OPG‐based dental age estimation using a data‐technical exploration of deep learning techniques

Author:

Büyükçakır Barkın1ORCID,Bertels Jeroen1ORCID,Claes Peter1,Vandermeulen Dirk1,de Tobel Jannick2,Thevissen Patrick W.3

Affiliation:

1. ESAT, Center for Processing Speech and Images KU Leuven Leuven Belgium

2. Department of Diagnostic Sciences and Radiology Ghent University Ghent Belgium

3. Forensic Odontology Department KU Leuven Leuven Belgium

Abstract

AbstractDental age estimation, a cornerstone in forensic age assessment, has been extensively tried and tested, yet manual methods are impeded by tedium and interobserver variability. Automated approaches using deep transfer learning encounter challenges like data scarcity, suboptimal training, and fine‐tuning complexities, necessitating robust training methods. This study explores the impact of convolutional neural network hyperparameters, model complexity, training batch size, and sample quantity on age estimation. EfficientNet‐B4, DenseNet‐201, and MobileNet V3 models underwent cross‐validation on a dataset of 3896 orthopantomograms (OPGs) with batch sizes escalating from 10 to 160 in a doubling progression, as well as random subsets of this training dataset. Results demonstrate the EfficientNet‐B4 model, trained on the complete dataset with a batch size of 160, as the top performer with a mean absolute error of 0.562 years on the test set, notably surpassing the MAE of 1.01 at a batch size of 10. Increasing batch size consistently improved performance for EfficientNet‐B4 and DenseNet‐201, whereas MobileNet V3 performance peaked at batch size 40. Similar trends emerged in training with reduced sample sizes, though they were outperformed by the complete models. This underscores the critical role of hyperparameter optimization in adopting deep learning for age estimation from complete OPGs. The findings not only highlight the nuanced interplay of hyperparameters and performance but also underscore the potential for accurate age estimation models through optimization. This study contributes to advancing the application of deep learning in forensic age estimation, emphasizing the significance of tailored training methodologies for optimal outcomes.

Funder

KU Leuven

Publisher

Wiley

Reference45 articles.

1. Age estimation

2. GhanaWeb.com.3 times Ghana's u‐17 team have been hit with age cheating.https://www.ghanaweb.com/GhanaHomePage/SportsArchive/3‐times‐Ghana‐s‐U‐17‐team‐have‐been‐hit‐with‐age‐cheating‐1575836(2002). Accessed 11 May 2023

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