A Computer-Aided Model for Dental Image Diagnosis Utilizing Convolutional Neural Networks

Authors

  • Laurine A. Ashame Department of Computer Engineering, Arab Academy of Science, Technology and Maritime, Alexandria Governorate 5528341, Egypt
  • Sherin M. Youssef Department of Computer Engineering, Arab Academy of Science, Technology and Maritime, Alexandria Governorate 5528341, Egypt
  • Mazen Nabil Elagamy Department of Computer Engineering, Arab Academy of Science, Technology and Maritime, Alexandria Governorate 5528341, Egypt
  • Ahmed Othman Digital Technologies in Dentistry and CAD/CAM Department, Danube Private University, Steiner Landstraße 124, 3500 Krems an der Donau, Austria
  • Sahar M. El-Sheikh Department of Oral Pathology in Faculty of Dentistry, Alexandria University, Al Attarin, Alexandria Governorate 5372066, Egypt

DOI:

https://doi.org/10.37934/araset.52.2.1525

Keywords:

CNNs, Fuzzy C-means, Orthodontics

Abstract

A Convolutional Neural Network (CNN) is an artificial neural network that is primarily utilized for the purposes of image recognition and processing, owing to its remarkable ability to recognize patterns within images. CNNs have found widespread application in diverse areas of computer vision, including but not limited to object tracking and recognition, security, and military and biomedical image analysis. CNN in orthodontic medical imaging technologies to reduce orthodontic treatment planning time, including automatic landmark search on cephalometric radiographs, cone beam computed tomography (CBCT) tooth segmentation, and CBCT tooth segmentation. This paper describes the strategy and the architecture of deep convolutional neural networks applied to DICOM datasets to distinguish between X-ray pictures with and without teeth. This work focuses on the application of the CNNs to a DICOM dataset in orthodontics as pre-processing for CNNs using fuzzy C-means clustering to construct a reasonable prediction that results in improved accuracy of this system. The aforementioned proposal has shown encouraging outcomes and visual representations, indicating that utilizing methods based on convolutional neural networks can greatly enhance the computational planning of orthodontic treatments by decreasing the time required for analysis. In many cases, this approach's analysis surpasses the accuracy of a manual orthodontist. This model achieved an accuracy exceeding 98% in applying the CNNs to differentiate between X-ray images with teeth and others with no teeth to focus any further work only on useful images which helps in diagnosis planning.

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Author Biographies

Laurine A. Ashame, Department of Computer Engineering, Arab Academy of Science, Technology and Maritime, Alexandria Governorate 5528341, Egypt

laurinearmeya1@gmail.com

Sherin M. Youssef, Department of Computer Engineering, Arab Academy of Science, Technology and Maritime, Alexandria Governorate 5528341, Egypt

sherin.youssef@gmail.com

Mazen Nabil Elagamy, Department of Computer Engineering, Arab Academy of Science, Technology and Maritime, Alexandria Governorate 5528341, Egypt

m_elagami@hotmail.com

Ahmed Othman, Digital Technologies in Dentistry and CAD/CAM Department, Danube Private University, Steiner Landstraße 124, 3500 Krems an der Donau, Austria

ahmed.othman@dp-uni.ac.at

Sahar M. El-Sheikh, Department of Oral Pathology in Faculty of Dentistry, Alexandria University, Al Attarin, Alexandria Governorate 5372066, Egypt

Sahar.elsheikh@dent.alex.edu.eg

Published

2024-09-20

Issue

Section

Articles