Diagnostic performance of convolutional neural networks for dental sexual dimorphism.

Journal: Scientific reports
Published Date:

Abstract

Convolutional neural networks (CNN) led to important solutions in the field of Computer Vision. More recently, forensic sciences benefited from the resources of artificial intelligence, especially in procedures that normally require operator-dependent steps. Forensic tools for sexual dimorphism based on morphological dental traits are available but have limited performance. This study aimed to test the application of a machine learning setup to distinguish females and males using dentomaxillofacial features from a radiographic dataset. The sample consisted of panoramic radiographs (n = 4003) of individuals in the age interval of 6 and 22.9 years. Image annotation was performed with V7 software (V7labs, London, UK). From Scratch (FS) and Transfer Learning (TL) CNN architectures were compared, and diagnostic accuracy tests were used. TL (82%) performed better than FS (71%). The correct classifications of females and males aged ≥ 15 years were 87% and 84%, respectively. For females and males < 15 years, the correct classifications were 80% and 83%, respectively. The Area Under the Curve (AUC) from Receiver-operating Characteristic (ROC) curves showed high classification accuracy between 0.87 and 0.91. The radio-diagnostic use of CNN for sexual dimorphism showed positive outcomes and promising forensic applications to the field of dental human identification.

Authors

  • Ademir Franco
    Centre of Forensic and Legal Medicine and Dentistry, University of Dundee, Dundee, UK.
  • Lucas Porto
    Computer Vision Solutions, Rumina S.A, Belo Horizonte, Minas Gerais, Brazil.
  • Dennis Heng
    Centre of Forensic and Legal Medicine and Dentistry, University of Dundee, Dundee, UK.
  • Jared Murray
    Centre of Forensic and Legal Medicine and Dentistry, University of Dundee, Dundee, UK.
  • Anna Lygate
    Centre of Forensic and Legal Medicine and Dentistry, University of Dundee, Dundee, UK.
  • Raquel Franco
    Department of Preventive and Social Dentistry, Federal University of Uberlandia, Av. Pará 1720, Bloco 2G, Sala 1, Campus Umuarama, Uberlândia, Minas Gerais, Brazil.
  • Juliano Bueno
    Division of Oral Radiology, Faculdade Sao Leopoldo Mandic, Campinas, Brazil.
  • Marilia Sobania
    Division of Forensic Dentistry, Faculdade Sao Leopoldo Mandic, Campinas, Brazil.
  • Márcio M Costa
    Department of Removable Prosthodontics, Federal University of Uberlandia, Uberlândia, Brazil.
  • Luiz R Paranhos
    Department of Preventive and Social Dentistry, Federal University of Uberlandia, Av. Pará 1720, Bloco 2G, Sala 1, Campus Umuarama, Uberlândia, Minas Gerais, Brazil. paranhos.lrp@gmail.com.
  • Scheila Manica
    Centre of Forensic and Legal Medicine and Dentistry, University of Dundee, Dundee, UK.
  • André Abade
    Computer Science, Federal Institute of Science and Technology, Barra do Garças, Brazil.