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Application of deep learning artificial intelligence technique to the classification of clinical orthodontic photos

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Authors

Ryu, Jiho; Lee, Yoo-Sun; Mo, Seong-Pil; Lim, Keunoh; Jung, Seok-Ki; Kim, Tae-Woo

Issue Date
2022-10-25
Citation
BMC Oral Health. 2022 Oct 25;22(1):454
Abstract
Abstract

Background
Taking facial and intraoral clinical photos is one of the essential parts of orthodontic diagnosis and treatment planning. Among the diagnostic procedures, classification of the shuffled clinical photos with their orientations will be the initial step while it was not easy for a machine to classify photos with a variety of facial and dental situations. This article presents a convolutional neural networks (CNNs) deep learning technique to classify orthodontic clinical photos according to their orientations.


Methods
To build an automated classification system, CNNs models of facial and intraoral categories were constructed, and the clinical photos that are routinely taken for orthodontic diagnosis were used to train the models with data augmentation. Prediction procedures were evaluated with separate photos whose purpose was only for prediction.


Results
Overall, a 98.0% valid prediction rate resulted for both facial and intraoral photo classification. The highest prediction rate was 100% for facial lateral profile, intraoral upper, and lower photos.


Conclusion
An artificial intelligence system that utilizes deep learning with proper training models can successfully classify orthodontic facial and intraoral photos automatically. This technique can be used for the first step of a fully automated orthodontic diagnostic system in the future.
URI
https://doi.org/10.1186/s12903-022-02466-x

https://hdl.handle.net/10371/187303
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