A systematic overview of dental methods for age assessment in living individuals: from traditional to artificial intelligence-based approaches

Dental radiographies have been used for many decades for estimating the chronological age, with a view to forensic identification, migration flow control, or assessment of dental development, among others. This study aims to analyse the current application of chronological age estimation methods fro...

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Veröffentlicht in:International journal of legal medicine 2023-07, Vol.137 (4), p.1117-1146
Hauptverfasser: Vila-Blanco, Nicolás, Varas-Quintana, Paulina, Tomás, Inmaculada, Carreira, María J.
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container_start_page 1117
container_title International journal of legal medicine
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creator Vila-Blanco, Nicolás
Varas-Quintana, Paulina
Tomás, Inmaculada
Carreira, María J.
description Dental radiographies have been used for many decades for estimating the chronological age, with a view to forensic identification, migration flow control, or assessment of dental development, among others. This study aims to analyse the current application of chronological age estimation methods from dental X-ray images in the last 6 years, involving a search for works in the Scopus and PubMed databases. Exclusion criteria were applied to discard off-topic studies and experiments which are not compliant with a minimum quality standard. The studies were grouped according to the applied methodology, the estimation target, and the age cohort used to evaluate the estimation performance. A set of performance metrics was used to ensure good comparability between the different proposed methodologies. A total of 613 unique studies were retrieved, of which 286 were selected according to the inclusion criteria. Notable tendencies to overestimation and underestimation were observed in some manual approaches for numeric age estimation, being especially notable in the case of Demirjian (overestimation) and Cameriere (underestimation). On the other hand, the automatic approaches based on deep learning techniques are scarcer, with only 17 studies published in this regard, but they showed a more balanced behaviour, with no tendency to overestimation or underestimation. From the analysis of the results, it can be concluded that traditional methods have been evaluated in a wide variety of population samples, ensuring good applicability in different ethnicities. On the other hand, fully automated methods were a turning point in terms of performance, cost, and adaptability to new populations.
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subjects Age
Age Determination by Teeth - methods
Artificial Intelligence
Bones
Child
Chronology
Criteria
Databases, Factual
Deep learning
Dental materials
Estimation
Ethnicity
Flow control
Forensic Medicine
Humans
Legal medicine
Medical Law
Medicine
Medicine & Public Health
Performance evaluation
Performance measurement
Quality standards
Radiography, Panoramic
Review
Teeth
X-rays
title A systematic overview of dental methods for age assessment in living individuals: from traditional to artificial intelligence-based approaches
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