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Journals
Journal of Ultrasonography
Volume 22 (2022): Issue 91 (October 2022)
Open Access
A deep learning approach for masseter muscle segmentation on ultrasonography
Gaye Keser
Gaye Keser
,
Ibrahim Sevki Bayrakdar
Ibrahim Sevki Bayrakdar
,
Filiz Namdar Pekiner
Filiz Namdar Pekiner
,
Özer Çelik
Özer Çelik
and
Kaan Orhan
Kaan Orhan
| Oct 01, 2022
Journal of Ultrasonography
Volume 22 (2022): Issue 91 (October 2022)
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Article Category:
case-report
Published Online:
Oct 01, 2022
Page range:
e204 - e208
Received:
Mar 05, 2022
Accepted:
Jun 08, 2022
DOI:
https://doi.org/10.15557/jou.2022.0034
Keywords
ultrasonography
,
masseter muscle
,
deep learning
,
artificial intelligence
© 2022 Gaye Keser et al., published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Fig. 1.
AI Model (CranioCatch, Eskisehir-Turkey) Pipeline for Masseter Muscle Segmentation in USG Images
Fig. 2.
The images show the Masseter Muscle Measurements performed using AI Models (CranioCatch, Eskisehir- Turkey)
Evaluation for diagnostic performance by AI model set for masseter muscle segmentation
U-Net Model
F1
1.0
Sensitivity
1.0
Precision
1.0