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Related Experiment Video

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Digital Hybrid Model Preparation for Virtual Planning of Reconstructive Dentoalveolar Surgical Procedures
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Study on virtual tooth image generation utilizing CF-fill and Pix2pix for data augmentation.

Soo-Yeon Jeong1, Eun-Jeong Bae2, Hyun Soo Jang3

  • 1Division of Software Engineering, Pai Chai University, Daejeon, 35345, Republic of Korea.

Scientific Reports
|November 5, 2024
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Summary

Generating virtual tooth images using AI can streamline dental prosthetic workflows. Combining real and AI-generated images for training deep learning models significantly improves performance, approaching results from using only real patient data.

Keywords:
CR-FillData augmentationGAN (generative adversarial network)Image inpaintingPix2pix

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Area of Science:

  • Artificial Intelligence in Dentistry
  • Digital Dentistry
  • Medical Imaging

Background:

  • Traditional dental prosthetics are labor-intensive and time-consuming.
  • Deep learning models can automate dental prosthetic processes but require extensive training data.
  • Patient privacy concerns limit the use of real dental images in research.

Purpose of the Study:

  • To develop a method for generating realistic virtual tooth images for training AI models.
  • To address the challenge of limited access to real patient dental data.

Main Methods:

  • Utilized image-to-image translation (pix2pix) to generate diverse virtual tooth images.
  • Employed contextual reconstruction fill (CR-Fill) to refine virtual images and ensure anatomical accuracy.
  • Compared the performance of deep learning models trained on real images, virtual images, and a combination of both.

Main Results:

  • The proposed method successfully generated virtual tooth images visually similar to real intraoral scans.
  • Models trained solely on virtual images showed suboptimal performance.
  • Training models with a combination of real and virtual images achieved performance comparable to models trained exclusively on real images.

Conclusions:

  • AI-driven generation of virtual dental images is a viable solution to overcome data limitations in research.
  • Hybrid training datasets (real and virtual images) offer a promising approach for developing robust AI models in dental prosthetics.
  • This method can accelerate the development and adoption of AI in digital dentistry.