arXiv Open Access 2026

MEDIC-AD: Towards Medical Vision-Language Model's Clinical Intelligence

Woohyeon Park Jaeik Kim Sunghwan Steve Cho Pa Hong Wookyoung Jeong +5 lainnya
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Abstrak

Lesion detection, symptom tracking, and visual explainability are central to real-world medical image analysis, yet current medical Vision-Language Models (VLMs) still lack mechanisms that translate their broad knowledge into clinically actionable outputs. To bridge this gap, we present MEDIC-AD, a clinically oriented VLM that strengthens these three capabilities through a stage-wise framework. First, learnable anomaly-aware tokens (<Ano>) encourage the model to focus on abnormal regions and build more discriminative lesion centered representations. Second, inter image difference tokens (<Diff>) explicitly encode temporal changes between studies, allowing the model to distinguish worsening, improvement, and stability in disease burden. Finally, a dedicated explainability stage trains the model to generate heatmaps that highlight lesion-related regions, offering clear visual evidence that is consistent with the model's reasoning. Through our staged design, MEDIC-AD steadily boosts performance across anomaly detection, symptom tracking, and anomaly segmentation, achieving state-of-the-art results compared with both closed source and medical-specialized baselines. Evaluations on real longitudinal clinical data collected from real hospital workflows further show that MEDIC-AD delivers stable predictions and clinically faithful explanations in practical patient-monitoring and decision-support workflows

Topik & Kata Kunci

Penulis (10)

W

Woohyeon Park

J

Jaeik Kim

S

Sunghwan Steve Cho

P

Pa Hong

W

Wookyoung Jeong

Y

Yoojin Nam

N

Namjoon Kim

G

Ginny Y. Wong

K

Ka Chun Cheung

J

Jaeyoung Do

Format Sitasi

Park, W., Kim, J., Cho, S.S., Hong, P., Jeong, W., Nam, Y. et al. (2026). MEDIC-AD: Towards Medical Vision-Language Model's Clinical Intelligence. https://arxiv.org/abs/2603.27176

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Tahun Terbit
2026
Bahasa
en
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arXiv
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Open Access ✓