Analysis of the feasibility of using deep learning for multiclass classification of dental anomalies on panoramic radiographs

Dent Mater J. 2022 Nov 30;41(6):889-895. doi: 10.4012/dmj.2022-098. Epub 2022 Aug 23.

Abstract

The aim of the feasibility study was to construct deep learning models for the classification of multiple dental anomalies in panoramic radiographs. Panoramic radiographs with single supernumerary teeth and/or odontomas were considered the "case" group; panoramic radiographs with no dental anomalies were considered the "control" group. The dataset comprised 150 panoramic radiographs: 50 each of no dental anomalies, single supernumerary teeth, and odontomas. To classify the panoramic radiographs into case and control categories, we employed AlexNet, which is a convolutional neural network model. AlexNet was able to classify whole panoramic radiographs into two or three classes, according to the presence or absence of supernumerary teeth or odontomas. The performance metrics of the three-class classification were 70%, 70.8%, 70%, and 69.7% for accuracy, precision, sensitivity, and F1 score, respectively, in the macro average. These results support the feasibility of using deep learning to detect multiple dental anomalies in panoramic radiographs.

Keywords: Artificial intelligence; Convolutional neural network; Deep learning; Dental anomalies; Panoramic radiograph.

MeSH terms

  • Deep Learning*
  • Feasibility Studies
  • Humans
  • Odontoma*
  • Radiography, Panoramic
  • Tooth, Supernumerary*