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Evaluates the use of Discrete Semantic Entropy (DSE) as a method to filter questions likely to cause hallucinations in black-box radiology Vision-Language Models (VLMs). By excluding high-entropy questions, the study demonstrates potential improvements in VLM accuracy for medical image-based VQA.
Increases the reliability and trustworthiness of AI tools in radiology, potentially leading to safer and more accurate diagnostic support systems.