Estimation of Alveolar Bone Loss in Periodontitis Using Machine Learning

Int Dent J. 2022 Oct;72(5):621-627. doi: 10.1016/j.identj.2022.02.009. Epub 2022 May 13.

Abstract

Aim: The objective of this research was to perform a pilot study to develop an automatic analysis of periapical radiographs from patients with and without periodontitis for the percentage alveolar bone loss (ABL) on the approximal surfaces of teeth using a supervised machine learning model, that is, convolutional neural networks (CNN).

Material and methods: A total of 1546 approximal sites from 54 participants on mandibular periapical radiographs were manually annotated (MA) for a training set (n = 1308 sites), a validation set (n = 98 sites), and a test set (n = 140 sites). The training and validation sets were used for the development of a CNN algorithm. The algorithm recognised the cemento-enamel junction, the most apical extent of the alveolar crest, the apex, and the surrounding alveolar bone.

Results: For the total of 140 images in the test set, the CNN scored a mean of 23.1 ± 11.8 %ABL, whilst the corresponding value for MA was 27.8 ± 13.8 %ABL. The intraclass correlation (ICC) was 0.601 (P < .001), indicating moderate reliability. Further subanalyses for various tooth types and various bone loss patterns showed that ICCs remained significant, although the algorithm performed with excellent reliability for %ABL on nonmolar teeth (incisors, canines, premolars; ICC = 0.763).

Conclusions: A CNN trained algorithm on radiographic images showed a diagnostic performance with moderate to good reliability to detect and quantify %ABL in periapical radiographs.

Keywords: Alveolar bone loss; Convolutional neural network; Machine learning; Periapical radiographs; Periodontitis.

MeSH terms

  • Alveolar Bone Loss* / diagnostic imaging
  • Humans
  • Machine Learning
  • Periodontitis* / complications
  • Periodontitis* / diagnostic imaging
  • Pilot Projects
  • Reproducibility of Results