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Automated identification of cephalometric landmarks: Part 1—Comparisons between the latest deep-learning methods YOLOV3 and SSD

Authors :
Jun-Ho Moon
Richard E. Donatelli
Girish Srinivasan
Hyewon Hwang
Mohammed Noori A. Aljanabi
Soo-Bok Her
Hansuk Kim
Jihoon Park
Youngsung Yu
Shin-Jae Lee
Source :
Angle Orthod
Publication Year :
2019
Publisher :
Edward H. Angle Society of Orthodontists, 2019.

Abstract

Objective: To compare the accuracy and computational efficiency of two of the latest deep-learning algorithms for automatic identification of cephalometric landmarks. Materials and Methods: A total of 1028 cephalometric radiographic images were selected as learning data that trained You-Only-Look-Once version 3 (YOLOv3) and Single Shot Multibox Detector (SSD) methods. The number of target labeling was 80 landmarks. After the deep-learning process, the algorithms were tested using a new test data set composed of 283 images. Accuracy was determined by measuring the point-to-point error and success detection rate and was visualized by drawing scattergrams. The computational time of both algorithms was also recorded. Results: The YOLOv3 algorithm outperformed SSD in accuracy for 38 of 80 landmarks. The other 42 of 80 landmarks did not show a statistically significant difference between YOLOv3 and SSD. Error plots of YOLOv3 showed not only a smaller error range but also a more isotropic tendency. The mean computational time spent per image was 0.05 seconds and 2.89 seconds for YOLOv3 and SSD, respectively. YOLOv3 showed approximately 5% higher accuracy compared with the top benchmarks in the literature. Conclusions: Between the two latest deep-learning methods applied, YOLOv3 seemed to be more promising as a fully automated cephalometric landmark identification system for use in clinical practice.

Details

Language :
English
Database :
OpenAIRE
Journal :
Angle Orthod
Accession number :
edsair.doi.dedup.....05bd211ddd1b6e4c9ac2a28a2c4ca920