Scientific Reports (Aug 2024)

Estimation of human age using machine learning on panoramic radiographs for Brazilian patients

  • Willian Oliveira,
  • Mariana Albuquerque Santos,
  • Caio Augusto Pereira Burgardt,
  • Maria Luiza Anjos Pontual,
  • Cleber Zanchettin

DOI
https://doi.org/10.1038/s41598-024-70621-1
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 16

Abstract

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Abstract This paper addresses a relevant problem in Forensic Sciences by integrating radiological techniques with advanced machine learning methodologies to create a non-invasive, efficient, and less examiner-dependent approach to age estimation. Our study includes a new dataset of 12,827 dental panoramic X-ray images representing the Brazilian population, covering an age range from 2.25 to 96.50 years. To analyze these exams, we employed a model adapted from InceptionV4, enhanced with data augmentation techniques. The proposed approach achieved robust and reliable results, with a Test Mean Absolute Error of 3.1 years and an R-squared value of 95.5%. Professional radiologists have validated that our model focuses on critical features for age assessment used in odontology, such as pulp chamber dimensions and stages of permanent teeth calcification. Importantly, the model also relies on anatomical information from the mandible, maxillary sinus, and vertebrae, which enables it to perform well even in edentulous cases. This study demonstrates the significant potential of machine learning to revolutionize age estimation in Forensic Science, offering a more accurate, efficient, and universally applicable solution.

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