Literature DB >> 35039894

Forensic bone age estimation of adolescent pelvis X-rays based on two-stage convolutional neural network.

Li-Qin Peng1,2,3, Yu-Cheng Guo4,5, Lei Wan1, Tai-Ang Liu6, Peng Wang6, Hu Zhao7,8, Ya-Hui Wang9.   

Abstract

In the forensic estimation of bone age, the pelvis is important for identifying the bone age of teenagers. However, studies on this topic remain insufficient as a result of lower accuracy due to the overlapping of pelvic organs in X-ray images. Segmentation networks have been used to automate the location of key pelvic areas and minimize restrictions like doubling images of pelvic organs to increase the accuracy of estimation. This study conducted a retrospective analysis of 2164 pelvis X-ray images of Chinese Han teenagers ranging from 11 to 21 years old. Key areas of the pelvis were detected with a U-Net segmentation network, and the findings were combined with the original X-ray image for regional augmentation. Bone age estimation was conducted with the enhanced and not enhanced pelvis X-ray images by separately using three convolutional neural networks (CNNs). The root mean square errors (RMSE) of the Inception-V3, Inception-ResNet-V2, and VGG19 convolutional neural networks were 0.93 years, 1.12 years, and 1.14 years, respectively, and the mean absolute errors (MAE) of these networks were 0.67 years, 0.77 years, and 0.88 years, respectively. For comparison, a network without segmentation was employed to conduct the estimation, and it was found that the RMSE of the three CNNs above became 1.22 years, 1.25 years, and 1.63 years, respectively, and the MAE became 0.93 years, 0.96 years, and 1.23 years. Bland-Altman plots and attention maps were also generated to provide a visual comparison. The proposed segmentation network can be used to reduce the influence of restrictions like image overlapping of organs and can thus increase the accuracy of pelvic bone age estimation.
© 2021. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Keywords:  Adolescent; Bone age estimation; Convolutional neural networks; Deep learning; Image recognition; Pelvis

Mesh:

Year:  2022        PMID: 35039894     DOI: 10.1007/s00414-021-02746-1

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


  15 in total

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Journal:  Clin Cancer Res       Date:  2016-09-23       Impact factor: 12.531

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Authors:  Gabriele Campanella; Matthew G Hanna; Luke Geneslaw; Allen Miraflor; Vitor Werneck Krauss Silva; Klaus J Busam; Edi Brogi; Victor E Reuter; David S Klimstra; Thomas J Fuchs
Journal:  Nat Med       Date:  2019-07-15       Impact factor: 53.440

7.  Accurate age classification using manual method and deep convolutional neural network based on orthopantomogram images.

Authors:  Yu-Cheng Guo; Mengqi Han; Yuting Chi; Hong Long; Dong Zhang; Jing Yang; Yang Yang; Teng Chen; Shaoyi Du
Journal:  Int J Legal Med       Date:  2021-03-04       Impact factor: 2.686

8.  Machine learning techniques for personalized breast cancer risk prediction: comparison with the BCRAT and BOADICEA models.

Authors:  Chang Ming; Valeria Viassolo; Nicole Probst-Hensch; Pierre O Chappuis; Ivo D Dinov; Maria C Katapodi
Journal:  Breast Cancer Res       Date:  2019-06-20       Impact factor: 6.466

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10.  The RSNA Pediatric Bone Age Machine Learning Challenge.

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Journal:  J Pers Med       Date:  2022-05-11
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