An Artificial Intelligence model for implant segmentation on periapical radiographs

Authors

  • Niha Adnan Department of Surgery, Aga Khan University Hospital
  • Muhammad Hanif Faculty of Computer Science and Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi
  • Khurram Khan Faculty of Computer Science and Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi
  • Fatima Faridoon Faculty of Computer Science and Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi
  • Fahad Umer Department of Surgery, Aga Khan University Hospital Karachi, Pakistan

DOI:

https://doi.org/10.47391/JPMA.AKU-9S-02

Abstract

Objective: To segment dental implants on PA radiographs using a Deep Learning (DL) algorithm. To compare the
performance of the algorithm relative to ground truth determined by the human annotator.
Methodology: Three hundred PA radiographs were retrieved from the radiographic database and consequently
annotated to label implants as well as teeth on the LabelMe annotation software. The dataset was augmented to
increase the number of images in the training data and a total of 1294 images were used to train, validate and test
the DL algorithm. An untrained U-net was downloaded and trained on the annotated dataset to allow detection of
implants using polygons on PA radiographs.
Results: A total of one hundred and thirty unseen images were run through the trained U-net to determine its
ability to segment implants on PA radiographs. The performance metrics are as follows: accuracy of 93.8%, precision
of 90%, recall of 83%, F-1 score of 86%, Intersection over Union of 86.4% and loss = 21%.
Conclusion: The trained DL algorithm segmented implants on PA radiographs with high performance similar to
that of the humans who labelled the images forming the ground truth.
Keywords: Deep Learning, Dental Implants, Algorithms, dentistry, Neural Networks, Intraoral Radiography

Published

2024-05-03

How to Cite

Niha Adnan, Muhammad Hanif, Khurram Khan, Fatima Faridoon, & Fahad Umer. (2024). An Artificial Intelligence model for implant segmentation on periapical radiographs. Journal of the Pakistan Medical Association, 74(4), S–5. https://doi.org/10.47391/JPMA.AKU-9S-02