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Age Group Classification of Dental Radiography without Precise Age Information Using Convolutional Neural Networks.

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This study shows artificial intelligence can estimate tooth age from dental X-rays even without exact age data. The deep neural network achieved high accuracy, proving AI

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Area of Science:

  • Forensic Dentistry
  • Artificial Intelligence in Healthcare
  • Radiographic Imaging Analysis

Background:

  • Accurate age estimation from dental radiographs is crucial for forensic science and personalized oral healthcare.
  • Deep neural networks (DNNs) have improved age estimation accuracy but require extensive labeled datasets, which are often unavailable.
  • This research addresses the challenge of age estimation when precise age labels are limited.

Purpose of the Study:

  • To investigate the efficacy of a deep neural network (DNN) model for estimating tooth age using panoramic dental radiographs without precise age information.
  • To evaluate the performance of the DNN model with image augmentation techniques.

Main Methods:

  • Development of a DNN model for age estimation from dental radiographs.
  • Application of an image augmentation technique to enhance the dataset.
  • Classification of 10,023 images into age groups (10s to 70s).
  • Validation using 10-fold cross-validation and calculation of accuracies with varying tolerances (±5, ±15, ±25 years).

Main Results:

  • The DNN model achieved high accuracies: 53.846% (±5 years), 95.121% (±15 years), and 99.581% (±25 years).
  • The probability of the estimation error exceeding one age group was found to be 0.419%.
  • The model demonstrated effective age estimation capabilities despite the absence of precise age labels.

Conclusions:

  • Artificial intelligence, specifically DNNs, shows significant potential for reliable tooth age estimation from dental radiographs.
  • The developed model is applicable in both forensic investigations and clinical oral healthcare settings.
  • Image augmentation and DNNs can overcome limitations of small labeled datasets in dental age estimation.