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Related Concept Videos

Tooth Anatomy01:21

Tooth Anatomy

1.1K
The human tooth enables us to eat a variety of foods, speak clearly, and even aid in shaping our faces. Teeth are composed of various elements that work together. Here's a detailed look at the anatomy of a human tooth.
The Crown, Neck, and Root
The visible part of the tooth is referred to as the crown. It's covered by enamel, the hardest substance in the human body. The crown is uniquely shaped for each type of tooth, allowing for different functions such as cutting, tearing, or...
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Benchmarking Deep Learning Models for Tooth Structure Segmentation.

L Schneider1,2, L Arsiwala-Scheppach1,2, J Krois1,2

  • 1Department of Oral Diagnostics, Digital Health and Health Services Research, Charité-Universitätsmedizin, Berlin, Germany.

Journal of Dental Research
|June 10, 2022
PubMed
Summary
This summary is machine-generated.

Benchmarking deep learning models for dental radiography shows pre-trained weights improve performance. Less complex models offer competitive alternatives, while complex ones achieve peak results, highlighting the importance of task-specific evaluation.

Keywords:
artificial intelligencecomputer visionneural networkssegmentationtooth structurestransfer learning

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Area of Science:

  • Artificial Intelligence in Dentistry
  • Deep Learning for Medical Imaging
  • Radiographic Analysis

Background:

  • Deep learning (DL) model selection for dental applications is often unsystematic.
  • Comprehensive benchmarking of DL architectures in dentistry is lacking.
  • Tooth structure segmentation on dental radiographs is a critical task.

Purpose of the Study:

  • To systematically benchmark various deep learning architectures for tooth structure segmentation on dental bitewing radiographs.
  • To evaluate the impact of different network architectures, encoders, and initialization strategies on segmentation performance.

Main Methods:

  • Developed 72 distinct DL models by combining 6 network architectures with 12 encoders (ResNet, VGG, DenseNet families).
  • Applied 3 initialization strategies (ImageNet, CheXpert, random) to 216 trained models.
  • Utilized a dataset of 1,625 annotated radiographs, 5-fold cross-validation, and F1-score for performance quantification.

Main Results:

  • Initialization with ImageNet or CheXpert weights significantly outperformed random initialization (P < 0.05).
  • Deeper, more complex models did not consistently outperform simpler alternatives.
  • VGG-based models demonstrated robustness, while ResNet-based models achieved peak performance.

Conclusions:

  • Pre-trained weights are recommended for training DL models in dental radiographic analysis.
  • Less complex architectures can be viable alternatives when computational resources are limited.
  • Models optimized for non-dental tasks may not generalize effectively to dental-specific challenges.