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Convolutional Neural Network-Based Deep Learning Methods for Skeletal Growth Prediction in Dental Patients. | LitMetric

AI Article Synopsis

  • The study used deep learning with convolutional neural networks (CNN) to predict skeletal growth maturation from cervical vertebrae and lower 2nd molar calcification levels using orthopantomography (OPG).
  • About 1200 cephalometric radiographs and OPGs were analyzed, achieving high accuracy in detecting skeletal maturity, particularly with cervical vertebrae accuracy at 98% for males.
  • The findings suggest that CNN multiclass classification reliably assesses maturation levels, confirming that OPGs alone can effectively determine growth stages.

Article Abstract

This study aimed to predict the skeletal growth maturation using convolutional neural network-based deep learning methods using cervical vertebral maturation and the lower 2nd molar calcification level so that skeletal maturation can be detected from orthopantomography using multiclass classification. About 1200 cephalometric radiographs and 1200 OPGs were selected from patients seeking treatment in dental centers. The level of skeletal maturation was detected by CNN using the multiclass classification method, and each image was identified as a cervical vertebral maturation index (CVMI); meanwhile, the chronological age was estimated from the level of the 2nd molar calcification. The model's final result demonstrates a high degree of accuracy with which each stage and gender can be predicted. Cervical vertebral maturation reported high accuracy in males (98%), while females showed high accuracy of 2nd molar calcification. CNN multiclass classification is an accurate method to detect the level of maturation, whether from cervical maturation or the calcification of the lower 2nd molar, and the calcification level of the lower 2nd molar is a reliable method to trust in the growth level, so the traditional OPG is enough for this purpose.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11595330PMC
http://dx.doi.org/10.3390/jimaging10110278DOI Listing

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