One-step diagnosis of cervical vertebra maturation and sagittal skeletal type based on convolutional neu-ral network
10.3969/j.issn.1001-3733.2025.05.011
- VernacularTitle:基于卷积神经网络的颈椎成熟度及矢状骨面型的一步式诊断
- Author:
Li'na CHEN
1
;
Jukun SONG
;
Yuanqi JIANG
;
Hao LV
;
Min LI
Author Information
1. 550004 贵阳,贵州医科大学口腔医学院
- Publication Type:Journal Article
- Keywords:
Artificial intelligence;
Deep learning;
Convolutional neural network;
InceptionV3;
Cervical vertebra maturation;
Sagittal skeletal type;
Lateral cephalogram
- From:
Journal of Practical Stomatology
2025;41(5):643-650
- CountryChina
- Language:Chinese
-
Abstract:
Objective:To compare the performance of 4 mainstream convolutional neural network models in one-step automatic di-agnosis of cervical vertebra maturation(CVM)and sagittal skeletal type on lateral cephalogram.Methods:600 lateral cephalograms were collected.2 orthodontists were included to determine the stage of CVM and semi-automatic measurement of sagittal skeletal type.After the data set was enhanced,80%was used as the training set and 20%as the test set.The same training method was used to compare the performance of convolutional neural network models of InceptionV3,ResNet50,ShuffleNetV2 and VGG16).Results:The accuracy of InceptionV3,ResNet50,ShuffleNetV2 and VGG16 in distinguishing CVM stage was 98.44%,89.85%,60.55%and 67.97%,and the accuracy of sagittal bone surface classification 96.56%,92.19%,80.00%and 88.13%,respec-tively.Conclusion:Among the 4 convolutional neural network models,InceptionV3 has the best overall learning performance for CVM stage and sagittal skeletal type classification.