» Articles » PMID: 32392449

Alveolar Bone Segmentation in Intraoral Ultrasonographs with Machine Learning

Overview
Journal J Dent Res
Specialty Dentistry
Date 2020 May 12
PMID 32392449
Citations 14
Authors
Affiliations
Soon will be listed here.
Abstract

The use of intraoral ultrasound imaging has received great attention recently due to the benefits of being a portable and low-cost imaging solution for initial and continuing care that is noninvasive and free of ionizing radiation. Alveolar bone is an important structure in the periodontal apparatus to support the tooth. Accurate assessment of alveolar bone level is essential for periodontal diagnosis. However, interpretation of alveolar bone structure in ultrasound images is a challenge for clinicians. This work is aimed at automatically segmenting alveolar bone and locating the alveolar crest via a machine learning (ML) approach for intraoral ultrasound images. Three convolutional neural network-based ML methods were trained, validated, and tested with 700, 200, and 200 images, respectively. To improve the robustness of the ML algorithms, a data augmentation approach was introduced, where 2100 additional images were synthesized through vertical and horizontal shifting as well as horizontal flipping during the training process. Quantitative evaluations of 200 images, as compared with an expert clinician, showed that the best ML approach yielded an average Dice score of 85.3%, sensitivity of 88.5%, and specificity of 99.8%, and identified the alveolar crest with a mean difference of 0.20 mm and excellent reliability (intraclass correlation coefficient ≥0.98) in less than a second. This work demonstrated the potential use of ML to assist general dentists and specialists in the visualization of alveolar bone in ultrasound images.

Citing Articles

Accuracy of artificial intelligence-based segmentation in maxillofacial structures: a systematic review.

Alahmari M, Alahmari M, Almuaddi A, Abdelmagyd H, Rao K, Hamdoon Z BMC Oral Health. 2025; 25(1):350.

PMID: 40055718 PMC: 11887095. DOI: 10.1186/s12903-025-05730-y.


Establishment and evaluation of a deep learning-based tooth wear severity grading system using intraoral photographs.

Pang Y, Yang Z, Zhang L, Liu X, Dong X, Sheng X J Dent Sci. 2025; 20(1):477-486.

PMID: 39873059 PMC: 11763877. DOI: 10.1016/j.jds.2024.05.013.


Machine learning for automated identification of anatomical landmarks in ultrasound periodontal imaging.

Qi B, Sasi L, Khan S, Luo J, Chen C, Rahmani K Dentomaxillofac Radiol. 2025; 54(3):210-221.

PMID: 39775796 PMC: 11879227. DOI: 10.1093/dmfr/twaf001.


A Comparative Analysis of Artificial Intelligence and Manual Methods for Three-Dimensional Anatomical Landmark Identification in Dentofacial Treatment Planning.

Ahn H, Byun S, Baek S, Park S, Yi S, Park I Bioengineering (Basel). 2024; 11(4).

PMID: 38671740 PMC: 11048285. DOI: 10.3390/bioengineering11040318.


Early Predicting Tribocorrosion Rate of Dental Implant Titanium Materials Using Random Forest Machine Learning Models.

Ampadi Ramachandran R, Barao V, Ozevin D, Sukotjo C, Srinivasa P, Mathew M Tribol Int. 2023; 187.

PMID: 37720691 PMC: 10503681. DOI: 10.1016/j.triboint.2023.108735.