallucination detection, which employs multitask training for hallucination detection. Through extensive experimental evaluations, we establish baselines for popular LVLMs using our benchmark. The findings indicate that MediHall Score provides a more nuanced understanding of hallucination impacts compared to traditional metrics and demonstrate the enhanced performance of MediHallDetector. We hope this work can significantly improve the reliability of LVLMs in medical applications. All resources of this work will be released soon.

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