Mandibular and dental measurements for sex determination using machine learning.

Journal: Scientific reports
PMID:

Abstract

The present study tested the combination of mandibular and dental dimensions for sex determination using machine learning. Lateral cephalograms and dental casts were used to obtain mandibular and mesio-distal permanent teeth dimensions, respectively. Univariate statistics was used for variables selection for the supervised machine learning model (alpha = 0.05). The following algorithms were trained: logistic regression, gradient boosting classifier, k-nearest neighbors, support vector machine, multilayer perceptron classifier, decision tree, and random forest classifier. A threefold cross-validation approach was adopted to validate each model. The areas under the curve (AUC) were computed, and ROC curves were constructed. Three mandibular-related measurements and eight dental size-related dimensions were used to train the machine learning models using data from 108 individuals. The mandibular ramus height and the lower first molar mesio-distal size exhibited the greatest predictive capability in most of the evaluated models. The accuracy of the models varied from 0.64 to 0.74 in the cross-validation stage, and from 0.58 to 0.79 when testing the data. The logistic regression model exhibited the highest performance (AUC = 0.84). Despite the limitations of this study, the results seem to show that the integration of mandibular and dental dimensions for sex prediction would be a promising approach, emphasizing the potential of machine learning techniques as valuable tools for this purpose.

Authors

  • Erika Calvano Küchler
    Department of Orthodontics, Medical Faculty, University Hospital Bonn, Bonn, Germany.
  • Christian Kirschneck
    Department of Orthodontics, Medical Faculty, University Hospital Bonn, Welschnonnenstr. 17, 53111, Bonn, Germany.
  • Guido Artemio Marañón-Vásquez
    Department of Pediatric Dentistry, School of Dentistry of Ribeirão Preto, University of São Paulo, Av. do Café s/n, Ribeirão Preto, São Paulo, 14040-904, Brazil.
  • Ângela Graciela Deliga Schroder
    School of Dentistry, Tuiuti University of Paraná, Curitiba, Brazil.
  • Flares Baratto-Filho
    University of the Region of Joinville (Univille), Joinville, Santa Catarina, Brazil.
  • Fábio Lourenço Romano
    Department of Pediatric Dentistry, School of Dentistry of Ribeirão Preto, University of São Paulo, Av. do Café s/n, Ribeirão Preto, São Paulo, 14040-904, Brazil.
  • Maria Bernadete Sasso Stuani
    Department of Pediatric Dentistry, School of Dentistry of Ribeirão Preto, University of São Paulo, Av. do Café s/n, Ribeirão Preto, São Paulo, 14040-904, Brazil.
  • Mírian Aiko Nakane Matsumoto
    Department of Pediatric Dentistry, School of Dentistry of Ribeirão Preto, University of São Paulo, Av. do Café s/n, Ribeirão Preto, São Paulo, 14040-904, Brazil.
  • Cristiano Miranda de Araujo
    Postgraduate Program in Human Communication Health, Tuiuti University of Paraná, Curitiba, Paraná, Brazil.