Multimodal Learning 相关度: 9/10

MedForge: Interpretable Medical Deepfake Detection via Forgery-aware Reasoning

Zhihui Chen, Kai He, Qingyuan Lei, Bin Pu, Jian Zhang, Yuling Xu, Mengling Feng
arXiv: 2603.18577v1 发布: 2026-03-19 更新: 2026-03-19

AI 摘要

MedForge提出一种可解释的医学Deepfake检测方法,提高了检测精度和可信度。

主要贡献

  • 构建了MedForge-90K医学Deepfake数据集
  • 提出了MedForge-Reasoner检测模型
  • 提出了Forgery-aware GSPO对齐方法

方法论

MedForge-Reasoner采用localize-then-analyze的推理方式,先定位可疑区域再进行分析,并使用Forgery-aware GSPO对齐。

原文摘要

Text-guided image editors can now manipulate authentic medical scans with high fidelity, enabling lesion implantation/removal that threatens clinical trust and safety. Existing defenses are inadequate for healthcare. Medical detectors are largely black-box, while MLLM-based explainers are typically post-hoc, lack medical expertise, and may hallucinate evidence on ambiguous cases. We present MedForge, a data-and-method solution for pre-hoc, evidence-grounded medical forgery detection. We introduce MedForge-90K, a large-scale benchmark of realistic lesion edits across 19 pathologies with expert-guided reasoning supervision via doctor inspection guidelines and gold edit locations. Building on it, MedForge-Reasoner performs localize-then-analyze reasoning, predicting suspicious regions before producing a verdict, and is further aligned with Forgery-aware GSPO to strengthen grounding and reduce hallucinations. Experiments demonstrate state-of-the-art detection accuracy and trustworthy, expert-aligned explanations.

标签

医学图像 Deepfake检测 可解释性 MLLM

arXiv 分类

cs.AI