Automated sex and age estimation from orthopantomograms using deep learning: A comparison with human predictions

IF 2.2 3区 医学 Q1 MEDICINE, LEGAL
Inseok Kim , Sujin Yang , Yiseul Choi , Hyeokhyeon Kwon , Changmin Lee , Wonse Park
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Abstract

Introduction/objectives

Estimating sex and chronological age is crucial in forensic dentistry and forensic identification. Traditional manual methods for sex and age estimation are labor-intensive, time-consuming, and prone to errors. This study aimed to develop an automatic and robust method for estimating sex and chronological age from orthopantomograms using a multi-task deep learning network.

Methods

A deep learning model was developed using a multi-task learning approach with a backbone network and separate attention branches for sex and age estimation. The dataset comprised 2067 orthopantomograms, evenly distributed across sex and age groups ranging from 3 to 89 years. The model was trained using the VGG backbone, optimizing for both sex classification and age regression tasks. Performance was evaluated using mean absolute error (MAE), coefficient of determination (R²), and classification accuracy.

Results

The developed model demonstrated outstanding performance in chronological age estimation, achieving a mean absolute error (MAE) of 3.43 years and a coefficient of determination (R²) of 0.941. For sex estimation, the model achieved an accuracy of 90.2 %, significantly outperforming human observers, whose accuracy ranged from 46.3 % to 63 % for sex prediction and from 16.4 % to 91.3 % for age estimation.

Conclusions

The proposed multi-task deep learning model provides a highly accurate and automated method for estimating sex and chronological age from orthopantomograms. Compared to human predictions, the model exhibited superior accuracy and consistency, highlighting its potential for forensic applications.
利用深度学习从正骨断层摄影中自动估计性别和年龄:与人类预测的比较
在法医牙科和法医鉴定中,性别和年龄的估计是至关重要的。传统的人工估算性别和年龄的方法是劳动密集型的,耗时的,而且容易出错。本研究旨在利用多任务深度学习网络,开发一种自动且稳健的方法,从骨断层图中估计性别和实足年龄。方法采用多任务学习方法建立深度学习模型,建立主干网和独立注意分支,对性别和年龄进行估计。该数据集包括2067张正骨断层图,均匀分布在3岁至89岁的性别和年龄组中。该模型使用VGG主干进行训练,对性别分类和年龄回归任务进行了优化。使用平均绝对误差(MAE)、决定系数(R²)和分类精度来评估性能。结果所建立的模型具有较好的实足年龄估计效果,平均绝对误差(MAE)为3.43岁,决定系数(R²)为0.941。对于性别估计,该模型达到了90.2 %的准确率,显著优于人类观察者,人类观察者在性别预测方面的准确率为46.3% %至63 %,在年龄估计方面的准确率为16.4 %至91.3 %。结论所提出的多任务深度学习模型提供了一种高度准确和自动化的方法,用于从骨科断层摄影中估计性别和实足年龄。与人类预测相比,该模型表现出更高的准确性和一致性,突出了其在法医应用中的潜力。
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来源期刊
Forensic science international
Forensic science international 医学-医学:法
CiteScore
5.00
自引率
9.10%
发文量
285
审稿时长
49 days
期刊介绍: Forensic Science International is the flagship journal in the prestigious Forensic Science International family, publishing the most innovative, cutting-edge, and influential contributions across the forensic sciences. Fields include: forensic pathology and histochemistry, chemistry, biochemistry and toxicology, biology, serology, odontology, psychiatry, anthropology, digital forensics, the physical sciences, firearms, and document examination, as well as investigations of value to public health in its broadest sense, and the important marginal area where science and medicine interact with the law. The journal publishes: Case Reports Commentaries Letters to the Editor Original Research Papers (Regular Papers) Rapid Communications Review Articles Technical Notes.
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