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Bibliographic Details
Main Authors: Jang, Leeje, Chiang, Yao-Yi, Hastings, Angela M., Pungchanchaikul, Patimaporn, Lucas, Martha B., Schultz, Emily C., Louie, Jeffrey P., Estai, Mohamed, Wang, Wen-Chen, Ip, Ryan H. L., Huang, Boyen
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.07041
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Table of Contents:
  • Accurate dental diagnosis is essential for oral healthcare, yet many individuals lack access to timely professional evaluation. Existing AI-based methods primarily treat diagnosis as a visual pattern recognition task and do not reflect the structured clinical reasoning used by dental professionals. These approaches also require large amounts of expert-annotated data and often struggle to generalize across diverse real-world imaging conditions. To address these limitations, we present OMNI-Dent, a data-efficient and explainable diagnostic framework that incorporates clinical reasoning principles into a Vision-Language Model (VLM)-based pipeline. The framework operates on multi-view smartphone photographs,embeds diagnostic heuristics from dental experts, and guides a general-purpose VLM to perform tooth-level evaluation without dental-specific fine-tuning of the VLM. By utilizing the VLM's existing visual-linguistic capabilities, OMNI-Dent aims to support diagnostic assessment in settings where curated clinical imaging is unavailable. Designed as an early-stage assistive tool, OMNI-Dent helps users identify potential abnormalities and determine when professional evaluation may be needed, offering a practical option for individuals with limited access to in-person care.