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  4. Deep Learning Neural Modelling as a Precise Method in the Assessment of the Chronological Age of Children and Adolescents Using Tooth and Bone Parameters
 
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Deep Learning Neural Modelling as a Precise Method in the Assessment of the Chronological Age of Children and Adolescents Using Tooth and Bone Parameters

Type
Journal article
Language
English
Date issued
2022
Author
Zaborowicz, Maciej 
Zaborowicz, Katarzyna
Biedziak, Barbara
Garbowski, Tomasz 
Faculty
Wydział Inżynierii Środowiska i Inżynierii Mechanicznej
Journal
Sensors
ISSN
1424-8220
DOI
10.3390/s22020637
Web address
https://www.mdpi.com/1424-8220/22/2/637
Volume
22
Number
2
Pages from-to
art. 637
Abstract (EN)
Dental age is one of the most reliable methods for determining a patient’s age. The timing of teething, the period of tooth replacement, or the degree of tooth attrition is an important diagnostic factor in the assessment of an individual’s developmental age. It is used in orthodontics, pediatric dentistry, endocrinology, forensic medicine, and pathomorphology, but also in scenarios regarding international adoptions and illegal immigrants. The methods used to date are time-consuming and not very precise. For this reason, artificial intelligence methods are increasingly used to estimate the age of a patient. The present work is a continuation of the work of Zaborowicz et al. In the presented research, a set of 21 original indicators was used to create deep neural network models. The aim of this study was to verify the ability to generate a more accurate deep neural network model compared to models produced previously. The quality parameters of the produced models were as follows. The MAE error of the produced models, depending on the learning set used, was between 2.34 and 4.61 months, while the RMSE error was between 5.58 and 7.49 months. The correlation coefficient R2 ranged from 0.92 to 0.96.
Keywords (EN)
  • chronological age

  • dental age

  • age assessment

  • digital pantomography

  • digital image analysis

  • artificial intelligence

  • deep neural network

License
cc-bycc-by CC-BY - Attribution
Open access date
January 14, 2022
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