Staging third molar development is commonly used for age assessment in sub-adults. Current staging techniques are, at most, semi-automated and rely on manual interactions prone to operator variability. The aim of this study was to fully automate the staging process by employing the full potential of deep learning, using convolutional neural networks (CNNs) in every step of the procedure. The dataset used to train the CNNs consisted of 400 panoramic radiographs (OPGs), with 20 OPGs per developmental stage per sex, staged in consensus between three observers. The concepts of transfer learning, using pre-trained CNNs, and data augmentation were used to mitigate the issues when dealing with a limited dataset. In this work, a three-step procedur...
Background: Panoramic radiographs, in which anatomic landmarks can be observed, are used to detect c...
Objectives: We aimed to develop an artificial intelligence–based clinical dental decision-support sy...
The purpose of this investigation was to evaluate the diagnostic performance of two convolutional ne...
In forensic dental age estimation practice, third molar development is the standard age predictor fo...
Staging third molar development is commonly used for age estimation in subadults. Automated developm...
Background: Dental age has been proven to be a good predictor of chronological age, especially in ch...
De Tobel J., Radesh P., Vandermeulen D., Thevissen P., ''An automated technique to stage lower third...
Background: The clinical introduction of CBCT allowed obtaining high-quality tooth images in three o...
Pell and Gregory, and Winter's classifications are frequently implemented to classify the mandibular...
Influence of Lower Third Molar Segmentations on Automated Tooth Development Staging using a Convolut...
Background • The development of third molars can be evaluated with medical imaging to estimate age i...
Purpose: To prospectively evaluate the use of 3T MRI of the third molars in age estimation. Material...
Background: Established methods to stage development of third molars for forensic age estimation are...
The objective of this study is to assess the classification accuracy of dental caries on panoramic r...
Introduction: Skeletal maturation age is an important guide in growing adolescent patients to determ...
Background: Panoramic radiographs, in which anatomic landmarks can be observed, are used to detect c...
Objectives: We aimed to develop an artificial intelligence–based clinical dental decision-support sy...
The purpose of this investigation was to evaluate the diagnostic performance of two convolutional ne...
In forensic dental age estimation practice, third molar development is the standard age predictor fo...
Staging third molar development is commonly used for age estimation in subadults. Automated developm...
Background: Dental age has been proven to be a good predictor of chronological age, especially in ch...
De Tobel J., Radesh P., Vandermeulen D., Thevissen P., ''An automated technique to stage lower third...
Background: The clinical introduction of CBCT allowed obtaining high-quality tooth images in three o...
Pell and Gregory, and Winter's classifications are frequently implemented to classify the mandibular...
Influence of Lower Third Molar Segmentations on Automated Tooth Development Staging using a Convolut...
Background • The development of third molars can be evaluated with medical imaging to estimate age i...
Purpose: To prospectively evaluate the use of 3T MRI of the third molars in age estimation. Material...
Background: Established methods to stage development of third molars for forensic age estimation are...
The objective of this study is to assess the classification accuracy of dental caries on panoramic r...
Introduction: Skeletal maturation age is an important guide in growing adolescent patients to determ...
Background: Panoramic radiographs, in which anatomic landmarks can be observed, are used to detect c...
Objectives: We aimed to develop an artificial intelligence–based clinical dental decision-support sy...
The purpose of this investigation was to evaluate the diagnostic performance of two convolutional ne...