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A multi-focus oral panoramic x-ray image dataset based on pixel-level annotations.

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  • 1Central South University of Forestry and Technology, Changsha, 410004, China.

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|March 18, 2026
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Summary
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This study introduces a large dental X-ray dataset for artificial intelligence research. The collection of 8,655 images with detailed annotations supports advancements in dental diagnostics and AI model development.

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Area of Science:

  • Dental imaging
  • Artificial Intelligence
  • Medical Informatics

Background:

  • Dental artificial intelligence research requires large, annotated datasets.
  • Existing datasets may lack comprehensive lesion annotations or scale.
  • High-quality panoramic X-ray images are crucial for AI model training.

Purpose of the Study:

  • To develop and present a large-scale, meticulously annotated dataset of panoramic dental X-ray images.
  • To facilitate research in dental artificial intelligence, focusing on lesion detection and diagnosis.
  • To provide a reliable resource for training and validating AI models in dentistry.

Main Methods:

  • Collected 8,655 de-identified panoramic X-ray images from Changsha Stomatological Hospital.
  • Utilized LabelMe software for manual, pixel-level annotation of over 30,186 lesion regions by 20 dental imaging specialists.
  • Ensured annotation precision and clinical reliability through rigorous expert delineation of tooth contours and oral conditions.

Main Results:

  • The dataset contains 8,655 panoramic X-ray images with 30,186+ pixel-level annotations of oral lesions.
  • Annotations cover tooth segmentation and various common oral conditions, validated for precision.
  • Deep learning models demonstrated strong generalization capabilities when trained on this dataset.

Conclusions:

  • The presented dataset is a valuable, large-scale resource for advancing dental artificial intelligence.
  • It supports diverse applications including tooth segmentation, lesion detection, and computer-aided diagnosis.
  • The dataset's validated effectiveness indicates its potential to improve AI-driven dental diagnostics.