Author:
Shen Shihui,Guo Yibo,Han Jiaxuan,Sui Meizhi,Zhou Zhuojun,Tao Jiang
Abstract
Abstract
Aim
Age estimation plays a critical role in personal identification, especially when determining compliance with the age of consent for adolescents. The age of consent refers to the minimum age at which an individual is legally considered capable of providing informed consent for sexual activities. The purpose of this study is to determine whether adolescents meet the age of 14 or 18 by using dental development combined with machine learning.
Methods
This study combines dental assessment and machine learning techniques to predict whether adolescents have reached the consent age of 14 or 18. Factors such as the staging of the third molar, the third molar index, and the visibility of the periodontal ligament of the second molar are evaluated.
Results
Differences in performance metrics indicate that the posterior probabilities achieved by machine learning exceed 93% for the age of 14 and slightly lower for the age of 18.
Conclusion
This study provides valuable insights for forensic identification for adolescents in personal identification, emphasizing the potential to improve the accuracy of age determination within this population by combining traditional methods with machine learning. It underscores the importance of protecting and respecting the dignity of all individuals involved.
Funder
the Interdisciplinary Program of Shanghai Jiao Tong University
Innovative research team of high-level local universities in Shanghai
Publisher
Springer Science and Business Media LLC
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