CVSep 19, 2025

Toward Medical Deepfake Detection: A Comprehensive Dataset and Novel Method

arXiv:2509.15711v16 citationsh-index: 16MICCAI
Originality Incremental advance
AI Analysis

This work addresses the critical need for medical deepfake detection to prevent diagnostic deception and fraud in healthcare, representing a domain-specific advancement.

The paper tackles the problem of detecting AI-generated fake medical images by introducing a comprehensive dataset (MedForensics) and a novel detection method (DSKI), which significantly outperforms existing methods and human experts with superior accuracy across multiple medical modalities.

The rapid advancement of generative AI in medical imaging has introduced both significant opportunities and serious challenges, especially the risk that fake medical images could undermine healthcare systems. These synthetic images pose serious risks, such as diagnostic deception, financial fraud, and misinformation. However, research on medical forensics to counter these threats remains limited, and there is a critical lack of comprehensive datasets specifically tailored for this field. Additionally, existing media forensic methods, which are primarily designed for natural or facial images, are inadequate for capturing the distinct characteristics and subtle artifacts of AI-generated medical images. To tackle these challenges, we introduce \textbf{MedForensics}, a large-scale medical forensics dataset encompassing six medical modalities and twelve state-of-the-art medical generative models. We also propose \textbf{DSKI}, a novel \textbf{D}ual-\textbf{S}tage \textbf{K}nowledge \textbf{I}nfusing detector that constructs a vision-language feature space tailored for the detection of AI-generated medical images. DSKI comprises two core components: 1) a cross-domain fine-trace adapter (CDFA) for extracting subtle forgery clues from both spatial and noise domains during training, and 2) a medical forensic retrieval module (MFRM) that boosts detection accuracy through few-shot retrieval during testing. Experimental results demonstrate that DSKI significantly outperforms both existing methods and human experts, achieving superior accuracy across multiple medical modalities.

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