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Related Concept Videos

Teeth01:15

Teeth

394
The formation of teeth, also known as odontogenesis, is a complex process that begins in utero, around the sixth week of embryonic development. There are three stages to this process: the bud stage, the cap stage, and the bell stage.
In the bud stage, the tooth germ (an aggregation of cells) starts to form in the developing jawbone. During the cap stage, the tooth germ differentiates into enamel organ, dental papilla, and dental sac, which will later develop into the tooth's enamel, dentin...
394

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Machine learning assisted 5-part tooth segmentation method for CBCT-based dental age estimation in adults.

R Merdietio Boedi1, S Shepherd2, F Oscandar3

  • 1Department of Dentistry, Faculty of Medicine, Universitas Diponegoro, Semarang, Indonesia.

The Journal of Forensic Odonto-Stomatology
|May 14, 2024
PubMed
Summary

This study used cone-beam computed tomography (CBCT) and machine learning for adult dental age estimation. The best model utilized maxillary lateral incisors, achieving 4.86 years mean error.

Keywords:
Age Determination by TeethCone Beam Computed TomographyForensic DentistrySupervised Machine Learning

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Area of Science:

  • Forensic Dentistry
  • Radiology
  • Biometrics

Background:

  • Dental age estimation (DAE) in adults using volumetric data from cone-beam computed tomography (CBCT) is an evolving field.
  • The 5-Part Tooth Segmentation (SG) method enhances DAE accuracy.
  • Supervised machine learning models were explored for DAE.

Purpose of the Study:

  • To evaluate the effectiveness of supervised machine learning models for adult DAE using CBCT data.
  • To compare Support Vector Regression (SVR) and regression tree models against multiple linear regression.
  • To assess the utility of volumetric tooth measurements and sex as predictors of chronological age.

Main Methods:

  • CBCT scans from 99 patients (aged 20-59.99) were analyzed.
  • Eighty teeth (maxillary canine, lateral incisor, central incisor) were segmented.
  • Enamel-dentine volume ratio, pulp-dentine volume ratio, tooth volume ratio, and sex were used as independent variables.

Main Results:

  • No multicollinearity was detected among the predictor variables.
  • Support Vector Regression (SVR) with a polynomial kernel using the maxillary lateral incisor yielded the best performance (R² = 0.73).
  • The optimal model achieved a mean average error of 4.86 years and a root mean squared error of 6.05 years, though segmentation was complex and time-consuming.

Conclusions:

  • Machine learning, particularly SVR with a polynomial kernel, shows promise for adult DAE using CBCT volumetric data.
  • Maxillary lateral incisors are effective predictors of chronological age in this population.
  • Further refinement is needed to optimize segmentation techniques and reduce the labor time for clinical application.