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人工智能辅助牙科年龄评估在生长发育迟缓儿童中的应用

The Application of Artificial-Intelligence-Assisted Dental Age Assessment in Children with Growth Delay.

作者信息

Wu Te-Ju, Tsai Chia-Ling, Gao Quan-Ze, Chen Yueh-Peng, Kuo Chang-Fu, Huang Ying-Hua

机构信息

Department of Craniofacial Orthodontics, Kaohsiung Chang Gung Memorial Hospital and Chang Gung University College of Medicine, Kaohsiung 833253, Taiwan.

Department of Pedodontics, Kaohsiung Chang Gung Memorial Hospital and Chang Gung University College of Medicine, Kaohsiung 833253, Taiwan.

出版信息

J Pers Med. 2022 Jul 17;12(7):1158. doi: 10.3390/jpm12071158.

Abstract

BACKGROUND

This study aimed to reveal the efficacy of the artificial intelligence (AI)-assisted dental age (DA) assessment in identifying the characteristics of growth delay (GD) in children.

METHODS

The panoramic films matching the inclusion criteria were collected for the AI model training to establish the population-based DA standard. Subsequently, the DA of the validation dataset of the healthy children and the images of the GD children were assessed by both the conventional methods and the AI-assisted standards. The efficacy of all the studied modalities was compared by the paired sample -test.

RESULTS

The AI-assisted standards can provide much more accurate chronological age (CA) predictions with mean errors of less than 0.05 years, while the traditional methods presented overestimated results in both genders. For the GD children, the convolutional neural network (CNN) revealed the delayed DA in GD children of both genders, while the machine learning models presented so only in the GD boys.

CONCLUSION

The AI-assisted DA assessments help overcome the long-standing populational limitation observed in traditional methods. The image feature extraction of the CNN models provided the best efficacy to reveal the nature of delayed DA in GD children of both genders.

摘要

背景

本研究旨在揭示人工智能(AI)辅助的牙齿年龄(DA)评估在识别儿童生长发育迟缓(GD)特征方面的效果。

方法

收集符合纳入标准的全景片用于AI模型训练,以建立基于人群的DA标准。随后,采用传统方法和AI辅助标准对健康儿童验证数据集的DA以及GD儿童的图像进行评估。通过配对样本检验比较所有研究方法的效果。

结果

AI辅助标准能够提供更准确的实足年龄(CA)预测,平均误差小于0.05岁,而传统方法在两性中均呈现高估结果。对于GD儿童,卷积神经网络(CNN)显示两性GD儿童的DA均延迟,但机器学习模型仅在GD男孩中显示出延迟。

结论

AI辅助的DA评估有助于克服传统方法中长期存在的人群局限性。CNN模型的图像特征提取在揭示两性GD儿童DA延迟的本质方面效果最佳。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/995a/9322373/77531c19ab35/jpm-12-01158-g001a.jpg

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