Automated assessment of mandibular shape asymmetry in 3-dimensions
This study aimed to develop an automatic pipeline for analyzing mandibular shape asymmetry in 3-dimensions. Forty patients with skeletal Class I pattern and 80 patients with skeletal Class III pattern were used. The mandible was automatically segmented from the cone-beam computed tomography images u...
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Published in | American journal of orthodontics and dentofacial orthopedics Vol. 161; no. 5; pp. 698 - 707 |
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Main Authors | , , , , , , , , , , , , , |
Format | Journal Article |
Language | English |
Published |
United States
Elsevier Inc
01.05.2022
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Subjects | |
Online Access | Get full text |
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Summary: | This study aimed to develop an automatic pipeline for analyzing mandibular shape asymmetry in 3-dimensions.
Forty patients with skeletal Class I pattern and 80 patients with skeletal Class III pattern were used. The mandible was automatically segmented from the cone-beam computed tomography images using a U-net deep learning network. A total of 17,415 uniformly sampled quasi-landmarks were automatically identified on the mandibular surface via a template mapping technique. After alignment with the robust Procrustes superimposition, the pointwise surface-to-surface distance between original and reflected mandibles was visualized in a color-coded map, indicating the location of asymmetry. The degree of overall mandibular asymmetry and the asymmetry of subskeletal units were scored using the root-mean-squared-error between the left and right sides. These asymmetry parameters were compared between the skeletal Class I and skeletal Class III groups.
The mandible shape was significantly more asymmetrical in patients with skeletal Class III pattern with positional asymmetry. The condyles were identified as the most asymmetric region in all groups, followed by the coronoid process and the ramus.
This automated approach to quantify mandibular shape asymmetry will facilitate high-throughput image processing for big data analysis. The spatially-dense landmarks allow for evaluating mandibular asymmetry over the entire surface, which overcomes the information loss inherent in conventional linear distance or angular measurements. Precise quantification of the asymmetry can provide important information for individualized diagnosis and treatment planning in orthodontics and orthognathic surgery.
•Develop an automatic pipeline for mandibular shape asymmetry assessment in 3-dimensions.•Automatically segment the mandible from CBCT images using a U-net deep learning network.•Automatically identify spatially-dense landmarks on the entire mandibular surface. |
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Bibliography: | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 23 |
ISSN: | 0889-5406 1097-6752 |
DOI: | 10.1016/j.ajodo.2021.07.014 |