Deep-Learning-Based Detection of Cranio-Spinal Differences between Skeletal Classification Using Cephalometric Radiography.
Seung Hyun JeongJong Pil YunHan-Gyeol YeomHwi Kang KimBong Chul KimPublished in: Diagnostics (Basel, Switzerland) (2021)
The aim of this study was to reveal cranio-spinal differences between skeletal classification using convolutional neural networks (CNNs). Transverse and longitudinal cephalometric images of 832 patients were used for training and testing of CNNs (365 males and 467 females). Labeling was performed such that the jawbone was sufficiently masked, while the parts other than the jawbone were minimally masked. DenseNet was used as the feature extractor. Five random sampling crossvalidations were performed for two datasets. The average and maximum accuracy of the five crossvalidations were 90.43% and 92.54% for test 1 (evaluation of the entire posterior-anterior (PA) and lateral cephalometric images) and 88.17% and 88.70% for test 2 (evaluation of the PA and lateral cephalometric images obscuring the mandible). In this study, we found that even when jawbones of class I (normal mandible), class II (retrognathism), and class III (prognathism) are masked, their identification is possible through deep learning applied only in the cranio-spinal area. This suggests that cranio-spinal differences between each class exist.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- spinal cord
- machine learning
- end stage renal disease
- minimally invasive
- newly diagnosed
- computed tomography
- gene expression
- peritoneal dialysis
- cross sectional
- chronic kidney disease
- single cell
- quantum dots
- label free
- dna methylation
- magnetic resonance
- virtual reality
- neural network
- image quality