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

Standard

Automated segmentation of the knee for age assessment in 3D MR images using convolutional neural networks. / Pröve, Paul-Louis; Jopp-van Well, Eilin; Stanczus, Ben; Morlock, Michael M; Herrmann, Jochen; Groth, Michael; Säring, Dennis; Auf der Mauer, Markus.

In: INT J LEGAL MED, Vol. 133, No. 4, 07.2019, p. 1191-1205.

Research output: SCORING: Contribution to journalSCORING: Journal articleResearchpeer-review

Harvard

APA

Vancouver

Bibtex

@article{8edc2c2bdd6348faa28c9ed13d8b48b7,
title = "Automated segmentation of the knee for age assessment in 3D MR images using convolutional neural networks",
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 = "Journal Article",
author = "Paul-Louis Pr{\"o}ve and {Jopp-van Well}, Eilin and Ben Stanczus and Morlock, {Michael M} and Jochen Herrmann and Michael Groth and Dennis S{\"a}ring and {Auf der Mauer}, Markus",
year = "2019",
month = jul,
doi = "10.1007/s00414-018-1953-y",
language = "English",
volume = "133",
pages = "1191--1205",
journal = "INT J LEGAL MED",
issn = "0937-9827",
publisher = "Springer",
number = "4",

}

RIS

TY - JOUR

T1 - Automated segmentation of the knee for age assessment in 3D MR images using convolutional neural networks

AU - Pröve, Paul-Louis

AU - Jopp-van Well, Eilin

AU - Stanczus, Ben

AU - Morlock, Michael M

AU - Herrmann, Jochen

AU - Groth, Michael

AU - Säring, Dennis

AU - Auf der Mauer, Markus

PY - 2019/7

Y1 - 2019/7

N2 - 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.

AB - 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.

KW - Journal Article

U2 - 10.1007/s00414-018-1953-y

DO - 10.1007/s00414-018-1953-y

M3 - SCORING: Journal article

C2 - 30392059

VL - 133

SP - 1191

EP - 1205

JO - INT J LEGAL MED

JF - INT J LEGAL MED

SN - 0937-9827

IS - 4

ER -