1.Optimization of forensic identification through 3-dimensional imaging analysis of labial tooth surface using open-source software
Arofi KURNIAWAN ; Aspalilah ALIAS ; Mohd Yusmiaidil Putera Mohd YUSOF ; Anand MARYA
Imaging Science in Dentistry 2024;54(1):63-69
Purpose:
The objective of this study was to determine the minimum number of teeth in the anterior dental arch that would yield accurate results for individual identification in forensic contexts.
Materials and Methods:
The study involved the analysis of 28 sets of 3-dimensional (3D) point cloud data, focused on the labial surface of the anterior teeth. These datasets were superimposed within each group in both genuine and imposter pairs. Group A incorporated data from the right to the left central incisor, group B from the right to the left lateral incisor, and group C from the right to the left canine. A comprehensive analysis was conducted, including the evaluation of root mean square error (RMSE) values and the distances resulting from the superimposition of dental arch segments. All analyses were conducted using CloudCompare version 2.12.4 (Telecom ParisTech and R&D, Kyiv, Ukraine).
Results:
The distances between genuine pairs in groups A, B, and C displayed an average range of 0.153 to 0.184 mm. In contrast, distances for imposter pairs ranged from 0.338 to 0.522 mm. RMSE values for genuine pairs showed an average range of 0.166 to 0.177, whereas those for imposter pairs ranged from 0.424 to 0.638. A statistically significant difference was observed between the distances of genuine and imposter pairs (P<0.05).
Conclusion
The exceptional performance observed for the labial surfaces of anterior teeth underscores their potential as a dependable criterion for accurate 3D dental identification. This was achieved by assessing a minimum of 4 teeth.
2.Dental age estimation using a convolutional neural network algorithm on panoramic radiographs: A pilot study in Indonesia
Arofi KURNIAWAN ; Michael SAELUNG ; Beta Novia RIZKY ; An’nisaa CHUSIDA ; Beshlina Fitri Widayanti Roosyanto PRAKOESWA ; Giselle NEFERTARI ; Ariana Fragmin PRADUE ; Mieke Sylvia MARGARETHA ; Aspalilah ALIAS ; Anand MARYA
Imaging Science in Dentistry 2025;55(1):28-36
Purpose:
This study employed a convolutional neural network (CNN) algorithm to develop an automated dental age estimation method based on the London Atlas of Tooth Development and Eruption. The primary objectives were to create and validate CNN models trained on panoramic radiographs to achieve accurate dental age predictions using a standardized approach.
Materials and Methods:
A dataset of 801 panoramic radiographs from outpatients aged 5 to 15 years was used. A CNN model for dental age estimation was developed using a 16-layer CNN architecture implemented in Python with TensorFlow and Scikit-learn, guided by the London Atlas of Tooth Development. The model included 6 convolutional layers for feature extraction, each followed by a pooling layer to reduce the spatial dimensions of the feature maps. A confusion matrix was used to evaluate key performance metrics, including accuracy, precision, recall, and F1 score.
Results:
The proposed model achieved an overall accuracy, precision, recall, and F1 score of 74% on the validation set. The highest F1 scores were observed in the 10-year and 12-year age groups, indicating superior performancein these categories. In contrast, the 6-year age group demonstrated the highest misclassification rate, highlightingpotential challenges in accurately estimating age in younger individuals.
Conclusion:
Integrating a CNN algorithm for dental age estimation represents a significant advancement in forensic odontology. The application of AI improves both the precision and efficiency of age estimation processes, providing
results
that are more reliable and objective than those obtained via traditional methods.
3.Dental age estimation using a convolutional neural network algorithm on panoramic radiographs: A pilot study in Indonesia
Arofi KURNIAWAN ; Michael SAELUNG ; Beta Novia RIZKY ; An’nisaa CHUSIDA ; Beshlina Fitri Widayanti Roosyanto PRAKOESWA ; Giselle NEFERTARI ; Ariana Fragmin PRADUE ; Mieke Sylvia MARGARETHA ; Aspalilah ALIAS ; Anand MARYA
Imaging Science in Dentistry 2025;55(1):28-36
Purpose:
This study employed a convolutional neural network (CNN) algorithm to develop an automated dental age estimation method based on the London Atlas of Tooth Development and Eruption. The primary objectives were to create and validate CNN models trained on panoramic radiographs to achieve accurate dental age predictions using a standardized approach.
Materials and Methods:
A dataset of 801 panoramic radiographs from outpatients aged 5 to 15 years was used. A CNN model for dental age estimation was developed using a 16-layer CNN architecture implemented in Python with TensorFlow and Scikit-learn, guided by the London Atlas of Tooth Development. The model included 6 convolutional layers for feature extraction, each followed by a pooling layer to reduce the spatial dimensions of the feature maps. A confusion matrix was used to evaluate key performance metrics, including accuracy, precision, recall, and F1 score.
Results:
The proposed model achieved an overall accuracy, precision, recall, and F1 score of 74% on the validation set. The highest F1 scores were observed in the 10-year and 12-year age groups, indicating superior performancein these categories. In contrast, the 6-year age group demonstrated the highest misclassification rate, highlightingpotential challenges in accurately estimating age in younger individuals.
Conclusion:
Integrating a CNN algorithm for dental age estimation represents a significant advancement in forensic odontology. The application of AI improves both the precision and efficiency of age estimation processes, providing
results
that are more reliable and objective than those obtained via traditional methods.
4.Dental age estimation using a convolutional neural network algorithm on panoramic radiographs: A pilot study in Indonesia
Arofi KURNIAWAN ; Michael SAELUNG ; Beta Novia RIZKY ; An’nisaa CHUSIDA ; Beshlina Fitri Widayanti Roosyanto PRAKOESWA ; Giselle NEFERTARI ; Ariana Fragmin PRADUE ; Mieke Sylvia MARGARETHA ; Aspalilah ALIAS ; Anand MARYA
Imaging Science in Dentistry 2025;55(1):28-36
Purpose:
This study employed a convolutional neural network (CNN) algorithm to develop an automated dental age estimation method based on the London Atlas of Tooth Development and Eruption. The primary objectives were to create and validate CNN models trained on panoramic radiographs to achieve accurate dental age predictions using a standardized approach.
Materials and Methods:
A dataset of 801 panoramic radiographs from outpatients aged 5 to 15 years was used. A CNN model for dental age estimation was developed using a 16-layer CNN architecture implemented in Python with TensorFlow and Scikit-learn, guided by the London Atlas of Tooth Development. The model included 6 convolutional layers for feature extraction, each followed by a pooling layer to reduce the spatial dimensions of the feature maps. A confusion matrix was used to evaluate key performance metrics, including accuracy, precision, recall, and F1 score.
Results:
The proposed model achieved an overall accuracy, precision, recall, and F1 score of 74% on the validation set. The highest F1 scores were observed in the 10-year and 12-year age groups, indicating superior performancein these categories. In contrast, the 6-year age group demonstrated the highest misclassification rate, highlightingpotential challenges in accurately estimating age in younger individuals.
Conclusion:
Integrating a CNN algorithm for dental age estimation represents a significant advancement in forensic odontology. The application of AI improves both the precision and efficiency of age estimation processes, providing
results
that are more reliable and objective than those obtained via traditional methods.