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Orthognathic surgical planning using graph CNN with dual embedding module: External validations with multi-hospital datasets

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Abstract
Background and objective: Despite recent development of AI, prediction of the surgical movement in the maxilla and mandible by OGS might be more difficult than that of tooth movement by orthodontic treatment. To evaluate the prediction accuracy of the surgical movement using pairs of pre-(T0) and post-surgical (T1) lateral cephalograms (lat-ceph) of orthognathic surgery (OGS) patients and dual embedding module-graph convolution neural network (DEM-GCNN) model.

Methods: 599 pairs from 3 institutions were used as training, internal validation, and internal test sets and 201 pairs from other 6 institutions were used as external test set. DEM-GCNN model (IEM, learning the lat-ceph images; LTEM, learning the landmarks) was developed to predict the amount and direction of surgical movement of ANS and PNS in the maxilla and B-point and Md1crown in the mandible. The distance between T1 landmark coordinates actually moved by OGS (ground truth) and predicted by DEM-GCNN model and pre-existed CNN-based Model-C (learning the lat-ceph images) was compared.

Results: In both internal and external tests, DEM-GCNN did not exhibit significant difference from ground truth in all landmarks (ANS, PNS, B-point, Md1crown, all P > 0.05). When the accumulated successful detection rate for each landmark was compared, DEM-GCNN showed higher values than Model-C in both the internal and external tests. In violin plots exhibiting the error distribution of the prediction results, both internal and external tests showed that DEM-GCNN had significant performance improvement in PNS, ANS, B-point, Md1crown than Model-C. DEM-GCNN showed significantly lower prediction error values than Model-C (one-jaw surgery, B-point, Md1crown, all P < 0.005; two-jaw surgery, PNS, ANS, all P < 0.05; B point, Md1crown, all P < 0.005).

Conclusion: We developed a robust OGS planning model with maximized generalizability despite diverse qualities of lat-cephs from 9 institutions.
Issued Date
2023
In-Hwan Kim
Jun-Sik Kim
Jiheon Jeong
Jae-Woo Park
Kanggil Park
Jin-Hyoung Cho
Mihee Hong
Kyung-Hwa Kang
Minji Kim
Su-Jung Kim
Yoon-Ji Kim
Sang-Jin Sung
Young Ho Kim
Sung-Hoon Lim
Seung-Hak Baek
Namkug Kim
Type
Article
Keyword
CephalometryDeep learningDual embedding moduleGraph convolution neural networkMaxillofacial surgeryMulticenter studyOrthognathic surgerySurgical prediction
DOI
10.1016/j.cmpb.2023.107853
URI
https://oak.ulsan.ac.kr/handle/2021.oak/16144
Publisher
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE
Language
한국어
ISSN
0169-2607
Citation Volume
242
Citation Number
107853
Citation Start Page
107853
Appears in Collections:
Medicine > Nursing
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