2023
DOI: 10.3390/diagnostics13213369
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Validation of Machine Learning Models for Craniofacial Growth Prediction

Eungyeong Kim,
Yasuhiro Kuroda,
Yoshiki Soeda
et al.

Abstract: This study identified the most accurate model for predicting longitudinal craniofacial growth in a Japanese population using statistical methods and machine learning. Longitudinal lateral cephalometric radiographs were collected from 59 children (27 boys and 32 girls) with no history of orthodontic treatment. Multiple regression analysis, least absolute shrinkage and selection operator, radial basis function network, multilayer perceptron, and gradient-boosted decision tree were used. The independent variables… Show more

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