Literature DB >> 30392059

Automated segmentation of the knee for age assessment in 3D MR images using convolutional neural networks.

Paul-Louis Pröve1, Eilin Jopp-van Well2, Ben Stanczus1, Michael M Morlock3, Jochen Herrmann4, Michael Groth4, Dennis Säring1, Markus Auf der Mauer5.   

Abstract

Age assessment is used to estimate the chronological age of an individual who lacks legal documentation. Recent studies indicate that the ossification degree of the growth plates in the knee joint correlates with chronological age of adolescents and young adults. To verify this hypothesis, a high number of datasets need to be analysed. An approach which enables an automated detection and analysis of the bone structures may be necessary to handle large datasets. The purpose of this study was to develop a fully automatic 2D knee segmentation based on 3D MR images using convolutional neural networks. A total of 76 datasets were available and divided into a training set (74%), a validation set (13%) and a test set (13%). Multiple preprocessing steps were applied to correct image intensity values and to reduce the image size. Image augmentation was employed to virtually increase the dataset size for training. The proposed architecture for the segmentation task resembles the encoder-decoder model type used for the U-Net. The trained network achieved a dice similarity coefficient score of 98% compared to the manual segmentations and an intersection over union of 96%. The precision and recall of the model were balanced, and the error was only 1.2%. No overfitting was observed during training. As a proof of concept, the predicted segmentations were used for the age estimation of 145 subjects. Initial results show the potential of this approach attaining a mean absolute error of 0.48 ± 0.32 years for a test set of 14 subjects. The proposed automated segmentation can contribute to faster, reproducible and potentially more reliable age estimation in the future.

Keywords:  Age estimation; Convolutional neural networks; Knee; MRI; Segmentation

Mesh:

Year:  2018        PMID: 30392059     DOI: 10.1007/s00414-018-1953-y

Source DB:  PubMed          Journal:  Int J Legal Med        ISSN: 0937-9827            Impact factor:   2.686


  6 in total

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Authors:  Pauley Chea; Jacob C Mandell
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Authors:  Xiao-Dong Deng; Ting Lu; Guang-Feng Liu; Fei Fan; Zhao Peng; Xiao-Qian Chen; Tian-Wu Chen; Meng-Jun Zhan; Lei Shi; Shuai Luo; Xing-Tao Zhang; Meng Liu; Shi-Wen Qiu; Bin Cong; Zhen-Hua Deng
Journal:  Int J Legal Med       Date:  2022-03-08       Impact factor: 2.686

3.  Can canines alone be used for age estimation in Chinese individuals when applying the Kvaal method?

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Journal:  Forensic Sci Res       Date:  2020-03-18

4.  Age estimation based on 3D post-mortem computed tomography images of mandible and femur using convolutional neural networks.

Authors:  Cuong Van Pham; Su-Jin Lee; So-Yeon Kim; Sookyoung Lee; Soo-Hyung Kim; Hyung-Seok Kim
Journal:  PLoS One       Date:  2021-05-12       Impact factor: 3.240

5.  Automated age estimation of young individuals based on 3D knee MRI using deep learning.

Authors:  Markus Auf der Mauer; Eilin Jopp-van Well; Jochen Herrmann; Michael Groth; Michael M Morlock; Rainer Maas; Dennis Säring
Journal:  Int J Legal Med       Date:  2020-12-17       Impact factor: 2.686

6.  Research on Mental Health Monitoring Scheme of Migrant Children Based on Convolutional Neural Network Based on Deep Learning.

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Journal:  Occup Ther Int       Date:  2022-08-23       Impact factor: 1.565

  6 in total

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