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Published in: European Radiology 5/2019

01-05-2019 | Forensic Medicine

Forensic age estimation for pelvic X-ray images using deep learning

Authors: Yuan Li, Zhizhong Huang, Xiaoai Dong, Weibo Liang, Hui Xue, Lin Zhang, Yi Zhang, Zhenhua Deng

Published in: European Radiology | Issue 5/2019

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Abstract

Purpose

To develop a deep learning bone age assessment model based on pelvic radiographs for forensic age estimation and compare its performance to that of the existing cubic regression model.

Materials and method

A retrospective collection data of 1875 clinical pelvic radiographs between 10 and 25 years of age was obtained to develop the model. Model performance was assessed by comparing the testing results to estimated ages calculated directly using the existing cubic regression model based on ossification staging methods. The mean absolute error (MAE) and root-mean-squared error (RMSE) between the estimated ages and chronological age were calculated for both models.

Results

For all test samples (between 10 and 25 years old), the mean MAE and RMSE between the automatic estimates using the proposed deep learning model and the reference standard were 0.94 and 1.30 years, respectively. For the test samples comparable to those of the existing cubic regression model (between 14 and 22 years old), the mean MAE and RMSE for the deep learning model were 0.89 and 1.21 years, respectively. For the existing cubic regression model, the mean MAE and RMSE were 1.05 and 1.61 years, respectively.

Conclusion

The deep learning convolutional neural network model achieves performance on par with the existing cubic regression model, demonstrating predictive ability capable of automated skeletal bone assessment based on pelvic radiographic images.

Key Points

• The pelvis has considerable value in determining the bone age.
• Deep learning can be used to create an automated bone age assessment model based on pelvic radiographs.
• The deep learning convolutional neural network model achieves performance on par with the existing cubic regression model.
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Metadata
Title
Forensic age estimation for pelvic X-ray images using deep learning
Authors
Yuan Li
Zhizhong Huang
Xiaoai Dong
Weibo Liang
Hui Xue
Lin Zhang
Yi Zhang
Zhenhua Deng
Publication date
01-05-2019
Publisher
Springer Berlin Heidelberg
Published in
European Radiology / Issue 5/2019
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-018-5791-6

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