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Leverage Effective Deep Learning Searching Method for Forensic Age Estimation.

Zhi-Yong Zhang1,2,3, Chun-Xia Yan2, Qiao-Mei Min3

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Summary
This summary is machine-generated.

This study introduces AGENet and AGE-SPOS, novel deep neural network models for precise dental age estimation using orthopantomograms. These AI approaches significantly improve accuracy, especially for adults, advancing forensic medicine.

Keywords:
Neural Architecture Search (NAS)age estimationdeep neural network (DNN)orthopantomograms (OPGs)

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Area of Science:

  • Forensic Odontology
  • Artificial Intelligence in Medicine
  • Radiology

Background:

  • Conventional dental age estimation methods lack precision, particularly for adults.
  • Orthopantomograms (OPGs) offer rich data for age assessment.
  • Need for accurate and efficient age estimation in forensic contexts.

Purpose of the Study:

  • To develop and validate novel deep learning models for accurate dental age estimation using OPGs.
  • To explore optimal neural network architectures for analyzing dental data.
  • To create both high-performance and lightweight models for forensic applications.

Main Methods:

  • Creation of a large-scale dental dataset (27,957 OPGs) with verified age annotations.
  • Analysis of neural network components: depth, kernel size, multi-branch architecture, and feature reuse.
  • Development and evaluation of two deep neural network models: AGENet (high-performance) and AGE-SPOS (lightweight).

Main Results:

  • AGENet achieved a Mean Absolute Error (MAE) of 1.70 years, outperforming Inception-v4 and reducing computational cost by 2.7x.
  • The lightweight AGE-SPOS model attained an MAE of 1.80 years with significantly fewer computations than MobileNetV2.
  • Both models demonstrated superior effectiveness and accuracy in forensic age estimation tasks.

Conclusions:

  • The proposed deep neural network searching method provides effective forensic age estimation from OPGs.
  • AGENet and AGE-SPOS represent significant advancements in accuracy and computational efficiency for dental age prediction.
  • These findings have substantial implications for improving age estimation techniques in oral and maxillofacial imaging.