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arXiv 提交日期: 2025-12-12
📄 Abstract - DentalGPT: Incentivizing Multimodal Complex Reasoning in Dentistry

Reliable interpretation of multimodal data in dentistry is essential for automated oral healthcare, yet current multimodal large language models (MLLMs) struggle to capture fine-grained dental visual details and lack sufficient reasoning ability for precise diagnosis. To address these limitations, we present DentalGPT, a specialized dental MLLM developed through high-quality domain knowledge injection and reinforcement learning. Specifically, the largest annotated multimodal dataset for dentistry to date was constructed by aggregating over 120k dental images paired with detailed descriptions that highlight diagnostically relevant visual features, making it the multimodal dataset with the most extensive collection of dental images to date. Training on this dataset significantly enhances the MLLM's visual understanding of dental conditions, while the subsequent reinforcement learning stage further strengthens its capability for multimodal complex reasoning. Comprehensive evaluations on intraoral and panoramic benchmarks, along with dental subsets of medical VQA benchmarks, show that DentalGPT achieves superior performance in disease classification and dental VQA tasks, outperforming many state-of-the-art MLLMs despite having only 7B parameters. These results demonstrate that high-quality dental data combined with staged adaptation provides an effective pathway for building capable and domain-specialized dental MLLMs.

顶级标签: medical multi-modal model training
详细标签: dental ai multimodal llm domain adaptation reinforcement learning medical vqa 或 搜索:

DentalGPT:激励牙科领域多模态复杂推理 / DentalGPT: Incentivizing Multimodal Complex Reasoning in Dentistry


1️⃣ 一句话总结

这篇论文提出了一个名为DentalGPT的牙科专用多模态大模型,它通过注入高质量牙科数据和强化学习,显著提升了模型对牙科图像的细节理解与复杂推理能力,从而在疾病分类和问答任务上超越了其他先进模型。


源自 arXiv: 2512.11558