2023
DOI: 10.1111/ocr.12644
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AggregateNet: A deep learning model for automated classification of cervical vertebrae maturation stages

Abstract: ObjectiveA study of supervised automated classification of the cervical vertebrae maturation (CVM) stages using deep learning (DL) network is presented. A parallel structured deep convolutional neural network (CNN) with a pre‐processing layer that takes X‐ray images and the age as the input is proposed.MethodsA total of 1018 cephalometric radiographs were labelled and classified according to the CVM stages. The images were separated according to gender for better model‐fitting. The images were cropped to extra… Show more

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Cited by 11 publications
(6 citation statements)
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“…Kök H et al trained the artificial neural networks (ANN) model with 300 individuals aged between 8 and 17 years and proposed the ANN algorithm was stable in determining the CVM classes with a 2.17 average rank [ 32 ]. With ongoing improvements in AI, Atici SF et al proposed an innovative deep-learning model with parallel architecture and achieved a validation accuracy of 82.35% in CVM stage classification on female subjects [ 33 ]. However, applying deep learning algorithms to medical image analysis presents several unique challenges and obstacles, such as the issues of imbalanced data, deficiency in the confidence interval, and lack of properly labeled data [ 34 , 35 ].…”
Section: Discussionmentioning
confidence: 99%
“…Kök H et al trained the artificial neural networks (ANN) model with 300 individuals aged between 8 and 17 years and proposed the ANN algorithm was stable in determining the CVM classes with a 2.17 average rank [ 32 ]. With ongoing improvements in AI, Atici SF et al proposed an innovative deep-learning model with parallel architecture and achieved a validation accuracy of 82.35% in CVM stage classification on female subjects [ 33 ]. However, applying deep learning algorithms to medical image analysis presents several unique challenges and obstacles, such as the issues of imbalanced data, deficiency in the confidence interval, and lack of properly labeled data [ 34 , 35 ].…”
Section: Discussionmentioning
confidence: 99%
“…AI-based classification of vertical and sagittal skeletal patterns has been found highly accurate, with a mean area under the receiver operating characteristic curve (ROC AUC) of >95% (Yu et al 2020). In a similar fashion, lateral cephalograms were used for end-to-end predictions of the upper airway obstruction (Jeong et al 2023), degenerative temporomandibular joint diseases (Fang et al 2023), or the classification of cervical vertebrae maturation stages (Atici et al 2023). Notably, such end-to-end classifications are not inherently explainable, that is, humans cannot easily identify why a certain class was chosen, something we critically discuss below.…”
Section: Analysis Of Lateral Cephalogramsmentioning
confidence: 99%
“…The assessment of skeletal maturity is very important in treatment planning for optimal treatment timing. A custom-design CNN model consisting of two parts, feature extraction and classification, was used to classify CVM into six maturation stages (CS1-CS6) [50,51]. AggregateNet was utilized in the model for feature extraction, and as the preprocessing layer, it used directional filters to enrich the information.…”
Section: Ai-guided Assessment Of Vertebral Maturationmentioning
confidence: 99%
“…AggregateNet was utilized in the model for feature extraction, and as the preprocessing layer, it used directional filters to enrich the information. The AggregateNet output feature was coupled with age input to produce conclusions as well as to boost network performance [51]. Hatice Kök et al [52] used seven algorithms to determine CVS: k-nearest neighbors (k-NN), naive Bayes (NB), decision tree (DT), artificial neural network (ANN), support vector machine (SVM), random forest (RF), and logistic regression (LR).…”
Section: Ai-guided Assessment Of Vertebral Maturationmentioning
confidence: 99%