Diagnostics (Jun 2023)

Classification of Maxillofacial Morphology by Artificial Intelligence Using Cephalometric Analysis Measurements

  • Akane Ueda,
  • Cami Tussie,
  • Sophie Kim,
  • Yukinori Kuwajima,
  • Shikino Matsumoto,
  • Grace Kim,
  • Kazuro Satoh,
  • Shigemi Nagai

DOI
https://doi.org/10.3390/diagnostics13132134
Journal volume & issue
Vol. 13, no. 13
p. 2134

Abstract

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The characteristics of maxillofacial morphology play a major role in orthodontic diagnosis and treatment planning. While Sassouni’s classification scheme outlines different categories of maxillofacial morphology, there is no standardized approach to assigning these classifications to patients. This study aimed to create an artificial intelligence (AI) model that uses cephalometric analysis measurements to accurately classify maxillofacial morphology, allowing for the standardization of maxillofacial morphology classification. This study used the initial cephalograms of 220 patients aged 18 years or older. Three orthodontists classified the maxillofacial morphologies of 220 patients using eight measurements as the accurate classification. Using these eight cephalometric measurement points and the subject’s gender as input features, a random forest classifier from the Python sci-kit learning package was trained and tested with a k-fold split of five to determine orthodontic classification; distinct models were created for horizontal-only, vertical-only, and combined maxillofacial morphology classification. The accuracy of the combined facial classification was 0.823 ± 0.060; for anteroposterior-only classification, the accuracy was 0.986 ± 0.011; and for the vertical-only classification, the accuracy was 0.850 ± 0.037. ANB angle had the greatest feature importance at 0.3519. The AI model created in this study accurately classified maxillofacial morphology, but it can be further improved with more learning data input.

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